0-rank tensor vs vector in 1D
$begingroup$
What is the difference between zero-rank tensor $x$ (scalar) and vector $[x]$ in 1D?
As far as I understand tensor is anything which can be measured and different measures can be transformed into each other. That is, there are different basises for looking at one object.
Is length a scalar (zero rank tensor)?
I think it is not.
ex.:
- physical parameter: writing pen's length
- tensor: $l$
- length in inches: $[5.511811023622]$
- length in centimeters: $[14]$
- transformation law: 1cm = 2.54inch
so $l$ is a scalar, but on the other hand it's a tensor of rank 1 since "physical parameter of length is invariant, only it's measures (in different units) are".
The same example can be made with classical example of temperature (which is used as a primer of zero rank tensor most in any book) in C and K units. I'm confused.
vectors coordinate-systems tensor-calculus linear-algebra
$endgroup$
add a comment |
$begingroup$
What is the difference between zero-rank tensor $x$ (scalar) and vector $[x]$ in 1D?
As far as I understand tensor is anything which can be measured and different measures can be transformed into each other. That is, there are different basises for looking at one object.
Is length a scalar (zero rank tensor)?
I think it is not.
ex.:
- physical parameter: writing pen's length
- tensor: $l$
- length in inches: $[5.511811023622]$
- length in centimeters: $[14]$
- transformation law: 1cm = 2.54inch
so $l$ is a scalar, but on the other hand it's a tensor of rank 1 since "physical parameter of length is invariant, only it's measures (in different units) are".
The same example can be made with classical example of temperature (which is used as a primer of zero rank tensor most in any book) in C and K units. I'm confused.
vectors coordinate-systems tensor-calculus linear-algebra
$endgroup$
add a comment |
$begingroup$
What is the difference between zero-rank tensor $x$ (scalar) and vector $[x]$ in 1D?
As far as I understand tensor is anything which can be measured and different measures can be transformed into each other. That is, there are different basises for looking at one object.
Is length a scalar (zero rank tensor)?
I think it is not.
ex.:
- physical parameter: writing pen's length
- tensor: $l$
- length in inches: $[5.511811023622]$
- length in centimeters: $[14]$
- transformation law: 1cm = 2.54inch
so $l$ is a scalar, but on the other hand it's a tensor of rank 1 since "physical parameter of length is invariant, only it's measures (in different units) are".
The same example can be made with classical example of temperature (which is used as a primer of zero rank tensor most in any book) in C and K units. I'm confused.
vectors coordinate-systems tensor-calculus linear-algebra
$endgroup$
What is the difference between zero-rank tensor $x$ (scalar) and vector $[x]$ in 1D?
As far as I understand tensor is anything which can be measured and different measures can be transformed into each other. That is, there are different basises for looking at one object.
Is length a scalar (zero rank tensor)?
I think it is not.
ex.:
- physical parameter: writing pen's length
- tensor: $l$
- length in inches: $[5.511811023622]$
- length in centimeters: $[14]$
- transformation law: 1cm = 2.54inch
so $l$ is a scalar, but on the other hand it's a tensor of rank 1 since "physical parameter of length is invariant, only it's measures (in different units) are".
The same example can be made with classical example of temperature (which is used as a primer of zero rank tensor most in any book) in C and K units. I'm confused.
vectors coordinate-systems tensor-calculus linear-algebra
vectors coordinate-systems tensor-calculus linear-algebra
edited 19 mins ago
Qmechanic♦
107k121981229
107k121981229
asked 10 hours ago
coobitcoobit
365110
365110
add a comment |
add a comment |
2 Answers
2
active
oldest
votes
$begingroup$
“Scalar”, “vector”, and “tensor” have no meaning without specifying the group of transformations. In physics we focus on groups such as rotations, Galilean transformations, Lorentz transformations, Poincaire transformations, and gauge transformations because these are symmetries of various physical theories, built in to reflect symmetries of the natural world.
The length of a writing pen is a scalar under rotations and Galilean transformations. This is a significant physical fact about our world.
But the fact that you can measure its length in various units is not significant, because units are inventions of humans, not of Nature. Physicists never say that the length of a writing pen “transforms” because you can choose to measure it in different length units. Different units such as inches and centimeters for a particular physical quantity like length do not have any physical significance at all.
Going back to your original question, the difference between a scalar and a vector under rotations should now be obvious: a scalar is a single number that stays the same under a rotation, while a vector is a directed quantity that requires three numbers to describe it, and under rotations these numbers transform into linear combinations of each other, as specified by the relevant rotation matrix.
Under any other transformation group, the distinction between scalars and vectors is similar.
$endgroup$
$begingroup$
I'm sorry if it might sound dumb, but ... Is 1D vector invariant under rotation? I mean is there rotation in 1D space? If so how it's different from scalar?
$endgroup$
– coobit
8 hours ago
$begingroup$
@coobit Consider the group of reflections along that one dimension. A vector changes sign, but a scalar doesn't.
$endgroup$
– Chiral Anomaly
8 hours ago
$begingroup$
Whoops, I completely overlooked the fact that you were asking about 1D. (Since you had referred to scalars as rank 0, I was thinking "rank 1" , not "1D", when you said "vector".) There are no proper rotations in 1D. As @ChiralAnomaly explains, you can consider 1D reflections, and scalar and vectors transform differently under these, even though both are only a single number.
$endgroup$
– G. Smith
8 hours ago
$begingroup$
@coobit there's a difference in what a mathematician and a physicist mean when they say "vector". A mathematician would just use "vector" to mean "an element of a vector space", where the vector space in question could be anything depending on context. In physics, "vector" almost always means "an element of the tangent space of some manifold", where the manifold in question depends on context (often Euclidean or Minkowski space). See also this question on math stack exchange
$endgroup$
– Carmeister
4 hours ago
add a comment |
$begingroup$
First of all, I'll constrain the discussion assuming:
1) Finite-dimensional vector spaces
2) Real Vector spaces
3) Talking just about contravariant tensors
4) Physics which use the standard notion of Spacetime
$$* * *$$
To answer your question I need to talk a little bit about Tensors.
I) The tensor object and pure mathematics:
The precise answer to the question "What is a tensor?" is, by far:
A tensor is a object of a vector space called Tensor Product.
In order to this general statement become something that have some value to you, I would like you to think a little bit about vectors and their algebra : the linear algebra.
I.1) What truly is a Vector?
First of all, if you look on linear algebra texts, you'll rapidly realize that the answer to the question "What are vectors after all? Matrices? Arrows? Functions?" is:
A vector is a element of a algebraic structure called vector space.
So after the study of the definition of a vector space you can talk with all rigour in the world that a vector isn't a arrow or a matrix, but a element of a vector space.
I.1.1) Some facts about vectors
Consider then a vector formed by a linear combination of basis vectors:
$$mathbf{v} = sum_{j = 1}^{n} v^{j}mathbf{e}_{j} tag{1}$$
This is well-known fact about vectors. So, there's another key point about basis vectors: the vector space is spanned by these basis vectors. You can create a "constrain machinery" to verify if a set of vectors spans a entire vector space (i.e. forms a basis):
A set $mathcal{S}$ is a basis for a vector space $mathfrak{V}$ if:
1) the vectors of the set $mathcal{S}$ are linear independent
2) the vectors of the set $mathcal{S}$ spanned the vector space $mathfrak{V}$, i.e. $mathfrak{V} equiv span(mathcal{S})$
So another point of view to "form" an entire vector space is from basis vectors. The intuitive idea is that, more or less, like if the basis vectors "constructs" (they span) and entire vector space.
Another fact is that you can change the basis $mathbf{e}_{j}$ to another set basis of basis $mathbf{e'}_{j}$. Well, when you do this the vector components suffer a change too. And then the components transforms like:
$$v'^{k} = sum^{n}_{j=1}M^{k}_{j}v^{j}tag{2}$$
but, of course, the vector object, remains the same:
$$mathbf{v} = sum_{j = 1}^{n} v^{j}mathbf{e}_{j} = sum_{j = 1}^{n} v'^{j}mathbf{e'}_{j}$$
So, a vector, truly, is a object of a vector space, which have the form of $(1)$ and their components transforms like $(2)$.
