Author_Institution :
Solid State Res. Centre, De Montfort Univ., Leicester, UK
Abstract :
A new adaptive nonlinear (neural-like) architecture, an analogue synthesiser of orthogonal functions which is able to produce a plurality of mutually orthogonal signals as functions of time such as Legendre, Chebyshev and Hermite polynomials, cosine basis of functions, smoothed cosine basis, etc., is proposed. A proof-of-concept breadboard version of the analogue synthesiser is described. The device is characterised by a very fast (approximately 100 iterations) and stable process of signal synthesis. The proposed new device could find applications e.g. in analogue systems of function approximation, in particular as a main unit in an analogue implementation of so-called Chebyshev polynomial-based (CPB) neural networks, as a unit in a fast adaptive alternative to Volterra polynomial neural networks, and also as a preprocessing element (performing some transforms, filtration, etc.) in analogue neural network-based systems of information processing
Keywords :
neural net architecture; CPB neural networks; Chebyshev polynomial-based neural networks; Hermite polynomials; Legendre polynomials; Volterra polynomial neural networks; adaptive nonlinear neural-like architecture; analogue synthesiser; fast stable signal synthesis; filtration; function approximation; mutually orthogonal signals; orthogonal function synthesiser; preprocessing element; proof-of-concept breadboard version; smoothed cosine basis; transforms;