Proceedings of 2012 IEEE 17th International Conference on Emerging Technologies &Amp; Factory Automation (ETFA 2012) 2012
DOI: 10.1109/etfa.2012.6489626
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STLF in the user-side for an iEMS based on evolutionary training of Adaptive Networks

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Cited by 8 publications
(7 citation statements)
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“…This method fuses the parametric adaptability of ANN, and the generalization capabilities of the fuzzy logic. ANFIS based prognostic systems offers a very reliable and robust condition predictor, since it can capture the system dynamic behavior quickly and accurately [17][18][19][20].…”
Section: B Adaptive Network Based Fuzzy Inference Systemmentioning
confidence: 99%
“…This method fuses the parametric adaptability of ANN, and the generalization capabilities of the fuzzy logic. ANFIS based prognostic systems offers a very reliable and robust condition predictor, since it can capture the system dynamic behavior quickly and accurately [17][18][19][20].…”
Section: B Adaptive Network Based Fuzzy Inference Systemmentioning
confidence: 99%
“…This method fuses the parametric adaptability of ANN, and the generalization capabilities of the fuzzy logic. ANFIS based prognostic systems offers a very reliable and robust condition predictor, since it can capture the system dynamic behavior quickly and accurately [12,13].…”
Section: Adaptive Network Based Fuzzy Inference Systemmentioning
confidence: 99%
“…An adaptive network that forecasts electrical consumptions on a manufacturing plant is shown in [3] as a part of an iEMS. An iEMS that monitors and adjusts energy supply and demand in real-time, in order to form the best combination, was implemented in [4], with the ability to predict the electric power demand based on historical data.…”
Section: Introductionmentioning
confidence: 99%