Soft Computing for Battery State-of-Charge (BSOC) Estimation in Battery String Systems
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Date
2008-01-01
Authors
Y.-S. Lee
W.-Y. Wang
T.-Y. Kuo
Journal Title
Journal ISSN
Volume Title
Publisher
IEEE Industrial Electronics Society
Abstract
In this paper, a soft computing technique for estimating battery state-of-charge of individual batteries in a battery
string is proposed. The soft computing approach uses a fusion
of a fuzzy neural network (FNN) with B-spline membership
functions (BMFs) and a reduced-form genetic algorithm (RGA).
The algorithm is employed to tune both control points of the
BMFs and the weights of the FNNs. The traditional multiple-input
multiple-output FNN (MIMOFNN) cannot directly be used in this
paper. The main reason is that there are too many free parameters
in the MIMOFNN to be trained if many inputs are required. In
this paper, a merged multiple-input single-output (MISO) FNN is
proposed and can be trained by the RGA optimization approach.
The merged MISO FNN with RGA (FNNRGA) can achieve faster
convergence and lower estimation error than neural networks
with the back propagation method. From experimental results, the
proposed merged MISO FNNRGA is superior, more robust than
the traditional method, and the overfitting suppression features
are significantly improved.