Adaptation of Fuzzy Inferencing: A Survey
نویسندگان
چکیده
Fuzzy inference has numerous applications, ranging from control to forecasting. A number of researchers have suggested how such systems can be tuned during application to enhance inference performance. Inference parameters that can be tuned include the central tendency and dispersion of the input and output fuzzy membership functions, the rule base, the cardinality of the fuzzy membership function sets, the shapes of the membership functions and the parameters of the fuzzy AND and OR operations. In this paper, an overview of these tuning procedures is given. An extensive bibliography is provided of recent literature on
منابع مشابه
Intelligent control using a neuro-fuzzy network
Intelligent control techniques have emerged to overcome some deeciencies in conventional control methods in dealing with complex real-world systems. These problems include knowledge adaptation, learning, and expert knowledge incorporation. In this paper, a hybrid network that combines fuzzy inferencing and neu-ral networks is used to model and to control complex dynamic systems. The network tak...
متن کاملInference via Fuzzy Belief Networks
The power of belief networks lies in its connective edges where the influences are bidirectional. While Bayesian methods capture bidirectional influences, we propose a simpler and faster method of inferencing from nodal observations that uses bidirectional fuzzy influences that are propagated via fuzzy set membership functions. We need neither the conditional probability tables nor constraining...
متن کاملA decision-theoretic approach to fuzzy behavior coordination
In this paper, we propose a novel approach to behavior-based control, which combines fuzzy logic with multiple objective decision theory. Fuzzy logic provides powerful tools for formulating sophisticated behavior-based systems for robot control. However, it suuers from problems associated with resolving be-havioral connicts, which are mainly due to the de-ciencies of fuzzy inferencing technique...
متن کاملRule reduction for efficient inferencing in similarity based reasoning
The two most important models of inferencing in approximate reasoning with fuzzy sets are Zadeh’s Compositional Rule of Inference (CRI) and Similarity Based Reasoning (SBR). It is known that inferencing in the above models is resource consuming (both memory and time), since these schemes often consist of discretisation of the input and output spaces followed by computations in each point. Also ...
متن کاملTraining Artificial Neural Networks for Fuzzy Logic
P roblems requiring inferencing with Boolean logic have been implemented in percept rons or feedforward networks, and some attempts have been made to implement fuzzy logic based inferencing in similar networks. In this pap er, we present producti ve networks , which are art ificial neur al networks, meant for fuzzy logic based inferencing. The nod es in t hese networks collect an offset product...
متن کامل