A Merged Fuzzy Neural Network and Its Applications in Battery State-of-Charge Estimation
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Date
2007-09-01
Authors
I-H. Li
W.-Y. Wang
S.-F. Su
Y.-S. Lee
Journal Title
Journal ISSN
Volume Title
Publisher
IEEE Power & Energy Society
Abstract
To solve learning problems with vast number of inputs, this paper proposes a novel learning structure merging a
number of small fuzzy neural networks (FNNs) into a hierarchical learning structure called a merged-FNN. In this paper, the
merged-FNN is proved to be a universal approximator. This computing approach uses a fusion of FNNs using B-spline membership
functions (BMFs) with a reduced-form genetic algorithm (RGA).
RGA is employed to tune all free parameters of the merged-FNN,
including both the control points of the BMFs and the weights
of the small FNNs. The merged-FNN can approximate a continuous nonlinear function to any desired degree of accuracy. For a
practical application, a battery state-of-charge (BSOC) estimator,
which is a twelve input, one output system, in a lithium-ion battery
string is proposed to verify the effectiveness of the merged-FNN.
From experimental results, the learning ability of the newly proposed merged-FNN with RGA is superior to that of the traditional
neural networks with back-propagation learning