Based on Extreme Dynamic Optimization of Mill Load Optimization Algorithm

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Abstract:

Grinding mill power consumption is one of the largest operations, grinding process of economic indicators for the beneficiation great influence. Grinding system has a complex mechanism, strong coupling, the process, many factors, nonlinear, large delay and time-varying characteristics, so the effect of conventional control methods are not ideal. In this paper, the dynamic optimization using extreme optimization algorithm, to achieve reasonable control of the mill load, the mill operating at optimum load point, thereby improving mill efficiency, improve mill output.

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1279-1282

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January 2014

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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