Abstract:
Methodological and algorithmical support for analytical modeling of normal (Gaussian) processes in continuous and discrete stochastic systems (StS) with complex fractional order Bessel nonlinearities (spherical, modified spherical, and Airy) is given. The developed StS support is based on the methods of normal approximation and statistical linearization. For complex fractional order, Bessel nonlinearities series and Hermite representations are used. Special attention is paid to symbolic algorithms and software based on modern computer algebra systems (CAS). A short survey of CAS StS application is given. The test example is devoted to noise immunity of Bessel fraction order oscillator in stochastic media.
Keywords:Airy nonlinearity; Bessel function of fractional order; Bessel nonlinearity; method of analytical modeling; method of normal approximation; method of statistical linearization; modificated spherical Bessel function; normal (gaussian) process; spherical Bessel function; stochastic process; symbolic analytical modeling.