توضیحات
ABSTRACT
This paper addresses the structure and the associated on-line learning algorithms of a feedforward multilayered
connectionist network for realizing the basic elements and functions of a traditional fuzzy logic controller. The
proposed Fuzzy Adaptive Learning COntrol Network (FALCON) can be contrasted with the traditional fuzzy logic
control systems in their network structure and learning ability. The connectionist structure of the proposed FALCON
can be constructed from training examples by neural learning techniques to find proper fuzzy partitions, membership functions, and fuzzy logic rules. Two complementary on-line structure/parameter learning algorithms, FALCON-FSM and FALCON-ART, are proposed for constructing the FALCON dynamically. The FALCON-FSM combines the backpropagation learning scheme for parameter learning and a fuzzy similarity measure for structure learning. The FALCON-FSM can find proper fuzzy logic rules, membership functions, and the size of output partitions simultaneously.
In the FALCON-FSM algorithm, the input and output spaces are partitioned into “grids”. The grid-typed space
partitioning certainly makes both the fuzzy logic controller software emulation and fuzzy chip implementation
convenient. However, as the number of input/output variables increases, the number of partitioned grids will grow
combinatorially. To avoid the problem of combinatorial growth of partitioned grids in some complex systems, the
FALCON-ART algorithm is developed, which can partition the input and output spaces in a more flexible way based on the distribution of the training data. The FALCON-ART combines the backpropagation learning scheme for parameter learning and a fuzzy ART algorithm for structure learning. The FALCON-ART can on-line partition the input and output spaces, tune membership functions and find proper fuzzy logic rules dynamically. Computer simulations were conducted to illustrate the performance and applicability of both FALCON-FSM and FALCON-ART learning algorithms
INTRODUCTION
Bringing the learning abilities of neural networks to automate and realize the design of fuzzy logic control
systems has recently become a very active research area I-1-3, 6, 8, 9, 11, 12, 14-17, 18, 19, 21,25, 27-31]. This
integration brings the low-level learning and the computational power of neural networks into fuzzy logic
systems, and provides the high-level, human-like thinking and reasoning of fuzzy logic systems into neural
networks. Such synergism of integrating neural networks and fuzzy logic systems into a functional system
provides a new direction toward the realization of intelligent systems for various applications.
Year : 1995
Publisher : ELSEVIER
By : Chin-Teng Lin, Cheng-Jian Lin , C.S. George Lee
File Information : English Language / 21 Page /Size : 1.1 M
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سال : 1995
ناشر : ELSEVIER
کاری از : Chin-Teng Lin, Cheng-Jian Lin , C.S. George Lee
اطلاعات فایل : زبان انگلیسی / 21 صفحه / حجم : 1.1 M
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