Basic Fourier analysis proof

In summary, the proof for the theorem states that if a function is Riemann integrable and all its Fourier coefficients are equal to zero, then the function must be equal to zero at all points of continuity. The proof involves defining a delta function and using the binomial theorem to expand an expression. The 2's in the denominator of the expression cancel out, but the proof still holds without them. The result is shown to integrate to zero, proving the theorem.
  • #1
Wingeer
76
0
Hi.
Just going through my notes from the last lecture I remember having some troubles understanding the proof the lecturer gave for the following theorem:
Suppose that f is Riemann integrable and that all its Fourier coefficients are equal to 0, then f(x)=0 at all points of continuity.
The proof is a bit tricky so I will sketch the basic gists of it.
We start by defining [tex]\delta_n = \frac{\left(\frac{1+cos(x)}{2}\right)^n}{\alpha_n}[/tex] where [tex]\alpha_n = \int_{-\pi}^{\pi} \left(\frac{1+cos(x)}{2}\right)^n dx[/tex]. This implies of course that [tex]\int_{-\pi}^{\pi} \delta_n dx = 1, \forall n[/tex]
He then proceeds by showing that
[tex]\frac{1}{\alpha_n} \leq \left(2\delta \left(\frac{1+cos(\delta)}{2}\right)^n\right)^{-1}[/tex]
Which will be useful later in the proof (this part was also understandable).
Now:
[tex]\left(\frac{1+cos(x)}{2}\right)^n = \left(\frac{exp(\frac{ix}{2}) + exp(\frac{-ix}{2})}{2}\right)^{2n}[/tex]
He then uses the binomial theorem on this expression to get:
[tex]\sum_{k=0}^{2n} {2n \choose k} e^{i(k-n)x}[/tex]
My first question is then: Where did the 2's from the denominator go?



Now he uses this expansion to conclude that:
[tex]\int_{-\pi}^{\pi} f(y) \left(\frac{1+cos(y-x)}{2}\right)^n dy = 0[/tex]
By arguing that the Fourier coefficients are 0 by assumption. My second question is regarding this step. I do not understand it at all. any clarity at all will be a tremendous help.



Then
[tex]|f(x)| = \left|f(x) - \alpha_n ^{-1} \int_{-\pi}^{\pi} f(y) \left(\frac{1+cos(y-x)}{2}\right)^n dy \right| = \left|\alpha_n ^{-1}\int_{-\pi}^{\pi} (f(x)-f(y)) \left(\frac{1+cos(y-x)}{2}\right)^n dy \right|[/tex]
Which follows from how the delta function is defined. He then proceeds by noting that
[tex]\lim_{y \to x}f(y) = f(x)[/tex]
so that for any given epsilon>0 there exists 2delta such that
[tex]|x-y| < 2\delta \Leftarrow |f(x) - f(y)| < \epsilon[/tex]
By definition of limits.
Now by the triangle inequality for integrals we have that the expression over is less than or equal to:
[tex]\alpha_n ^{-1}\int_{-\pi}^{\pi} \left|(f(x)-f(y)) \left(\frac{1+cos(y-x)}{2}\right)^n \right| dy[/tex]
Now he chooses to split the integral by using the limits, so that we get:
[tex]\int_{|x-y|<2\delta}\alpha_n ^{-1} \left|(f(x)-f(y)) \left(\frac{1+cos(y-x)}{2}\right)^n \right| dy + \int_{|x-y| \geq 2\delta} \alpha_n ^{-1} \left|(f(x)-f(y)) \left(\frac{1+cos(y-x)}{2}\right)^n \right| dy[/tex]
Now the first integral is smaller than epsilon due to the limits and also by the normalisation of delta.
In the second integral we pull out alpha and use the inequality mentioned earlier. Now he also claims that:
[tex]\int_{|x-y| \geq 2\delta} \left|(f(x)-f(y)) \left(\frac{1+cos(y-x)}{2}\right)^n \right| dy \leq 2M \left(\frac{1+cos(2\delta)}{2}\right)^n[/tex]
Which I believe to be the case since f is Riemann integrable and therefore must be bounded by, say M. Also on the right side we have the maximal value that the cosine expression takes, and therefore the inequality is justified. Is this correct thinking?
Now by taking limits we get the conclusion that
[tex]|f(x)| < \epsilon[/tex]
where epsilon was arbitrarily chosen, and therefore f(x)=0 where it is continuous.
I know this result probably goes a bit deeper and can be better understood with measure theory and the like. I have not had any courses with this yet, so my question is then:
Is there a more general formulation of this theorem where we do not restrict the functions to be Riemann integrable?

