Evolutive ANFIS training for energy load profile forecast for an IEMS in an automated factory
Document typeConference report
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In this paper an evolutive algorithm is used to train an adaptative-network-based fuzzy inference system (ANFIS), particularly a genetic algorithm (GA). The GA is able to train the antecedent and consequent parameters of an ANFIS, which is used for energy load profile forecasting in an automated factory. This load forecasting is useful to support an intelligent energy management system (IEMS), which enables the user to optimize the energy consumptions by means of getting the optimal work points, scheduling the production according to these points, etc. The proposed training algorithm showed excellent results with complex plants like industrial energy consumers in the user-side, where the randomness of the loads is higher than in utility loads. Real data from an automated car factory were used to test the presented algorithms. Appropriated results were obtained.
CitationCardenas, J. [et al.]. Evolutive ANFIS training for energy load profile forecast for an IEMS in an automated factory. A: IEEE International Conference on Emerging Technologies and Factory Automation. "Emerging Technologies & Factory Automation (ETFA), 2011 IEEE 16th Conference on". Toulouse: 2011, p. 1-8.