Wednesday, 5 November 2008

Wseas Transactions

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Transactions ID Number: 31-680
Full Name: Otman Ahtiwash
Position: Lecturer
Age: ON
Sex: Male
Address: FOE, MMU
Country: MALAYSIA
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E-mail address: ahtiwash@mmu.edu.my
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Title of the Paper: Soft Computing Architectures and Developments
Authors as they appear in the Paper: Otman M. Ahtiwash
Email addresses of all the authors: ahtiwash@mmu.edu.my
Number of paper pages: 10
Abstract: In recent years the human behavior and its emulating attitude has become a source of inspiration for a new direction of research in the engineering society. The emergence of approaches that mimic the learning and adaptation of the human brain in solving complex engineering problems that are difficult to resolve using conventional methods, paves the way for the utilization of new techniques that accommodate human computing resources such as nervous system, fuzziness and evolution. Therefore, soft computing (SC) as an association of problem-solving methodologies that includes fuzzy inference systems (FISs), artificial neural networks (ANNs), evolutionary computing (EC), and probabilistic reasoning (PR). Each of these technologies provides us with complementary reasoning and searching methods to solve complex, nonlinear and real-world problems. Therefore, the goal of soft computing is to exploit the imprecision and uncertainty in human decision making procedure, and !
achieve simple, reliable, and low-cost solutions, and accordingly, the soft computing techniques have been applied successfully to important fields such as control, signal processing, and system modeling. In this paper, after a brief overview of soft computing components, we will analyze some of their most synergistic combinations. In the second part of the paper, we will focus on the hybrid combinations of fuzzy logic and artificial neural networks, which produce the neuro-fuzzy computing technique, some short reviews of neuro-fuzzy models that have evolved in the past few years are presented and discussed.
Keywords: Fuzzy, neural networks, soft computing, control
EXTENSION of the file: .doc
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