I.1.2) The "physicist way" of definition of a Tensor
When you're searching about tensors on physics/engeneering texts you certainly will encounter the following definition of a tensor:
A Tensor is defined as the kind of object which transforms, under a coordinate transformation, like:
$$T'^{ij} = sum^{n}_{k=1}sum^{n}_{l=1} M^{i}_{k}M^{j}_{l} T^{kl} tag{3}$$
This definition serves to encode the notion that a valid physical law must be independent of coordinate systems (or all that G.Smith said).
Well, there's some interesting happening here. A vector, is a object which have a precise formulation in terms of a algebraic structure, have a precise form (that of $(1)$, which the basis vectors spans the entire $mathfrak{V}$) and their components have "transformation behaviour" like $(2)$. If you compare what I exposed about vector and $(3)$, you may reach the conclusion that, concerning about tensors, some information about their nature is missing.
The fact is, the definition $(3)$ isn't a tensor, but the "transformation behaviour" of the components of a tensor $mathbf{T}$.
I.2) What truly is a Tensor?
Well, you have the transformation of components of a tensor, i.e. $(3)$, well defined. But what about their "space" and "form" (something like $(1)$)?
So, the space is called tensor product of two vector spaces:
$$Votimes W tag{4}$$
The construction of tensor product is something beyond the scope of this answer [*]. But the mathematical considerations about tensor products are that they generalize the concept of products of vectors (remember that, in linear algebra and analytic geometry you're able to "multiply" vector just using the inner product and vector product), they construct a concept of products of vector spaces (remember that a Direct sum of vector space gives you a notion of Sum of vector spaces), and they construct the precise notion of a tensor. Also, by the technology of the construction of the tensor product we can identify (i.e. stablish a isomorphism between vector spaces) the vector space $Votimes W$ and $mathfrak{Lin}^{2}(V^{*} times W^{*}; mathbb{K})$:
$$Votimes W cong mathfrak{Lin}^{2}(V^{*} times W^{*}; mathbb{K}) tag{5}$$
where $mathfrak{Lin}^{2}(V^{*} times W^{*}; mathbb{K})$ is the dual vector space of all bilinear functionals.
So a tensor have the form:
$$mathbf{T} = sum^{n}_{i=1}sum^{n}_{j=1} T^{ij} (mathbf{e}_{i}otimesmathbf{e}_{j}) tag{6}$$
And $mathbf{T} in Votimes W$.
Well, given the transformation rule $(3)$ the space, $(5)$, and form, $(6)$, you can talk precisely about what tensor really is. It's clear that the "object tensor" isn't just a transformation of coordinates. Also, in $(6)$ the tensor basis $(mathbf{e}_{i}otimesmathbf{e}_{j})$ spans $Votimes W$.
By virtue of the general construction of tensor product and the identification given by $(5)$, you'll also encounter the definition of a tensor as a multilinear object which spits scalars:
$$begin{array}{rl}
mathbf{T} :V^{*}times W^{*} &to mathbb{K} \
(mathbf{v},mathbf{w})&mapsto mathbf{T}(mathbf{v},mathbf{w})=: v^{i}cdot_{mathbb{K}}w^{j}
end{array}$$
Where the operation $cdot_{mathbb{K}}$ is the product defined in the field.
With this picture we say that a tensor like $(6)$ is a tensor of rank 2. And a vector a tensor of rank 1. Furthermore a scalar a tensor of rank 0.
II) The tensor object and physics
The well stablish physics, in general, deals with spacetime (like Newtonian physics), and the theory of spacetime is geometry. So, in order to really apply the tensor theory in physics first we have to give the geometry of physics.
The geometry is basically classical Manifold Theory (which, again, is beyond the scope). And by Manifold Theory we can apply tensors on Manifolds introducing the concept of a tangent vector space. In parallel, we can construct another algebraic structure called Fibre Bundle of tangent spaces and then create the precise notion of Vector Field and Tensor Field.
Tensor Fields are the real objects defined in physics books as tensors and we use the word of a tensor and tensor field as synonyms (IN FACT THEY ARE NOT THE SAME CONCEPT!). A tensor field is a section of the tensor bundle and a vector field, a section of vector bundle. But the intuitive definition (by far, general to physics) of a tensor field is then:
$$[mathbf{T}(x^{k})] = sum^{n}_{i=1}sum^{n}_{j=1} [T^{ij}(x^{k})] ([mathbf{e}_{i}(x^{k})]otimes[mathbf{e}_{j}(x^{k})]) tag{5}$$
A tensor field is the object which attaches a tensor to every point p of the Manifold.
With the manifold theory, the transformation rule becomes:
$$[T'^{ij}(x^{m})] = sum^{n}_{k=1}sum^{n}_{l=1} frac{partial x'^{i}}{partial x^{k}}frac{partial x'^{j}}{partial x^{l}} [T^{kl}(x^{m})] equiv T'^{ij} = sum^{n}_{k=1}sum^{n}_{l=1} frac{partial x'^{i}}{partial x^{k}}frac{partial x'^{j}}{partial x^{l}} T^{kl} tag{7}$$
Notice that the partials are simply the transformation matrices $M$. The matrices $M$ are called the Jacobians transformation matrices and the matrices $M$ became these jacobians by virtue of Manifold theory.
In a restric way, these Jacobians are rotations,lorentz transformations,galilean transformation, and so on.
III) What is the difference between zero-rank tensor x (scalar) and 1D vector [x]?
So, in order to talk about lengths we have to realize that we are talking about a scalar field, or a tensor of rank 0. Then the difference between a scalar and a 1D vector (which is a tensor of rank 1) is that one is a scalar field and the other is a vector field. From a "Pure" mathematical point of view, (section I) if this answer) one is a member of the field $mathbb{K}$ and the other is a member of a vector space.
Also, you're quite right, a scalar (or a scalar field) is a rank 0 tensor or "a object which do not have "matrices of change"; an object which do not suffer a change under a transformation of coordinates (we say that a scalar quantity is a invariant quantity).
$$phi'= phi$$
$$* * *$$
[*] ROMAN.S. Advanced Linear Algebra. Springer. chapter 14. 1 ed. 1992.
$endgroup$
add a comment |
Your Answer
StackExchange.ifUsing("editor", function () {
return StackExchange.using("mathjaxEditing", function () {
StackExchange.MarkdownEditor.creationCallbacks.add(function (editor, postfix) {
StackExchange.mathjaxEditing.prepareWmdForMathJax(editor, postfix, [["$", "$"], ["\\(","\\)"]]);
});
});
}, "mathjax-editing");
StackExchange.ready(function() {
var channelOptions = {
tags: "".split(" "),
id: "151"
};
initTagRenderer("".split(" "), "".split(" "), channelOptions);
StackExchange.using("externalEditor", function() {
// Have to fire editor after snippets, if snippets enabled
if (StackExchange.settings.snippets.snippetsEnabled) {
StackExchange.using("snippets", function() {
createEditor();
});
}
else {
createEditor();
}
});
function createEditor() {
StackExchange.prepareEditor({
heartbeatType: 'answer',
autoActivateHeartbeat: false,
convertImagesToLinks: false,
noModals: true,
showLowRepImageUploadWarning: true,
reputationToPostImages: null,
bindNavPrevention: true,
postfix: "",
imageUploader: {
brandingHtml: "Powered by u003ca class="icon-imgur-white" href="https://imgur.com/"u003eu003c/au003e",
contentPolicyHtml: "User contributions licensed under u003ca href="https://creativecommons.org/licenses/by-sa/3.0/"u003ecc by-sa 3.0 with attribution requiredu003c/au003e u003ca href="https://stackoverflow.com/legal/content-policy"u003e(content policy)u003c/au003e",
allowUrls: true
},
noCode: true, onDemand: true,
discardSelector: ".discard-answer"
,immediatelyShowMarkdownHelp:true
});
}
});
Sign up or log in
StackExchange.ready(function () {
StackExchange.helpers.onClickDraftSave('#login-link');
});
Sign up using Google
Sign up using Facebook
Sign up using Email and Password
Post as a guest
Required, but never shown
StackExchange.ready(
function () {
StackExchange.openid.initPostLogin('.new-post-login', 'https%3a%2f%2fphysics.stackexchange.com%2fquestions%2f469598%2f0-rank-tensor-vs-vector-in-1d%23new-answer', 'question_page');
}
);
Post as a guest
Required, but never shown
2 Answers
2
active
oldest
votes
2 Answers
2
active
oldest
votes
active
oldest
votes
active
oldest
votes
$begingroup$
“Scalar”, “vector”, and “tensor” have no meaning without specifying the group of transformations. In physics we focus on groups such as rotations, Galilean transformations, Lorentz transformations, Poincaire transformations, and gauge transformations because these are symmetries of various physical theories, built in to reflect symmetries of the natural world.