Thanks in advance.
 
Physics news on Phys.org
  • #2
This is quite a long problem, so I will only address part of it for now. Regarding your first question:
Wingeer said:
Now:
[tex]\left(\frac{1+cos(x)}{2}\right)^n = \left(\frac{exp(\frac{ix}{2}) + exp(\frac{-ix}{2})}{2}\right)^{2n}[/tex]
He then uses the binomial theorem on this expression to get:
[tex]\sum_{k=0}^{2n} {2n \choose k} e^{i(k-n)x}[/tex]
My first question is then: Where did the 2's from the denominator go?
The 2's in the denominators of the exponentials cancel, but you are right that there is still the 1/2 in the denominator of the larger fraction which is unaccounted for. Here is what I get:
$$\begin{align}
\left(\frac{\exp\left(\frac{ix}{2}\right) + \exp\left(\frac{-ix}{2}\right)}{2}\right)^{2n} &= \frac{1}{2^{2n}}\sum_{k=0}^{2n} {2n \choose k} \left(\exp\left(\frac{ix}{2}\right)\right)^{k} \left(\exp\left(-\frac{ix}{2}\right)\right)^{2n-k} \\
&= \frac{1}{2^{2n}}\sum_{k=0}^{2n} {2n \choose k} \exp\left(\frac{ixk}{2}\right) \exp\left(\frac{-ix(2n-k)}{2}\right) \\
&= \frac{1}{2^{2n}}\sum_{k=0}^{2n} {2n \choose k} \exp\left(\frac{ixk}{2}\right) \exp\left(\frac{ixk}{2}\right) \exp\left(\frac{-i2xn}{2}\right) \\
&= \frac{1}{2^{2n}}\sum_{k=0}^{2n} {2n \choose k} \exp\left(ixk\right) \exp\left(-ixn\right) \\
&= \frac{1}{2^{2n}}\sum_{k=0}^{2n} {2n \choose k} \exp\left(ix(k-n)\right)
\end{align}$$
So this matches your lecturer's expression except for the [itex]1/2^{2n}[/itex] factor, but his conclusion that the result integrates to zero is true with or without this factor:
]Now he uses this expansion to conclude that:
[tex]\int_{-\pi}^{\pi} f(y) \left(\frac{1+cos(y-x)}{2}\right)^n dy = 0[/tex]
By arguing that the Fourier coefficients are 0 by assumption.
All he has done here is to substitute the expression I just obtained into this integral:
$$\begin{align}\int_{-\pi}^{\pi} f(y) \left(\frac{1+cos(y-x)}{2}\right)^n dy &=
\frac{1}{2^{2n}} \int_{-\pi}^{\pi} f(y) \sum_{k=0}^{2n} {2n \choose k} \exp\left(i(y-x)(k-n)\right) dy \\
&= \frac{1}{2^{2n}} \sum_{k=0}^{2n} {2n \choose k} \int_{-\pi}^{\pi} f(y) \exp\left(i(y-x)(k-n)\right) dy\\
&= \frac{1}{2^{2n}} \sum_{k=0}^{2n} {2n \choose k} \exp(-ix(k-n)) \int_{-\pi}^{\pi} f(y) \exp(iy(k-n)) dy \\
\end{align}$$
Note that
$$\int_{-\pi}^{\pi} f(y) \exp\left(iy(k-n)\right) dy$$
is a Fourier coefficient of ##f##, hence zero by assumption. Therefore the whole expression reduces to zero.

I will read over the rest of your post and reply again if I can offer any further insight.
 
Last edited:
  • #3
Wingeer said:
In the second integral we pull out alpha and use the inequality mentioned earlier. Now he also claims that:
[tex]\int_{|x-y| \geq 2\delta} \left|(f(x)-f(y)) \left(\frac{1+cos(y-x)}{2}\right)^n \right| dy \leq 2M \left(\frac{1+cos(2\delta)}{2}\right)^n[/tex]
Which I believe to be the case since f is Riemann integrable and therefore must be bounded by, say M. Also on the right side we have the maximal value that the cosine expression takes, and therefore the inequality is justified. Is this correct thinking?
Yes, it sounds correct to me.
Now by taking limits we get the conclusion that
[tex]|f(x)| < \epsilon[/tex]
where epsilon was arbitrarily chosen, and therefore f(x)=0 where it is continuous.
Looks good. This is a fairly standard type of proof in real analysis: the [itex]\delta_n[/itex] family of functions are called kernels and they are used to "smooth" the integrand in order to make limiting arguments more feasible. If you're interested in reading further I would highly recommend Stein and Shakarchi's book Fourier Analysis: An Introduction. This book should be very accessible to you as it only uses the Riemann integral. In chapter 2, they lay out the properties of what they call a family of "good" kernels [itex]K_n[/itex]:

