SW VandeCarr said:
Thanks all. I will need to do more research based on your responses. If I can prove that the Dirac delta distribution is a derivative of the Heaviside step function, will that allow for an analytic solution such that the integral (-inf,+inf) of the Dirac delta distribution is unity, or is Ben Neihoff correct when he states ( if I understand correctly) that this integral of the Dirac delta is simply defined this way and not derived analytically?
No,
it's not an integral in any regular sense (Riemann, Lebesgue, whatever), it's just an intuitive notation for the application of the continuous linear functional delta to a function. In particular,
\int_{-\infty}^\infty \delta(x) \textrm{d}x = \delta(1) = 1(0) = 1,
where 1 is the function f: f(x) = 1 for all x.
As an aside, the function F(x)=log(x) (for all positive real bases) is infinite at x=0 and arguably the sum for all non-zero positive real test values 'a' of F(x) is zero. I don't know if this has anything to do with the Dirac delta, but I thought of it when trying to think of any common continuous symmetrical distributions that are infinite at x=0.
It's ok to think of the Dirac delta as being "infinite x=0", but be aware that this is just a metaphor, distributions don't actually have "values" at different points.
Anyway, "symmetric" distributions "infinite" at x=0 (other than multiple of delta and delta + a symmetric distribution) are for example the even derivatives of delta. An odd distribution (odd distributions are naturally defined by d(f(-x))=-d(f(x)) ) "infinite at x=0" (or rather "zero but behaving weirdly at x=0") is for example:
\left(\textrm{v.p.} \frac{1}{x}\right)(\varphi) = \lim_{\epsilon\rightarrow 0+} \int_{|x|\geq \epsilon} \frac{\varphi(x)}{x} \textrm{d}x
arildno said:
You won't be able to do that, since the Heaviside function is discontinuous, and hence not differentiable in the strict meaning of that term.
We're talking about distributional derivatives.
Every distribution is infinitely differentiable (because the differentiation gets moved to the test function, which is by definition smooth), and it's easy to prove (a simple application of the definition of a distributional derivative and Newton's formula) that the derivative of the Heaviside step function is indeed the delta distribution.