Title :
Passive stochastic approximation with constant step size and window width
Author :
Yin, Gang George ; Yin, Kewen
Author_Institution :
Dept. of Math., Wayne State Univ., Detroit, MI, USA
fDate :
1/1/1996 12:00:00 AM
Abstract :
Motivated by the desire to solve a steady-state estimation and detection problem in chemical engineering, and inspired by the recent progress in passive stochastic approximation, recursive algorithms combining stochastic approximation and kernel estimation are studied and developed in this work. The underlying problem can be stated as finding the roots f(x)=0 provided only noisy measurements yn=f(xn,ξn) are available, where Ef(x, ξn)=f(x). The main difficulty lies in that unlike the traditional approach in stochastic approximation, the sequence {x n} is generated randomly and cannot be adjusted in accordance with our wish. Similar to those used in the decreasing step size algorithms, another sequence {zn} is generated to approximate the roots of f¯(x)=0. Some of the features of the algorithms include: constant step size and constant window width and correlated random processes. Under fairly general conditions, it is proven that a weak convergence result holds for an interpolated sequence of the iterates. Error bounds are obtained and a local limit theorem is also derived. The algorithm is then applied to an estimation problem in chemical engineering. Simulation has shown promising results
Keywords :
approximation theory; chemical technology; convergence of numerical methods; estimation theory; stochastic processes; chemical engineering; correlated random processes; error bounds; kernel estimation; local limit theorem; passive stochastic approximation; steady state estimation; stochastic recursive algorithms; weak convergence; window width; Approximation algorithms; Chemical engineering; Kernel; Noise measurement; Nonlinear equations; Random processes; Recursive estimation; Steady-state; Stochastic processes; Stochastic resonance;
Journal_Title :
Automatic Control, IEEE Transactions on