The length of a writing pen is a scalar under rotations and Galilean transformations. This is a significant physical fact about our world.
But the fact that you can measure its length in various units is not significant, because units are inventions of humans, not of Nature. Physicists never say that the length of a writing pen “transforms” because you can choose to measure it in different length units. Different units such as inches and centimeters for a particular physical quantity like length do not have any physical significance at all.
Going back to your original question, the difference between a scalar and a vector under rotations should now be obvious: a scalar is a single number that stays the same under a rotation, while a vector is a directed quantity that requires three numbers to describe it, and under rotations these numbers transform into linear combinations of each other, as specified by the relevant rotation matrix.
Under any other transformation group, the distinction between scalars and vectors is similar.
$endgroup$
$begingroup$
I'm sorry if it might sound dumb, but ... Is 1D vector invariant under rotation? I mean is there rotation in 1D space? If so how it's different from scalar?
$endgroup$
– coobit
8 hours ago
$begingroup$
@coobit Consider the group of reflections along that one dimension. A vector changes sign, but a scalar doesn't.
$endgroup$
– Chiral Anomaly
8 hours ago
$begingroup$
Whoops, I completely overlooked the fact that you were asking about 1D. (Since you had referred to scalars as rank 0, I was thinking "rank 1" , not "1D", when you said "vector".) There are no proper rotations in 1D. As @ChiralAnomaly explains, you can consider 1D reflections, and scalar and vectors transform differently under these, even though both are only a single number.
$endgroup$
– G. Smith
8 hours ago
$begingroup$
@coobit there's a difference in what a mathematician and a physicist mean when they say "vector". A mathematician would just use "vector" to mean "an element of a vector space", where the vector space in question could be anything depending on context. In physics, "vector" almost always means "an element of the tangent space of some manifold", where the manifold in question depends on context (often Euclidean or Minkowski space). See also this question on math stack exchange
$endgroup$
– Carmeister
4 hours ago
add a comment |
$begingroup$
“Scalar”, “vector”, and “tensor” have no meaning without specifying the group of transformations. In physics we focus on groups such as rotations, Galilean transformations, Lorentz transformations, Poincaire transformations, and gauge transformations because these are symmetries of various physical theories, built in to reflect symmetries of the natural world.
The length of a writing pen is a scalar under rotations and Galilean transformations. This is a significant physical fact about our world.
But the fact that you can measure its length in various units is not significant, because units are inventions of humans, not of Nature. Physicists never say that the length of a writing pen “transforms” because you can choose to measure it in different length units. Different units such as inches and centimeters for a particular physical quantity like length do not have any physical significance at all.
Going back to your original question, the difference between a scalar and a vector under rotations should now be obvious: a scalar is a single number that stays the same under a rotation, while a vector is a directed quantity that requires three numbers to describe it, and under rotations these numbers transform into linear combinations of each other, as specified by the relevant rotation matrix.
Under any other transformation group, the distinction between scalars and vectors is similar.
$endgroup$
$begingroup$
I'm sorry if it might sound dumb, but ... Is 1D vector invariant under rotation? I mean is there rotation in 1D space? If so how it's different from scalar?
$endgroup$
– coobit
8 hours ago
$begingroup$
@coobit Consider the group of reflections along that one dimension. A vector changes sign, but a scalar doesn't.
$endgroup$
– Chiral Anomaly
8 hours ago
$begingroup$
Whoops, I completely overlooked the fact that you were asking about 1D. (Since you had referred to scalars as rank 0, I was thinking "rank 1" , not "1D", when you said "vector".) There are no proper rotations in 1D. As @ChiralAnomaly explains, you can consider 1D reflections, and scalar and vectors transform differently under these, even though both are only a single number.
$endgroup$
– G. Smith
8 hours ago
$begingroup$
@coobit there's a difference in what a mathematician and a physicist mean when they say "vector". A mathematician would just use "vector" to mean "an element of a vector space", where the vector space in question could be anything depending on context. In physics, "vector" almost always means "an element of the tangent space of some manifold", where the manifold in question depends on context (often Euclidean or Minkowski space). See also this question on math stack exchange
$endgroup$
– Carmeister
4 hours ago
add a comment |
$begingroup$
“Scalar”, “vector”, and “tensor” have no meaning without specifying the group of transformations. In physics we focus on groups such as rotations, Galilean transformations, Lorentz transformations, Poincaire transformations, and gauge transformations because these are symmetries of various physical theories, built in to reflect symmetries of the natural world.
The length of a writing pen is a scalar under rotations and Galilean transformations. This is a significant physical fact about our world.
But the fact that you can measure its length in various units is not significant, because units are inventions of humans, not of Nature. Physicists never say that the length of a writing pen “transforms” because you can choose to measure it in different length units. Different units such as inches and centimeters for a particular physical quantity like length do not have any physical significance at all.
Going back to your original question, the difference between a scalar and a vector under rotations should now be obvious: a scalar is a single number that stays the same under a rotation, while a vector is a directed quantity that requires three numbers to describe it, and under rotations these numbers transform into linear combinations of each other, as specified by the relevant rotation matrix.
Under any other transformation group, the distinction between scalars and vectors is similar.
$endgroup$
“Scalar”, “vector”, and “tensor” have no meaning without specifying the group of transformations. In physics we focus on groups such as rotations, Galilean transformations, Lorentz transformations, Poincaire transformations, and gauge transformations because these are symmetries of various physical theories, built in to reflect symmetries of the natural world.
The length of a writing pen is a scalar under rotations and Galilean transformations. This is a significant physical fact about our world.
But the fact that you can measure its length in various units is not significant, because units are inventions of humans, not of Nature. Physicists never say that the length of a writing pen “transforms” because you can choose to measure it in different length units. Different units such as inches and centimeters for a particular physical quantity like length do not have any physical significance at all.
Going back to your original question, the difference between a scalar and a vector under rotations should now be obvious: a scalar is a single number that stays the same under a rotation, while a vector is a directed quantity that requires three numbers to describe it, and under rotations these numbers transform into linear combinations of each other, as specified by the relevant rotation matrix.
Under any other transformation group, the distinction between scalars and vectors is similar.
edited 9 hours ago
answered 9 hours ago
G. SmithG. Smith
10.2k11429
10.2k11429
$begingroup$
I'm sorry if it might sound dumb, but ... Is 1D vector invariant under rotation? I mean is there rotation in 1D space? If so how it's different from scalar?
$endgroup$
– coobit
8 hours ago
$begingroup$
@coobit Consider the group of reflections along that one dimension. A vector changes sign, but a scalar doesn't.
$endgroup$
– Chiral Anomaly
8 hours ago
$begingroup$
Whoops, I completely overlooked the fact that you were asking about 1D. (Since you had referred to scalars as rank 0, I was thinking "rank 1" , not "1D", when you said "vector".) There are no proper rotations in 1D. As @ChiralAnomaly explains, you can consider 1D reflections, and scalar and vectors transform differently under these, even though both are only a single number.
