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Nonlinear rescaling of control values simplifies fuzzy controlTraditional control theory is well-developed mainly for linear control situations. In non-linear cases there is no general method of generating a good control, so we have to rely on the ability of the experts (operators) to control them. If we want to automate their control, we must acquire their knowledge and translate it into a precise control strategy. The experts' knowledge is usually represented in non-numeric terms, namely, in terms of uncertain statements of the type 'if the obstacle is straight ahead, the distance to it is small, and the velocity of the car is medium, press the brakes hard'. Fuzzy control is a methodology that translates such statements into precise formulas for control. The necessary first step of this strategy consists of assigning membership functions to all the terms that the expert uses in his rules (in our sample phrase these words are 'small', 'medium', and 'hard'). The appropriate choice of a membership function can drastically improve the quality of a fuzzy control. In the simplest cases, we can take the functions whose domains have equally spaced endpoints. Because of that, many software packages for fuzzy control are based on this choice of membership functions. This choice is not very efficient in more complicated cases. Therefore, methods have been developed that use neural networks or generic algorithms to 'tune' membership functions. But this tuning takes lots of time (for example, several thousands iterations are typical for neural networks). In some cases there are evident physical reasons why equally space domains do not work: e.g., if the control variable u is always positive (i.e., if we control temperature in a reactor), then negative values (that are generated by equal spacing) simply make no sense. In this case it sounds reasonable to choose another scale u' = f(u) to represent u, so that equal spacing will work fine for u'. In the present paper we formulate the problem of finding the best rescaling function, solve this problem, and show (on a real-life example) that after an optimal rescaling, the un-tuned fuzzy control can be as good as the best state-of-art traditional non-linear controls.
Document ID
19930013184
Acquisition Source
Legacy CDMS
Document Type
Conference Paper
Authors
Vanlangingham, H.
(Virginia Polytechnic Inst. and State Univ. Blacksburg, VA, United States)
Tsoukkas, A.
(Virginia Polytechnic Inst. and State Univ. Blacksburg, VA, United States)
Kreinovich, V.
(Texas Univ. El Paso., United States)
Quintana, C.
(Texas Univ. El Paso., United States)
Date Acquired
September 6, 2013
Publication Date
January 1, 1993
Publication Information
Publication: NASA. Johnson Space Center, Proceedings of the Third International Workshop on Neural Networks and Fuzzy Logic, Volume 1
Subject Category
Cybernetics
Accession Number
93N22373
Funding Number(s)
CONTRACT_GRANT: NSF CDA-90-15006
CONTRACT_GRANT: N00014-89-J-3123
CONTRACT_GRANT: NAG9-482
Distribution Limits
Public
Copyright
Work of the US Gov. Public Use Permitted.
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