Because fuzzy sets exist deficiency on semantic description
much of the current research interest in neuro-fuzzy hybrid systems is focused on how to extend fuzzy neural networks. To deal with this problem
a self-organizing intuitionistic fuzzy networks based on UKF is presented. Firstly
structure of intuitionistic fuzzy networks and meanings of each layer is proposed. Secondly
training algorithm is deduced
and LLS and UKF are used to learn linear and non-linear parameters respectively. Thirdly
guideline of how to generate a new rule is given
and method of error descending rate is used as fuzzy rule pruning strategy
so that rule which plays an unimportant role in the system is deleted. At last
typical experiments of function approximation
system identification and prediction of time-series indicate that a fuzzy network obtained by the proposed algorithm has a more tighten structure and better generalization than other algorithms.