$endgroup$
– G. Smith
8 hours ago
$begingroup$
@coobit there's a difference in what a mathematician and a physicist mean when they say "vector". A mathematician would just use "vector" to mean "an element of a vector space", where the vector space in question could be anything depending on context. In physics, "vector" almost always means "an element of the tangent space of some manifold", where the manifold in question depends on context (often Euclidean or Minkowski space). See also this question on math stack exchange
$endgroup$
– Carmeister
4 hours ago
add a comment |
$begingroup$
I'm sorry if it might sound dumb, but ... Is 1D vector invariant under rotation? I mean is there rotation in 1D space? If so how it's different from scalar?
$endgroup$
– coobit
8 hours ago
$begingroup$
@coobit Consider the group of reflections along that one dimension. A vector changes sign, but a scalar doesn't.
$endgroup$
– Chiral Anomaly
8 hours ago
$begingroup$
Whoops, I completely overlooked the fact that you were asking about 1D. (Since you had referred to scalars as rank 0, I was thinking "rank 1" , not "1D", when you said "vector".) There are no proper rotations in 1D. As @ChiralAnomaly explains, you can consider 1D reflections, and scalar and vectors transform differently under these, even though both are only a single number.
$endgroup$
– G. Smith
8 hours ago
$begingroup$
@coobit there's a difference in what a mathematician and a physicist mean when they say "vector". A mathematician would just use "vector" to mean "an element of a vector space", where the vector space in question could be anything depending on context. In physics, "vector" almost always means "an element of the tangent space of some manifold", where the manifold in question depends on context (often Euclidean or Minkowski space). See also this question on math stack exchange
$endgroup$
– Carmeister
4 hours ago
$begingroup$
I'm sorry if it might sound dumb, but ... Is 1D vector invariant under rotation? I mean is there rotation in 1D space? If so how it's different from scalar?
$endgroup$
– coobit
8 hours ago
$begingroup$
I'm sorry if it might sound dumb, but ... Is 1D vector invariant under rotation? I mean is there rotation in 1D space? If so how it's different from scalar?
$endgroup$
– coobit
8 hours ago
$begingroup$
@coobit Consider the group of reflections along that one dimension. A vector changes sign, but a scalar doesn't.
$endgroup$
– Chiral Anomaly
8 hours ago
$begingroup$
@coobit Consider the group of reflections along that one dimension. A vector changes sign, but a scalar doesn't.
$endgroup$
– Chiral Anomaly
8 hours ago
$begingroup$
Whoops, I completely overlooked the fact that you were asking about 1D. (Since you had referred to scalars as rank 0, I was thinking "rank 1" , not "1D", when you said "vector".) There are no proper rotations in 1D. As @ChiralAnomaly explains, you can consider 1D reflections, and scalar and vectors transform differently under these, even though both are only a single number.
$endgroup$
– G. Smith
8 hours ago
$begingroup$
Whoops, I completely overlooked the fact that you were asking about 1D. (Since you had referred to scalars as rank 0, I was thinking "rank 1" , not "1D", when you said "vector".) There are no proper rotations in 1D. As @ChiralAnomaly explains, you can consider 1D reflections, and scalar and vectors transform differently under these, even though both are only a single number.
$endgroup$
– G. Smith
8 hours ago
$begingroup$
@coobit there's a difference in what a mathematician and a physicist mean when they say "vector". A mathematician would just use "vector" to mean "an element of a vector space", where the vector space in question could be anything depending on context. In physics, "vector" almost always means "an element of the tangent space of some manifold", where the manifold in question depends on context (often Euclidean or Minkowski space). See also this question on math stack exchange
$endgroup$
– Carmeister
4 hours ago
$begingroup$
@coobit there's a difference in what a mathematician and a physicist mean when they say "vector". A mathematician would just use "vector" to mean "an element of a vector space", where the vector space in question could be anything depending on context. In physics, "vector" almost always means "an element of the tangent space of some manifold", where the manifold in question depends on context (often Euclidean or Minkowski space). See also this question on math stack exchange
$endgroup$
– Carmeister
4 hours ago
add a comment |
$begingroup$
First of all, I'll constrain the discussion assuming:
1) Finite-dimensional vector spaces
2) Real Vector spaces
3) Talking just about contravariant tensors
4) Physics which use the standard notion of Spacetime
$$* * *$$
To answer your question I need to talk a little bit about Tensors.
I) The tensor object and pure mathematics:
The precise answer to the question "What is a tensor?" is, by far:
A tensor is a object of a vector space called Tensor Product.
In order to this general statement become something that have some value to you, I would like you to think a little bit about vectors and their algebra : the linear algebra.
I.1) What truly is a Vector?
First of all, if you look on linear algebra texts, you'll rapidly realize that the answer to the question "What are vectors after all? Matrices? Arrows? Functions?" is:
A vector is a element of a algebraic structure called vector space.
So after the study of the definition of a vector space you can talk with all rigour in the world that a vector isn't a arrow or a matrix, but a element of a vector space.
I.1.1) Some facts about vectors
Consider then a vector formed by a linear combination of basis vectors:
$$mathbf{v} = sum_{j = 1}^{n} v^{j}mathbf{e}_{j} tag{1}$$
This is well-known fact about vectors. So, there's another key point about basis vectors: the vector space is spanned by these basis vectors. You can create a "constrain machinery" to verify if a set of vectors spans a entire vector space (i.e. forms a basis):
A set $mathcal{S}$ is a basis for a vector space $mathfrak{V}$ if:
1) the vectors of the set $mathcal{S}$ are linear independent
2) the vectors of the set $mathcal{S}$ spanned the vector space $mathfrak{V}$, i.e. $mathfrak{V} equiv span(mathcal{S})$
So another point of view to "form" an entire vector space is from basis vectors. The intuitive idea is that, more or less, like if the basis vectors "constructs" (they span) and entire vector space.
Another fact is that you can change the basis $mathbf{e}_{j}$ to another set basis of basis $mathbf{e'}_{j}$. Well, when you do this the vector components suffer a change too. And then the components transforms like:
$$v'^{k} = sum^{n}_{j=1}M^{k}_{j}v^{j}tag{2}$$
but, of course, the vector object, remains the same:
$$mathbf{v} = sum_{j = 1}^{n} v^{j}mathbf{e}_{j} = sum_{j = 1}^{n} v'^{j}mathbf{e'}_{j}$$
So, a vector, truly, is a object of a vector space, which have the form of $(1)$ and their components transforms like $(2)$.
I.1.2) The "physicist way" of definition of a Tensor
When you're searching about tensors on physics/engeneering texts you certainly will encounter the following definition of a tensor:
A Tensor is defined as the kind of object which transforms, under a coordinate transformation, like:
$$T'^{ij} = sum^{n}_{k=1}sum^{n}_{l=1} M^{i}_{k}M^{j}_{l} T^{kl} tag{3}$$
This definition serves to encode the notion that a valid physical law must be independent of coordinate systems (or all that G.Smith said).
Well, there's some interesting happening here. A vector, is a object which have a precise formulation in terms of a algebraic structure, have a precise form (that of $(1)$, which the basis vectors spans the entire $mathfrak{V}$) and their components have "transformation behaviour" like $(2)$. If you compare what I exposed about vector and $(3)$, you may reach the conclusion that, concerning about tensors, some information about their nature is missing.
The fact is, the definition $(3)$ isn't a tensor, but the "transformation behaviour" of the components of a tensor $mathbf{T}$.
I.2) What truly is a Tensor?
Well, you have the transformation of components of a tensor, i.e. $(3)$, well defined. But what about their "space" and "form" (something like $(1)$)?
So, the space is called tensor product of two vector spaces:
$$Votimes W tag{4}$$
The construction of tensor product is something beyond the scope of this answer [*]. But the mathematical considerations about tensor products are that they generalize the concept of products of vectors (remember that, in linear algebra and analytic geometry you're able to "multiply" vector just using the inner product and vector product), they construct a concept of products of vector spaces (remember that a Direct sum of vector space gives you a notion of Sum of vector spaces), and they construct the precise notion of a tensor. Also, by the technology of the construction of the tensor product we can identify (i.e. stablish a isomorphism between vector spaces) the vector space $Votimes W$ and $mathfrak{Lin}^{2}(V^{*} times W^{*}; mathbb{K})$:
$$Votimes W cong mathfrak{Lin}^{2}(V^{*} times W^{*}; mathbb{K}) tag{5}$$
where $mathfrak{Lin}^{2}(V^{*} times W^{*}; mathbb{K})$ is the dual vector space of all bilinear functionals.