(a) For all [itex]n \geq 1[/itex],
$$ \int_{-\pi}^{\pi} K_n(x) dx = 1$$
(b) There exists [itex]M > 0[/itex] such that for all [itex]n \geq 1[/itex],
$$\int_{-\pi}^{\pi} |K_n(x)| dx \leq M$$
(c) For every [itex]\delta > 0[/itex],
$$\int_{\delta \leq |x| \leq \pi} |K_n(x)|dx \rightarrow 0 \textrm{ as } n \rightarrow \infty$$
and they prove some nice theorems regarding what you can do with a good family of kernels, as well as giving several examples of such families. You can check for yourself whether the kernels in your problem satisfy these conditions.

I know this result probably goes a bit deeper and can be better understood with measure theory and the like. I have not had any courses with this yet, so my question is then:
Is there a more general formulation of this theorem where we do not restrict the functions to be Riemann integrable?
Yes, if we use the Lebesgue integral, then if [itex]f[/itex] satisfies [itex]\int_{-\pi}^{\pi} |f(x)| dx < \infty[/itex] and all of its Fourier coefficients are zero, it follows that [itex]f = 0[/itex] almost everywhere. "Almost everywhere" means except possibly on a set of measure zero. A set of measure zero is small: it can be covered by a countable family of open intervals of arbitrarily small total length. Note that this implies that [itex]f[/itex] must equal zero at any point of continuity, for if it were not, then we would also have [itex]f \neq 0[/itex] throughout some open neighborhood around the point, and any such neighborhood has measure greater than zero.
 
  • #4
Thank you for your answer and time!
We are actually using the book by Stein and Shakarchi in this course. I am not sure if I like it or not; It is certainly something else from what I've read before. Also I am just recently diving into analysis, so I might need to get used to this way of thinking. Could you please elaborate on the purpose of kernels? Especially in how they make limiting arguments more feasible.

Is not the integrand supposed to be squared in the last paragraph? Since that is the norm on L2(-pi,pi)? Or am I wrong? Probably a difficult question, but how small does the total length have to be? And how do the length compare with the ones of neighbourhoods of open intervals?

Another question arose last week when we were talking about the basis of L2(-pi,pi). We proved that the family of function e^(inx) for integer n is a basis for the aforementioned space. Then he posed a related question:
Prove that
$$\frac{\sin(nx)}{\sqrt{\pi / 2}}$$ for integer n is a basis for the space L2(0,pi).

First off the family of functions are definitely orthonormal by a quick computation of an integral. The completion part is however stalling me. I really want to use the fact that the exponentials are a basis to prove that this family is a basis, but I cannot really see how to go about that. Maybe a translation and scaling, or something up that alley?
I really appreciate you taking your time to help!
 
  • #5
Wingeer said:
Thank you for your answer and time!
We are actually using the book by Stein and Shakarchi in this course. I am not sure if I like it or not; It is certainly something else from what I've read before. Also I am just recently diving into analysis, so I might need to get used to this way of thinking. Could you please elaborate on the purpose of kernels? Especially in how they make limiting arguments more feasible.
The operation of convolution with a kernel results in a smoother function. For example, if ##K_n## is a sequence of "good" kernels, and ##f_n## is any integrable function, then for each ##n##,
$$f_n(x) = \int_{-\pi}^{\pi} f(y)K_n(x-y) dy$$
is continuous at all points even if the original function ##f## was not. Furthermore, at any point ##x## where ##f## is continuous, we have ##f_n(x) \rightarrow f(x)##. Even better, if S is the set of points where ##f## is continuous, and S is compact, then ##f_n \rightarrow f## uniformly on S.

Now, why is this useful in Fourier analysis? One of the key questions is under what circumstances we can reconstruct ##f## given its Fourier coefficients. The simplest candidate way to do this is to define a sequence of partial sums:
$$f_n(x) = \sum_{k=-n}^{n} \hat{f}(k) e^{ikx}$$
If you do some clever rearranging, it turns out that this can be written as a convolution with a kernel:
$$f_n(x) = \int_{-\pi}^{\pi} f(y) D_n(x-y) dy$$
where ##D_n(x) = \sin((2n+1)x)/\sin(x)## is the so-called Dirichlet kernel. Unfortunately it turns out that the Dirichlet kernel is not a "good" kernel; it violates the second condition laid out by Stein and Shakarchi because there is no M such that
$$\int_{-\pi}^{\pi}|D_n(x)| dx \leq M$$
for all ##n##. A consequence of this is that we aren't guaranteed that the partial sums of the Fourier series will converge to the original function, even at points where that function is continuous. (Indeed, explicit counterexamples have been constructed.)

