A neurofuzzy network structure for modelling and state estimation of unknown nonlinear systems
نویسندگان
چکیده
A Fuzzy logic system has been shown to be able to arbitrarily approximate any nonlinear function and has been successfully applied to system modelling. The functional rule fuzzy system enables the input-output relation of the fuzzy logic system to be analysed. B-spline basis functions have many desirable numerical properties and as such can be used as membership functions of fuzzy system. This paper analyses the input-output relation of a fuzzy system with a functional rule base and B-spline basis functions as membership functions; constructing a neurofuzzy network for systems representation in which the training algorithm for this network structure is very simple since the network is linear in the weights. It is also desired to merge the neural network identi cation technique and the Kalman lter to achieve optimal adaptive ltering and prediction for unknown but observable nonlinear processes. In this paper, the derived neurofuzzy network is applied to state estimation in which the system model identi ed is converted to its equivalent state-space representation with which a Kalman lter is applied to perform state estimation. Two approaches that combine the neurofuzzy modelling and the Kalman lter algorithm, the indirect method and direct method, are presented. A simulated example is also given to illustrate the approaches based on real data.
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ورودعنوان ژورنال:
- Int. J. Systems Science
دوره 28 شماره
صفحات -
تاریخ انتشار 1997