So a tensor have the form:
$$mathbf{T} = sum^{n}_{i=1}sum^{n}_{j=1} T^{ij} (mathbf{e}_{i}otimesmathbf{e}_{j}) tag{6}$$
And $mathbf{T} in Votimes W$.
Well, given the transformation rule $(3)$ the space, $(5)$, and form, $(6)$, you can talk precisely about what tensor really is. It's clear that the "object tensor" isn't just a transformation of coordinates. Also, in $(6)$ the tensor basis $(mathbf{e}_{i}otimesmathbf{e}_{j})$ spans $Votimes W$.
By virtue of the general construction of tensor product and the identification given by $(5)$, you'll also encounter the definition of a tensor as a multilinear object which spits scalars:
$$begin{array}{rl}
mathbf{T} :V^{*}times W^{*} &to mathbb{K} \
(mathbf{v},mathbf{w})&mapsto mathbf{T}(mathbf{v},mathbf{w})=: v^{i}cdot_{mathbb{K}}w^{j}
end{array}$$
Where the operation $cdot_{mathbb{K}}$ is the product defined in the field.
With this picture we say that a tensor like $(6)$ is a tensor of rank 2. And a vector a tensor of rank 1. Furthermore a scalar a tensor of rank 0.
II) The tensor object and physics
The well stablish physics, in general, deals with spacetime (like Newtonian physics), and the theory of spacetime is geometry. So, in order to really apply the tensor theory in physics first we have to give the geometry of physics.
The geometry is basically classical Manifold Theory (which, again, is beyond the scope). And by Manifold Theory we can apply tensors on Manifolds introducing the concept of a tangent vector space. In parallel, we can construct another algebraic structure called Fibre Bundle of tangent spaces and then create the precise notion of Vector Field and Tensor Field.
Tensor Fields are the real objects defined in physics books as tensors and we use the word of a tensor and tensor field as synonyms (IN FACT THEY ARE NOT THE SAME CONCEPT!). A tensor field is a section of the tensor bundle and a vector field, a section of vector bundle. But the intuitive definition (by far, general to physics) of a tensor field is then:
$$[mathbf{T}(x^{k})] = sum^{n}_{i=1}sum^{n}_{j=1} [T^{ij}(x^{k})] ([mathbf{e}_{i}(x^{k})]otimes[mathbf{e}_{j}(x^{k})]) tag{5}$$
A tensor field is the object which attaches a tensor to every point p of the Manifold.
With the manifold theory, the transformation rule becomes:
$$[T'^{ij}(x^{m})] = sum^{n}_{k=1}sum^{n}_{l=1} frac{partial x'^{i}}{partial x^{k}}frac{partial x'^{j}}{partial x^{l}} [T^{kl}(x^{m})] equiv T'^{ij} = sum^{n}_{k=1}sum^{n}_{l=1} frac{partial x'^{i}}{partial x^{k}}frac{partial x'^{j}}{partial x^{l}} T^{kl} tag{7}$$
Notice that the partials are simply the transformation matrices $M$. The matrices $M$ are called the Jacobians transformation matrices and the matrices $M$ became these jacobians by virtue of Manifold theory.
In a restric way, these Jacobians are rotations,lorentz transformations,galilean transformation, and so on.
III) What is the difference between zero-rank tensor x (scalar) and 1D vector [x]?
So, in order to talk about lengths we have to realize that we are talking about a scalar field, or a tensor of rank 0. Then the difference between a scalar and a 1D vector (which is a tensor of rank 1) is that one is a scalar field and the other is a vector field. From a "Pure" mathematical point of view, (section I) if this answer) one is a member of the field $mathbb{K}$ and the other is a member of a vector space.
Also, you're quite right, a scalar (or a scalar field) is a rank 0 tensor or "a object which do not have "matrices of change"; an object which do not suffer a change under a transformation of coordinates (we say that a scalar quantity is a invariant quantity).
$$phi'= phi$$
$$* * *$$
[*] ROMAN.S. Advanced Linear Algebra. Springer. chapter 14. 1 ed. 1992.
$endgroup$
add a comment |
$begingroup$
First of all, I'll constrain the discussion assuming:
1) Finite-dimensional vector spaces
2) Real Vector spaces
3) Talking just about contravariant tensors
4) Physics which use the standard notion of Spacetime
$$* * *$$
To answer your question I need to talk a little bit about Tensors.
I) The tensor object and pure mathematics:
The precise answer to the question "What is a tensor?" is, by far:
A tensor is a object of a vector space called Tensor Product.
In order to this general statement become something that have some value to you, I would like you to think a little bit about vectors and their algebra : the linear algebra.
I.1) What truly is a Vector?
First of all, if you look on linear algebra texts, you'll rapidly realize that the answer to the question "What are vectors after all? Matrices? Arrows? Functions?" is:
A vector is a element of a algebraic structure called vector space.
So after the study of the definition of a vector space you can talk with all rigour in the world that a vector isn't a arrow or a matrix, but a element of a vector space.
I.1.1) Some facts about vectors
Consider then a vector formed by a linear combination of basis vectors:
$$mathbf{v} = sum_{j = 1}^{n} v^{j}mathbf{e}_{j} tag{1}$$
This is well-known fact about vectors. So, there's another key point about basis vectors: the vector space is spanned by these basis vectors. You can create a "constrain machinery" to verify if a set of vectors spans a entire vector space (i.e. forms a basis):
A set $mathcal{S}$ is a basis for a vector space $mathfrak{V}$ if:
1) the vectors of the set $mathcal{S}$ are linear independent
2) the vectors of the set $mathcal{S}$ spanned the vector space $mathfrak{V}$, i.e. $mathfrak{V} equiv span(mathcal{S})$
So another point of view to "form" an entire vector space is from basis vectors. The intuitive idea is that, more or less, like if the basis vectors "constructs" (they span) and entire vector space.
Another fact is that you can change the basis $mathbf{e}_{j}$ to another set basis of basis $mathbf{e'}_{j}$. Well, when you do this the vector components suffer a change too. And then the components transforms like:
$$v'^{k} = sum^{n}_{j=1}M^{k}_{j}v^{j}tag{2}$$
but, of course, the vector object, remains the same:
$$mathbf{v} = sum_{j = 1}^{n} v^{j}mathbf{e}_{j} = sum_{j = 1}^{n} v'^{j}mathbf{e'}_{j}$$
So, a vector, truly, is a object of a vector space, which have the form of $(1)$ and their components transforms like $(2)$.
I.1.2) The "physicist way" of definition of a Tensor
When you're searching about tensors on physics/engeneering texts you certainly will encounter the following definition of a tensor:
A Tensor is defined as the kind of object which transforms, under a coordinate transformation, like:
$$T'^{ij} = sum^{n}_{k=1}sum^{n}_{l=1} M^{i}_{k}M^{j}_{l} T^{kl} tag{3}$$
This definition serves to encode the notion that a valid physical law must be independent of coordinate systems (or all that G.Smith said).
Well, there's some interesting happening here. A vector, is a object which have a precise formulation in terms of a algebraic structure, have a precise form (that of $(1)$, which the basis vectors spans the entire $mathfrak{V}$) and their components have "transformation behaviour" like $(2)$. If you compare what I exposed about vector and $(3)$, you may reach the conclusion that, concerning about tensors, some information about their nature is missing.
The fact is, the definition $(3)$ isn't a tensor, but the "transformation behaviour" of the components of a tensor $mathbf{T}$.
I.2) What truly is a Tensor?