However, there are other ways to reconstruct the function ##f## from its Fourier coefficients. One way is to take averages of the partial sums of the Fourier series. In other words,
$$g_n(x) = \frac{1}{n}\sum_{m=1}^{n} f_m(x)$$
where ##f_m(x)## is as defined above. This turns out to be equivalent to forming a sum like
$$g_n(x) = \sum_{k=-n}^n \hat{f}(k) w_n(k) e^{ikx}$$
where ##w_n(k)## is a sequence of weighting factors that has a triangular profile between -n and n. It turns out that this is also equivalent to convolution with a kernel:
$$g_n(x) = \int_{-\pi}^{\pi} f(y) S_n(x-y) dy$$
Here ##S_n(x)## is called a Fejer kernel, which (if I recall correctly) equals the SQUARE of ##D_n(x)## (times a scale factor like 1/n), and this does turn out to be a good kernel.

Therefore the sequence of AVERAGES of the partial sums of the Fourier series does converge to the original function at all points of continuity.

(By the way, there's no hope at points of discontinuity, since we can change the function's value at each of these without having any effect on its Fourier coefficients, because these are defined by an integral.)

Is not the integrand supposed to be squared in the last paragraph? Since that is the norm on L2(-pi,pi)? Or am I wrong?
On a finite-length interval such as ##[-\pi,\pi]##, if the L2 norm is finite then the L1 norm will also be finite. But all that is needed for the theorem I mentioned is for the L1 norm to be finite. On a finite-length interval, both norms will always be finite if the function is bounded. In the context of Riemann integration, all functions are assumed to be bounded because the integral is not defined otherwise. The Lebesgue integral can integrate unbounded functions too, so we have to require the finite norm in that case.

Probably a difficult question, but how small does the total length have to be? And how do the length compare with the ones of neighbourhoods of open intervals?
You mean, for a set of measure zero? Well, any countable set has measure zero (for example, the rationals have measure zero), and some uncountable sets also have measure zero, for example the Cantor set. A set of measure zero cannot contain any open intervals, no matter how small. However, this is not sufficient: the set of irrationals contains no open intervals but it does NOT have measure zero.

Another question arose last week when we were talking about the basis of L2(-pi,pi). We proved that the family of function e^(inx) for integer n is a basis for the aforementioned space. Then he posed a related question:
Prove that
$$\frac{\sin(nx)}{\sqrt{\pi / 2}}$$ for integer n is a basis for the space L2(0,pi).
I'm not sure I believe that. All of these functions have value 0 at ##x=0## and ##x=\pi##, so any linear combination of them will also be zero at these points. Now maybe ##L^2(0,\pi)## refers to the open interval ##(0,\pi)## so those two points are conveniently excluded, but I'm still not so sure... Let me think about it for a while and see if I can find an argument for or against this claim.
 
Last edited:
  • #6
Wow. Great answer again. Really clarifying, but still leaves me curious. I recently bought the real analysis book by McDonald and Weiss and I really enjoy reading in it.
It is indeed meant to be the open interval, yes.
 
  • #7
I have a suggestion:
Let ##f \in L^2(0, \pi)##, then we have:
$$ f' = \left\{
\begin{array}{l}
f(x) \text{ if } x \in (0, \pi)\\
-f(-x) \text{ if } x \in (-\pi,0)
\end{array}
\right.$$
and define f'(0) to be the average of the limiting processes of each of the piecewise functions (or something like that). Then f' is in ##L^2( -\pi, \pi)## and it is odd and can therefore be expressed by a linear combination of sin(nx).
This was what me and a friend came up with. Now that I see over it myself, I can't help but think: What's stopping us from doing the same argument with even functions? And also, will the claim imply that the only functions in L2(0,pi) is odd? That seems weird ...
 
