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Most existing algorithms for identifying multi-model system are based on minimizing the square of bias between global outputs of the actual system and the identified model,but the resultant model lacks of robustness.In order to solve this problem,this paper considers some other algorithms in which local models are identified independently and presents a multi-model identifica- tion algorithm based on weighted cost function,which uses the idea of local weighted regression and local approximation while keeps the model structure of global identification algorithm.The result of application to a 300MW unit boiler superheater illustrates that the multi-model generated by the proposed algorithm has better trade-off between global fitting and local interpretation.
Most existing algorithms for identifying multi-model systems are based on minimizing the square of bias between global outputs of the actual system and the identified model, but the resulting model lacks of robustness. In order to solve this problem, this paper considers some other algorithms in which local models are identified independently and presents a multi-model identifica- tion algorithm based on weighted cost function, which uses the idea of local weighted regression and local approximation while keeps the model structure of global identification algorithm. result of application to a 300MW unit boiler superheater that that multi-model generated by the proposed algorithm has better trade-off between global fitting and local interpretation.