Please pay attention.)
One important example is a position and a momentum of a particle .
(Note for physicists: we employ a "system of units" such that the Planck's constant (divided by ) is equal to .)
Then the expectation of a function (say) when the state corresponds to a function is given by
One may then regard as a ``probability density'' of the particle on . is called the wave function of the particle. We should note:
On the other hand, the expectation of a function should be:
The computation becomes easier when we take a Fourier transform of .
or its inverse
The Fourier transform is known to preserve the -inner product. That means,
One of the most useful properties of the Fourier transform is that it transforms derivations into multiplication by coordinates. That means,
Using the Fourier transform we compute as follows.
We then realize that plays the role of the probability density in this case.
Thus we come to conclude:
The probability amplitude of the momentum is the Fourier transform of the probability amplitude of the position.
The Fourier transform, then, is a way to know the behavior of quantum phenomena.
One may regard a table of Fourier transform (which appears for example in a text book of mathematics) as a vivid example of position and momentum amplitudes of a particle. |
To illustrate the idea, let us know concentrate on the case where and assume that is a square root of the normal(=Gaussian) distribution of mean value and standard deviation .
By using a formula
we see that the Fourier transform of is given by
so that the inverse Fourier transform is given as follows.
We observe that both and are normal distribution, and that the standard deviation of them are inverse proportional to each other.
In easier terms, the narrower the distributes, the wider the transform does.
It is a primitive form of the fact known as ``the uncertainty principle''.