  • #8
You know that the family ##f_m(x) = e^{imx}## is a basis for ##L^2(-\pi, \pi)##, or for any interval of length ##2\pi##, for example ##L^2(0, 2\pi)##. So scale the x-axis by a factor of 2 to obtain
$$g_m(x) = f_m(2x) = e^{i2mx}$$
as a basis for ##L^2(0, \pi)##. Now, can you show that each ##g_m## can be expanded in terms of the proposed basis ##\sin(nx)/\sqrt{\pi/2}##? If so, you may be able to argue that ##\sin(nx)/\sqrt{\pi/2}## is indeed a basis for ##L^2(0, \pi)##.

Consider the ##n##'th Fourier coefficient of ##g_m## with respect to the proposed basis. I'm too lazy to keep track of constant scale factors so I'll just write ##K## for these:
$$\begin{align}c_{n,m} &= K \int_0^{\pi} e^{i2mx} \sin(nx) dx \\
&= \frac{K}{2i} \int_0^{\pi} e^{i2mx} [e^{inx} - e^{-inx}] dx \\
&= \frac{K}{2i} \left[\int_0^{\pi} e^{i(2m+n)x} dx - \int_0^{\pi} e^{i(2m-n)x} dx \right]
\end{align}$$
Note that if ##k## is an integer, then
$$\int_0^{\pi} e^{ikx} dx = \pi$$
if ##k## = 0, and otherwise we have
$$\int_0^{\pi} e^{ikx} dx = \frac{1}{ik} [e^{ik\pi} - 1] = \frac{1}{ik} [(-1)^k - 1] = \begin{cases} 2i/k & \textrm{if }k \textrm{ is odd} \\
0 & \textrm{if }k \textrm{ is even} \\
\end{cases}$$
It's clear that we can continue carrying out this calculation to end up with a formula for ##c_{n,m}##, which will give us
$$g_m(x) \sim \sum_{n=-\infty}^{\infty} c_{n,m} \sin(nx)$$
where I wrote ~ instead of = because convergence needs to be established. Assuming that works out, then an arbitrary function ##f\in L^2(0, \pi)## can be written as
$$f(x) \sim \sum_{m=-\infty}^{\infty} a_m g_m(x)$$
where ##a_m## is the ##m##'th Fourier coefficient for ##f## in terms of the basis ##g_m##. This then becomes
$$f(x) \sim \sum_{m=-\infty}^{\infty} a_m\left( \sum_{n=-\infty}^{\infty} c_{n,m} \sin(nx)\right)$$
and if the sums are well-behaved, we can rearrange as follows
$$f(x) \sim \sum_{n=-\infty}^{\infty} \left(\sum_{m=-\infty}^{\infty} a_m c_{n,m} \right) \sin(nx)$$
thereby giving us, in principle, a Fourier coefficient ##d_n## for ##f## in terms of the basis ##\sin(nx)## equal to
$$d_n = \sum_{m=-\infty}^{\infty} a_m c_{n,m}$$
Of course, all of these manipulations will need to be justified. Absolute convergence will be required in order to move summations around like that.
 

1. What is Fourier analysis?

Fourier analysis is a mathematical technique used to decompose a complex signal into its individual frequency components. It is based on the idea that any periodic signal can be represented as a sum of simple sine and cosine waves of different frequencies, amplitudes, and phases.

2. Why is Fourier analysis important?

Fourier analysis is important because it allows us to understand and analyze complex signals and systems in terms of their simpler frequency components. This is useful in a variety of fields, including signal processing, image and sound compression, and data analysis.

3. What is the Fourier transform?

The Fourier transform is a mathematical operation that converts a signal from its time-domain representation to its frequency-domain representation. It is a fundamental tool in Fourier analysis and is used to calculate the amplitude and phase of each frequency component in a signal.

4. How is the Fourier transform used in proofs?

The Fourier transform is used in proofs to demonstrate the fundamental properties of Fourier analysis and to derive various mathematical identities and theorems. It is also used to solve differential equations and to prove convergence of Fourier series.

5. Are there any limitations to Fourier analysis?

Yes, there are some limitations to Fourier analysis. It assumes that the signal is periodic and that it has a continuous frequency spectrum. It is also not suitable for analyzing signals with abrupt changes or discontinuities. In addition, the accuracy of the Fourier transform depends on the length of the signal and the sampling rate used.

Similar threads

  • Topology and Analysis
Replies
1
Views
337
Replies
4
Views
306
  • Topology and Analysis
Replies
4
Views
205
Replies
4
Views
211
Replies
2
Views
336
  • Topology and Analysis
Replies
2
Views
575
  • Topology and Analysis
Replies
16
Views
1K
  • Topology and Analysis
Replies
2
Views
1K
Replies
21
Views
1K
  • Topology and Analysis
Replies
2
Views
2K
Back
Top