Well, you have the transformation of components of a tensor, i.e. $(3)$, well defined. But what about their "space" and "form" (something like $(1)$)?
So, the space is called tensor product of two vector spaces:
$$Votimes W tag{4}$$
The construction of tensor product is something beyond the scope of this answer [*]. But the mathematical considerations about tensor products are that they generalize the concept of products of vectors (remember that, in linear algebra and analytic geometry you're able to "multiply" vector just using the inner product and vector product), they construct a concept of products of vector spaces (remember that a Direct sum of vector space gives you a notion of Sum of vector spaces), and they construct the precise notion of a tensor. Also, by the technology of the construction of the tensor product we can identify (i.e. stablish a isomorphism between vector spaces) the vector space $Votimes W$ and $mathfrak{Lin}^{2}(V^{*} times W^{*}; mathbb{K})$:
$$Votimes W cong mathfrak{Lin}^{2}(V^{*} times W^{*}; mathbb{K}) tag{5}$$
where $mathfrak{Lin}^{2}(V^{*} times W^{*}; mathbb{K})$ is the dual vector space of all bilinear functionals.
So a tensor have the form:
$$mathbf{T} = sum^{n}_{i=1}sum^{n}_{j=1} T^{ij} (mathbf{e}_{i}otimesmathbf{e}_{j}) tag{6}$$
And $mathbf{T} in Votimes W$.
Well, given the transformation rule $(3)$ the space, $(5)$, and form, $(6)$, you can talk precisely about what tensor really is. It's clear that the "object tensor" isn't just a transformation of coordinates. Also, in $(6)$ the tensor basis $(mathbf{e}_{i}otimesmathbf{e}_{j})$ spans $Votimes W$.
By virtue of the general construction of tensor product and the identification given by $(5)$, you'll also encounter the definition of a tensor as a multilinear object which spits scalars:
$$begin{array}{rl}
mathbf{T} :V^{*}times W^{*} &to mathbb{K} \
(mathbf{v},mathbf{w})&mapsto mathbf{T}(mathbf{v},mathbf{w})=: v^{i}cdot_{mathbb{K}}w^{j}
end{array}$$
Where the operation $cdot_{mathbb{K}}$ is the product defined in the field.
With this picture we say that a tensor like $(6)$ is a tensor of rank 2. And a vector a tensor of rank 1. Furthermore a scalar a tensor of rank 0.
II) The tensor object and physics
The well stablish physics, in general, deals with spacetime (like Newtonian physics), and the theory of spacetime is geometry. So, in order to really apply the tensor theory in physics first we have to give the geometry of physics.
The geometry is basically classical Manifold Theory (which, again, is beyond the scope). And by Manifold Theory we can apply tensors on Manifolds introducing the concept of a tangent vector space. In parallel, we can construct another algebraic structure called Fibre Bundle of tangent spaces and then create the precise notion of Vector Field and Tensor Field.
Tensor Fields are the real objects defined in physics books as tensors and we use the word of a tensor and tensor field as synonyms (IN FACT THEY ARE NOT THE SAME CONCEPT!). A tensor field is a section of the tensor bundle and a vector field, a section of vector bundle. But the intuitive definition (by far, general to physics) of a tensor field is then:
$$[mathbf{T}(x^{k})] = sum^{n}_{i=1}sum^{n}_{j=1} [T^{ij}(x^{k})] ([mathbf{e}_{i}(x^{k})]otimes[mathbf{e}_{j}(x^{k})]) tag{5}$$
A tensor field is the object which attaches a tensor to every point p of the Manifold.
With the manifold theory, the transformation rule becomes:
$$[T'^{ij}(x^{m})] = sum^{n}_{k=1}sum^{n}_{l=1} frac{partial x'^{i}}{partial x^{k}}frac{partial x'^{j}}{partial x^{l}} [T^{kl}(x^{m})] equiv T'^{ij} = sum^{n}_{k=1}sum^{n}_{l=1} frac{partial x'^{i}}{partial x^{k}}frac{partial x'^{j}}{partial x^{l}} T^{kl} tag{7}$$
Notice that the partials are simply the transformation matrices $M$. The matrices $M$ are called the Jacobians transformation matrices and the matrices $M$ became these jacobians by virtue of Manifold theory.
In a restric way, these Jacobians are rotations,lorentz transformations,galilean transformation, and so on.
III) What is the difference between zero-rank tensor x (scalar) and 1D vector [x]?
So, in order to talk about lengths we have to realize that we are talking about a scalar field, or a tensor of rank 0. Then the difference between a scalar and a 1D vector (which is a tensor of rank 1) is that one is a scalar field and the other is a vector field. From a "Pure" mathematical point of view, (section I) if this answer) one is a member of the field $mathbb{K}$ and the other is a member of a vector space.
Also, you're quite right, a scalar (or a scalar field) is a rank 0 tensor or "a object which do not have "matrices of change"; an object which do not suffer a change under a transformation of coordinates (we say that a scalar quantity is a invariant quantity).
$$phi'= phi$$
$$* * *$$
[*] ROMAN.S. Advanced Linear Algebra. Springer. chapter 14. 1 ed. 1992.
$endgroup$
add a comment |
$begingroup$
First of all, I'll constrain the discussion assuming:
1) Finite-dimensional vector spaces
2) Real Vector spaces
3) Talking just about contravariant tensors
4) Physics which use the standard notion of Spacetime
$$* * *$$
To answer your question I need to talk a little bit about Tensors.
I) The tensor object and pure mathematics:
The precise answer to the question "What is a tensor?" is, by far:
A tensor is a object of a vector space called Tensor Product.
In order to this general statement become something that have some value to you, I would like you to think a little bit about vectors and their algebra : the linear algebra.
I.1) What truly is a Vector?
First of all, if you look on linear algebra texts, you'll rapidly realize that the answer to the question "What are vectors after all? Matrices? Arrows? Functions?" is:
A vector is a element of a algebraic structure called vector space.
So after the study of the definition of a vector space you can talk with all rigour in the world that a vector isn't a arrow or a matrix, but a element of a vector space.
I.1.1) Some facts about vectors
Consider then a vector formed by a linear combination of basis vectors:
$$mathbf{v} = sum_{j = 1}^{n} v^{j}mathbf{e}_{j} tag{1}$$
This is well-known fact about vectors. So, there's another key point about basis vectors: the vector space is spanned by these basis vectors. You can create a "constrain machinery" to verify if a set of vectors spans a entire vector space (i.e. forms a basis):
A set $mathcal{S}$ is a basis for a vector space $mathfrak{V}$ if:
1) the vectors of the set $mathcal{S}$ are linear independent
2) the vectors of the set $mathcal{S}$ spanned the vector space $mathfrak{V}$, i.e. $mathfrak{V} equiv span(mathcal{S})$
So another point of view to "form" an entire vector space is from basis vectors. The intuitive idea is that, more or less, like if the basis vectors "constructs" (they span) and entire vector space.
Another fact is that you can change the basis $mathbf{e}_{j}$ to another set basis of basis $mathbf{e'}_{j}$. Well, when you do this the vector components suffer a change too. And then the components transforms like:
$$v'^{k} = sum^{n}_{j=1}M^{k}_{j}v^{j}tag{2}$$
but, of course, the vector object, remains the same:
$$mathbf{v} = sum_{j = 1}^{n} v^{j}mathbf{e}_{j} = sum_{j = 1}^{n} v'^{j}mathbf{e'}_{j}$$
So, a vector, truly, is a object of a vector space, which have the form of $(1)$ and their components transforms like $(2)$.
I.1.2) The "physicist way" of definition of a Tensor
When you're searching about tensors on physics/engeneering texts you certainly will encounter the following definition of a tensor:
A Tensor is defined as the kind of object which transforms, under a coordinate transformation, like:
$$T'^{ij} = sum^{n}_{k=1}sum^{n}_{l=1} M^{i}_{k}M^{j}_{l} T^{kl} tag{3}$$
This definition serves to encode the notion that a valid physical law must be independent of coordinate systems (or all that G.Smith said).
