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Parameter optimization and speed control of switched reluctance motor based on evolutionary computation methods

机译:基于进化计算方法的开关磁阻电动机参数优化和速度控制

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摘要

Because of the double-salient structure and switching mode of switched reluctance motor (SRM), it is very difficult to acquire the analytical model for the SRM. The current-sharing method (CSM) is an effective inner-current loop designing strategy, which makes the high performance control of the SRM become possible without application of its mathematical model. However, there are six control parameters that need to be tuned in the CSM. If the PID controller is adopted in the speed loop, there will exist nine parameters that need to be tuned in the speed control of the SRM. It is a challenge work to tune nine parameters with manual trial-and-error method. To alleviate the difficulties of the parameter tuning for the SRM control, three types of evolutionary computation methods are applied in the parameter optimization of the SRM, which include differential evolution (DE) algorithm, Big Bang-Big Crunch (BBBC) algorithm and particle swarm optimization (PSO). The comparison of the optimization performance among the proposed evolutionary computation methods are demonstrated with Matlab simulation. Simulation results certify the feasibility and effectiveness of the proposed methods in the parameter optimization and speed control of the SRM.
机译:由于开关磁阻电动机(SRM)的双重突出结构和切换模式,因此很难获取SRM的分析模型。当前共享方法(CSM)是一种有效的内部电流环形设计策略,这使得SRM的高性能控制成为可能而不应用其数学模型。但是,有六个需要在CSM中调整的控制参数。如果在速度循环中采用PID控制器,则将存在九个参数,需要在SRM的速度控制中调整。用手动试验和错误方法调整九个参数是一项挑战工作。为了减轻SRM控制参数调整的困难,在SRM的参数优化中应用了三种类型的进化计算方法,包括差分演进(DE)算法,大爆炸(BBBC)算法和粒子群优化(PSO)。利用MATLAB仿真证明了所提出的进化计算方法中的优化性能的比较。仿真结果证明了所提出的方法在SRM的参数优化和速度控制中的可行性和有效性。

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