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Multiple models and neural networks based decoupling control of ball mill coal-pulverizing systems

机译:基于多模型和神经网络的球磨机粉煤系统解耦控制

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摘要

Using a ball mill coal-pulverizing system as a motivating/application example, a class of complex industrial processes is investigated in this paper, which has strong couplings among loops, high nonlinearities and time-varying dynamics under different operation conditions. Focusing on such processes, an intelligent decoupling control method is developed, where the effects of nonlinearities are dealt with by neural network compensations and coupling effects are handled by specifically designed decoupling compensators, while the effect of time-varying dynamics is treated by a switching mechanism among multiple models. The stability and convergence of the closed-loop system are analyzed. The proposed method has been applied to the ball mill coal-pulverizing systems of 200 MW units in a heat power plant in China. Application results show that the system outputs are maintained in desired scopes, the electric energy consumption per unit coal has been reduced by 10.3%, and the production rate has been increased by 8%.
机译:本文以球磨机制粉系统为动力/应用实例,研究了一类复杂的工业过程,该过程在回路之间具有很强的耦合性,在不同的运行条件下具有很高的非线性和时变动力学。针对这种过程,开发了一种智能的解耦控制方法,其中非线性效应由神经网络补偿处理,耦合效应由专门设计的解耦补偿器处理,而时变动力学的效应则由切换机制处理。在多个模型之间。分析了闭环系统的稳定性和收敛性。该方法已应用于中国某热电厂的200 MW机组球磨煤粉系统。应用结果表明,该系统的输出保持在期望的范围内,每单位煤的电能消耗减少了10.3%,生产率提高了8%。

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