Well, there's some interesting happening here. A vector, is a object which have a precise formulation in terms of a algebraic structure, have a precise form (that of $(1)$, which the basis vectors spans the entire $mathfrak{V}$) and their components have "transformation behaviour" like $(2)$. If you compare what I exposed about vector and $(3)$, you may reach the conclusion that, concerning about tensors, some information about their nature is missing.
The fact is, the definition $(3)$ isn't a tensor, but the "transformation behaviour" of the components of a tensor $mathbf{T}$.
I.2) What truly is a Tensor?
Well, you have the transformation of components of a tensor, i.e. $(3)$, well defined. But what about their "space" and "form" (something like $(1)$)?
So, the space is called tensor product of two vector spaces:
$$Votimes W tag{4}$$
The construction of tensor product is something beyond the scope of this answer [*]. But the mathematical considerations about tensor products are that they generalize the concept of products of vectors (remember that, in linear algebra and analytic geometry you're able to "multiply" vector just using the inner product and vector product), they construct a concept of products of vector spaces (remember that a Direct sum of vector space gives you a notion of Sum of vector spaces), and they construct the precise notion of a tensor. Also, by the technology of the construction of the tensor product we can identify (i.e. stablish a isomorphism between vector spaces) the vector space $Votimes W$ and $mathfrak{Lin}^{2}(V^{*} times W^{*}; mathbb{K})$:
$$Votimes W cong mathfrak{Lin}^{2}(V^{*} times W^{*}; mathbb{K}) tag{5}$$
where $mathfrak{Lin}^{2}(V^{*} times W^{*}; mathbb{K})$ is the dual vector space of all bilinear functionals.
So a tensor have the form:
$$mathbf{T} = sum^{n}_{i=1}sum^{n}_{j=1} T^{ij} (mathbf{e}_{i}otimesmathbf{e}_{j}) tag{6}$$
And $mathbf{T} in Votimes W$.
Well, given the transformation rule $(3)$ the space, $(5)$, and form, $(6)$, you can talk precisely about what tensor really is. It's clear that the "object tensor" isn't just a transformation of coordinates. Also, in $(6)$ the tensor basis $(mathbf{e}_{i}otimesmathbf{e}_{j})$ spans $Votimes W$.
By virtue of the general construction of tensor product and the identification given by $(5)$, you'll also encounter the definition of a tensor as a multilinear object which spits scalars:
$$begin{array}{rl}
mathbf{T} :V^{*}times W^{*} &to mathbb{K} \
(mathbf{v},mathbf{w})&mapsto mathbf{T}(mathbf{v},mathbf{w})=: v^{i}cdot_{mathbb{K}}w^{j}
end{array}$$
Where the operation $cdot_{mathbb{K}}$ is the product defined in the field.
With this picture we say that a tensor like $(6)$ is a tensor of rank 2. And a vector a tensor of rank 1. Furthermore a scalar a tensor of rank 0.
II) The tensor object and physics
The well stablish physics, in general, deals with spacetime (like Newtonian physics), and the theory of spacetime is geometry. So, in order to really apply the tensor theory in physics first we have to give the geometry of physics.
The geometry is basically classical Manifold Theory (which, again, is beyond the scope). And by Manifold Theory we can apply tensors on Manifolds introducing the concept of a tangent vector space. In parallel, we can construct another algebraic structure called Fibre Bundle of tangent spaces and then create the precise notion of Vector Field and Tensor Field.
Tensor Fields are the real objects defined in physics books as tensors and we use the word of a tensor and tensor field as synonyms (IN FACT THEY ARE NOT THE SAME CONCEPT!). A tensor field is a section of the tensor bundle and a vector field, a section of vector bundle. But the intuitive definition (by far, general to physics) of a tensor field is then:
$$[mathbf{T}(x^{k})] = sum^{n}_{i=1}sum^{n}_{j=1} [T^{ij}(x^{k})] ([mathbf{e}_{i}(x^{k})]otimes[mathbf{e}_{j}(x^{k})]) tag{5}$$
A tensor field is the object which attaches a tensor to every point p of the Manifold.
With the manifold theory, the transformation rule becomes:
$$[T'^{ij}(x^{m})] = sum^{n}_{k=1}sum^{n}_{l=1} frac{partial x'^{i}}{partial x^{k}}frac{partial x'^{j}}{partial x^{l}} [T^{kl}(x^{m})] equiv T'^{ij} = sum^{n}_{k=1}sum^{n}_{l=1} frac{partial x'^{i}}{partial x^{k}}frac{partial x'^{j}}{partial x^{l}} T^{kl} tag{7}$$
Notice that the partials are simply the transformation matrices $M$. The matrices $M$ are called the Jacobians transformation matrices and the matrices $M$ became these jacobians by virtue of Manifold theory.
In a restric way, these Jacobians are rotations,lorentz transformations,galilean transformation, and so on.
III) What is the difference between zero-rank tensor x (scalar) and 1D vector [x]?
So, in order to talk about lengths we have to realize that we are talking about a scalar field, or a tensor of rank 0. Then the difference between a scalar and a 1D vector (which is a tensor of rank 1) is that one is a scalar field and the other is a vector field. From a "Pure" mathematical point of view, (section I) if this answer) one is a member of the field $mathbb{K}$ and the other is a member of a vector space.
Also, you're quite right, a scalar (or a scalar field) is a rank 0 tensor or "a object which do not have "matrices of change"; an object which do not suffer a change under a transformation of coordinates (we say that a scalar quantity is a invariant quantity).
$$phi'= phi$$
$$* * *$$
[*] ROMAN.S. Advanced Linear Algebra. Springer. chapter 14. 1 ed. 1992.
$endgroup$
First of all, I'll constrain the discussion assuming:
1) Finite-dimensional vector spaces
2) Real Vector spaces
3) Talking just about contravariant tensors
4) Physics which use the standard notion of Spacetime
$$* * *$$
To answer your question I need to talk a little bit about Tensors.
I) The tensor object and pure mathematics:
The precise answer to the question "What is a tensor?" is, by far:
A tensor is a object of a vector space called Tensor Product.
In order to this general statement become something that have some value to you, I would like you to think a little bit about vectors and their algebra : the linear algebra.
I.1) What truly is a Vector?
First of all, if you look on linear algebra texts, you'll rapidly realize that the answer to the question "What are vectors after all? Matrices? Arrows? Functions?" is:
A vector is a element of a algebraic structure called vector space.
So after the study of the definition of a vector space you can talk with all rigour in the world that a vector isn't a arrow or a matrix, but a element of a vector space.
I.1.1) Some facts about vectors
Consider then a vector formed by a linear combination of basis vectors:
$$mathbf{v} = sum_{j = 1}^{n} v^{j}mathbf{e}_{j} tag{1}$$
This is well-known fact about vectors. So, there's another key point about basis vectors: the vector space is spanned by these basis vectors. You can create a "constrain machinery" to verify if a set of vectors spans a entire vector space (i.e. forms a basis):
A set $mathcal{S}$ is a basis for a vector space $mathfrak{V}$ if:
1) the vectors of the set $mathcal{S}$ are linear independent
2) the vectors of the set $mathcal{S}$ spanned the vector space $mathfrak{V}$, i.e. $mathfrak{V} equiv span(mathcal{S})$
So another point of view to "form" an entire vector space is from basis vectors. The intuitive idea is that, more or less, like if the basis vectors "constructs" (they span) and entire vector space.
Another fact is that you can change the basis $mathbf{e}_{j}$ to another set basis of basis $mathbf{e'}_{j}$. Well, when you do this the vector components suffer a change too. And then the components transforms like:
$$v'^{k} = sum^{n}_{j=1}M^{k}_{j}v^{j}tag{2}$$
but, of course, the vector object, remains the same:
$$mathbf{v} = sum_{j = 1}^{n} v^{j}mathbf{e}_{j} = sum_{j = 1}^{n} v'^{j}mathbf{e'}_{j}$$
So, a vector, truly, is a object of a vector space, which have the form of $(1)$ and their components transforms like $(2)$.
