Stability Theory for Direct Neural Network/Fuzzy System Controllers
نویسنده
چکیده
Neural networks and fuzzy systems have been the subject of much interest in recent years for the control of nonlinear processes. Much research has been directed at indirect control schemes where, basically, the neural network or fuzzy system has been used to identify the process, and a controller has been synthesised from this model. An alternative approach is that of direct control where the neural network or fuzzy system is the controller and no model of the process is built on line.
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