Title :
Progressive Learning Machine: A New Approach for General Hybrid System Approximation
Author :
Yimin Yang ; Yaonan Wang ; Jonathan Wu, Q.M. ; Xiaofeng Lin ; Min Liu
Author_Institution :
Coll. of Electr. Eng., Guangxi Univ., Nanning, China
Abstract :
As the most important property of neural networks (NNs), the universal approximation capability of NNs is widely used in many applications. However, this property is generally proven for continuous systems. Most industrial systems are hybrid systems (e.g., piecewise continuous), which is a significant limitation for real applications. Recently, many identification methods have been proposed for hybrid system approximation; however, these methods only operate in linear hybrid systems. In this paper, the progressive learning machine-a new learning algorithm based on multi-NNs-is proposed for general hybrid nonlinear/linear system approximation. This algorithm classifies hybrid systems into several continuous systems and can approximate any hybrid system with zero output error. The performance of the proposed learning method is demonstrated via numerical examples and with experimental data from real applications.
Keywords :
continuous systems; discrete systems; identification; learning (artificial intelligence); linear systems; nonlinear systems; pattern classification; classification; continuous systems; general hybrid system approximation; hybrid system identification; learning algorithm; nonlinear-linear system approximation; progressive learning machine; zero output error; Approximation algorithms; Artificial neural networks; Clustering algorithms; Least squares approximations; Switches; Training; Bidirectional extreme learning machine (B-ELM); cluster growing algorithm; hybrid system approximation; neural networks (NNs);
Journal_Title :
Neural Networks and Learning Systems, IEEE Transactions on
DOI :
10.1109/TNNLS.2014.2357683