I.1.2) The "physicist way" of definition of a Tensor
When you're searching about tensors on physics/engeneering texts you certainly will encounter the following definition of a tensor:
A Tensor is defined as the kind of object which transforms, under a coordinate transformation, like:
$$T'^{ij} = sum^{n}_{k=1}sum^{n}_{l=1} M^{i}_{k}M^{j}_{l} T^{kl} tag{3}$$
This definition serves to encode the notion that a valid physical law must be independent of coordinate systems (or all that G.Smith said).
Well, there's some interesting happening here. A vector, is a object which have a precise formulation in terms of a algebraic structure, have a precise form (that of $(1)$, which the basis vectors spans the entire $mathfrak{V}$) and their components have "transformation behaviour" like $(2)$. If you compare what I exposed about vector and $(3)$, you may reach the conclusion that, concerning about tensors, some information about their nature is missing.
The fact is, the definition $(3)$ isn't a tensor, but the "transformation behaviour" of the components of a tensor $mathbf{T}$.
I.2) What truly is a Tensor?
Well, you have the transformation of components of a tensor, i.e. $(3)$, well defined. But what about their "space" and "form" (something like $(1)$)?
So, the space is called tensor product of two vector spaces:
$$Votimes W tag{4}$$
The construction of tensor product is something beyond the scope of this answer [*]. But the mathematical considerations about tensor products are that they generalize the concept of products of vectors (remember that, in linear algebra and analytic geometry you're able to "multiply" vector just using the inner product and vector product), they construct a concept of products of vector spaces (remember that a Direct sum of vector space gives you a notion of Sum of vector spaces), and they construct the precise notion of a tensor. Also, by the technology of the construction of the tensor product we can identify (i.e. stablish a isomorphism between vector spaces) the vector space $Votimes W$ and $mathfrak{Lin}^{2}(V^{*} times W^{*}; mathbb{K})$:
$$Votimes W cong mathfrak{Lin}^{2}(V^{*} times W^{*}; mathbb{K}) tag{5}$$
where $mathfrak{Lin}^{2}(V^{*} times W^{*}; mathbb{K})$ is the dual vector space of all bilinear functionals.
So a tensor have the form:
$$mathbf{T} = sum^{n}_{i=1}sum^{n}_{j=1} T^{ij} (mathbf{e}_{i}otimesmathbf{e}_{j}) tag{6}$$
And $mathbf{T} in Votimes W$.
Well, given the transformation rule $(3)$ the space, $(5)$, and form, $(6)$, you can talk precisely about what tensor really is. It's clear that the "object tensor" isn't just a transformation of coordinates. Also, in $(6)$ the tensor basis $(mathbf{e}_{i}otimesmathbf{e}_{j})$ spans $Votimes W$.
By virtue of the general construction of tensor product and the identification given by $(5)$, you'll also encounter the definition of a tensor as a multilinear object which spits scalars:
$$begin{array}{rl}
mathbf{T} :V^{*}times W^{*} &to mathbb{K} \
(mathbf{v},mathbf{w})&mapsto mathbf{T}(mathbf{v},mathbf{w})=: v^{i}cdot_{mathbb{K}}w^{j}
end{array}$$
Where the operation $cdot_{mathbb{K}}$ is the product defined in the field.
With this picture we say that a tensor like $(6)$ is a tensor of rank 2. And a vector a tensor of rank 1. Furthermore a scalar a tensor of rank 0.
II) The tensor object and physics
The well stablish physics, in general, deals with spacetime (like Newtonian physics), and the theory of spacetime is geometry. So, in order to really apply the tensor theory in physics first we have to give the geometry of physics.
The geometry is basically classical Manifold Theory (which, again, is beyond the scope). And by Manifold Theory we can apply tensors on Manifolds introducing the concept of a tangent vector space. In parallel, we can construct another algebraic structure called Fibre Bundle of tangent spaces and then create the precise notion of Vector Field and Tensor Field.
Tensor Fields are the real objects defined in physics books as tensors and we use the word of a tensor and tensor field as synonyms (IN FACT THEY ARE NOT THE SAME CONCEPT!). A tensor field is a section of the tensor bundle and a vector field, a section of vector bundle. But the intuitive definition (by far, general to physics) of a tensor field is then:
$$[mathbf{T}(x^{k})] = sum^{n}_{i=1}sum^{n}_{j=1} [T^{ij}(x^{k})] ([mathbf{e}_{i}(x^{k})]otimes[mathbf{e}_{j}(x^{k})]) tag{5}$$
A tensor field is the object which attaches a tensor to every point p of the Manifold.
With the manifold theory, the transformation rule becomes:
$$[T'^{ij}(x^{m})] = sum^{n}_{k=1}sum^{n}_{l=1} frac{partial x'^{i}}{partial x^{k}}frac{partial x'^{j}}{partial x^{l}} [T^{kl}(x^{m})] equiv T'^{ij} = sum^{n}_{k=1}sum^{n}_{l=1} frac{partial x'^{i}}{partial x^{k}}frac{partial x'^{j}}{partial x^{l}} T^{kl} tag{7}$$
Notice that the partials are simply the transformation matrices $M$. The matrices $M$ are called the Jacobians transformation matrices and the matrices $M$ became these jacobians by virtue of Manifold theory.
In a restric way, these Jacobians are rotations,lorentz transformations,galilean transformation, and so on.
III) What is the difference between zero-rank tensor x (scalar) and 1D vector [x]?
So, in order to talk about lengths we have to realize that we are talking about a scalar field, or a tensor of rank 0. Then the difference between a scalar and a 1D vector (which is a tensor of rank 1) is that one is a scalar field and the other is a vector field. From a "Pure" mathematical point of view, (section I) if this answer) one is a member of the field $mathbb{K}$ and the other is a member of a vector space.
Also, you're quite right, a scalar (or a scalar field) is a rank 0 tensor or "a object which do not have "matrices of change"; an object which do not suffer a change under a transformation of coordinates (we say that a scalar quantity is a invariant quantity).
$$phi'= phi$$
$$* * *$$
[*] ROMAN.S. Advanced Linear Algebra. Springer. chapter 14. 1 ed. 1992.
edited 6 hours ago
answered 6 hours ago
M.N.RaiaM.N.Raia
510314
510314
add a comment |
add a comment |
Thanks for contributing an answer to Physics Stack Exchange!
- Please be sure to answer the question. Provide details and share your research!
But avoid …
- Asking for help, clarification, or responding to other answers.
- Making statements based on opinion; back them up with references or personal experience.
Use MathJax to format equations. MathJax reference.
To learn more, see our tips on writing great answers.
Sign up or log in
StackExchange.ready(function () {
StackExchange.helpers.onClickDraftSave('#login-link');
});
Sign up using Google
Sign up using Facebook
Sign up using Email and Password
Post as a guest
Required, but never shown
StackExchange.ready(
function () {
StackExchange.openid.initPostLogin('.new-post-login', 'https%3a%2f%2fphysics.stackexchange.com%2fquestions%2f469598%2f0-rank-tensor-vs-vector-in-1d%23new-answer', 'question_page');
}
);
Post as a guest
Required, but never shown
Sign up or log in
StackExchange.ready(function () {
StackExchange.helpers.onClickDraftSave('#login-link');
});
Sign up using Google
Sign up using Facebook
Sign up using Email and Password
Post as a guest
Required, but never shown
Sign up or log in
StackExchange.ready(function () {
StackExchange.helpers.onClickDraftSave('#login-link');
});
Sign up using Google
Sign up using Facebook
Sign up using Email and Password
Post as a guest
Required, but never shown
Sign up or log in
StackExchange.ready(function () {
StackExchange.helpers.onClickDraftSave('#login-link');
});
Sign up using Google
Sign up using Facebook
Sign up using Email and Password
Sign up using Google
Sign up using Facebook
Sign up using Email and Password
Post as a guest
Required, but never shown
Required, but never shown
Required, but never shown
Required, but never shown
Required, but never shown
Required, but never shown
Required, but never shown
Required, but never shown
Required, but never shown