Hybrid Intelligent Control Model Based on Electromagnetic Bionics and Fuzzy Algorithm

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An intelligent control model, called fuzzy self-organization model, is proposed based on the requirements of electromagnetic bionics system design principle and fuzzy algorithm. What the intelligent control model is and how it can be used in projects and the validation are elaborated. An intelligent control system - a heating system as selected, is developed according to the proposed model, in which the intelligent control model is constructed and coded into a DSP chip to organize the heating circuits/branches and control the heating procedure. The test results of the system show that the model can be carried out successfully, and the heating procedure is optimized by the settings of accurate heating temperature and the heating speed.

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1020-1027

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February 2014

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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