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An optimal power-dispatching system using neural networks for the electrochemical process of zinc depending on varying prices of electricity

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4 Author(s)
Chunhua Yang ; Dept. of Electr. Eng., Katholieke Univ., Leuven, Belgium ; G. Deconinck ; Weihua Gui ; Yonggang Li

Depending on varying prices of electricity, an optimal power-dispatching system (OPDS) is developed to minimize the cost of power consumption in the electrochemical process of zinc (EPZ). Due to the complexity of the EPZ, the main factors influencing the power consumption are determined by qualitative analysis, and a series of conditional experiments is conducted to acquire sufficient data, then two backpropagation neural networks are used to describe these relationships quantitatively. An equivalent Hopfield neural network is constructed to solve the optimization problem where a penalty function is introduced into the network energy function so as to meet the equality constraints, and inequality constraints are removed by alteration of the Sigmoid function. This OPDS was put into service in a smeltery in 1998. The cost of power consumption has decreased significantly, the total electrical energy consumption is reduced, and it is also beneficial to balancing the load of the power grid. The actual results show the effectiveness of the OPDS. This paper introduces a successful industrial application and mainly presents how to utilize neural networks to solve particular problems for the real world

Published in:

IEEE Transactions on Neural Networks  (Volume:13 ,  Issue: 1 )