Induction motor Parameter Estimation using Hybrid Genetic Algorithm

K. Sundareswaran, H. N. Shyam, S. Palani, Joby James
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引用次数: 11

Abstract

The main objective of this work is to develop a cost effective off-line method for determination of induction motor equivalent circuit parameters by conducting a single load test on the motor. The proposed scheme is an alternative viable method to conventional means of no-load and blocked rotor tests. The identification of motor parameters is redrafted as a multi-objective optimization problem and solution is sought through conventional optimization method as well as genetic algorithm (GA). The conventional method employed is the well known Rosenbrock's (RB) rotating coordinates method. When the results of the two methods are analyzed, it is observed that while GA offers near optimal solution to the problem, the method of RB always results in global optima, provided initial values are chosen judiciously. Hence, it is proposed to combine these two methods to gain the advantages of both the methods. In such a hybrid optimization method, the task of global search is carried out by GA, while Rosenbrock's method is devoted to local search. Comparison of these two techniques are discussed and presented in conjunction with computed and practical results. It is shown that combination of GA with conventional method yields improved results.
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基于混合遗传算法的感应电机参数估计
这项工作的主要目的是通过对电机进行单负载测试,开发一种具有成本效益的离线方法来确定感应电机等效电路参数。该方案是一种替代传统的空载和堵转试验方法的可行方法。将电机参数辨识重新定义为一个多目标优化问题,并结合传统的优化方法和遗传算法进行求解。采用的传统方法是众所周知的罗森布罗克(RB)旋转坐标法。当分析两种方法的结果时,可以观察到遗传算法提供了问题的接近最优解,而RB方法总是得到全局最优解,只要初始值的选择是明智的。因此,建议将这两种方法结合起来,以获得两种方法的优点。在这种混合优化方法中,全局搜索任务由遗传算法完成,而Rosenbrock方法致力于局部搜索。结合计算结果和实际应用结果,对这两种技术进行了比较。结果表明,将遗传算法与传统方法相结合,可以得到更好的结果。
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