Title :
Robust adaptive neurofilters with or without online weight adjustment
Author_Institution :
Dept. of Math. & Stat., Maryland Univ., Baltimore, MD
Abstract :
This paper proposes the use of risk-sensitive criteria for synthesizing a neurofilter that is adaptive to adaptation-worthy environmental parameters and robust to adaptation-unworthy ones. Two types of robust adaptive neurofilter are presented, one requires online weight adjustment and the other does not. A robust adaptive neurofilter without online weight adjustment is a time lagged recurrent network (TLRN) synthesized from realizations of the signal and measurement processes at typical values of the adaptation-worthy environmental parameters in a priori off-line training with respect to a risk-sensitive training criterion. A robust adaptive neurofilter with online weight adjustment consists of a signal estimator, a measurement predictor and a weight transformer, the former two being TLRNs and the latter a feedforward ANN. The nonlinear and linear weights of the signal estimator and measurement predictor are used as their long and short-term memories respectively. The linear weights of the measurement predictor are adjusted online by risk-sensitive or H∞ algorithms, and then transformed into the linear weights of the signal estimator by the weight transformer
Keywords :
adaptive filters; feedforward neural nets; filtering theory; learning (artificial intelligence); prediction theory; recurrent neural nets; adaptive filters; adaptive neurofilters; feedforward neural network; online weight adjustment; risk-sensitive criteria; signal estimator; time lagged recurrent network; Control theory; Filtering; Filters; Mathematics; Network synthesis; Robustness; Signal processing; Signal synthesis; Statistics; Weight measurement;
Conference_Titel :
Neural Networks,1997., International Conference on
Conference_Location :
Houston, TX
Print_ISBN :
0-7803-4122-8
DOI :
10.1109/ICNN.1997.614390