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Measurement-based Load Modeling using Genetic Algorithms

机译:基于测量的使用遗传算法载荷建模

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Load modeling is very important to power system operation and control. Measurement-based load modeling has been widely practiced in recent years. Mathematically, measurement-based load modeling problem are closely related to the parameter identification area. Consequently, an efficient optimization method is needed to derive the load model parameters based on the feedback of estimation errors between the measurements and model outputs. This paper reports our work on applying genetic algorithms on measurement-based load modeling research. Due to its robustness to the initial guesses on the load model parameters, genetic algorithms are very suitable for load model parameter identification. Two cases including both the real measurement in a power station and the digital simulation are studied in the paper. For comparison purpose, the classical nonlinear least square estimation method is also applied to find the load model parameters. The simulated outputs from the load model confirm the efficiency of genetic algorithms in measurement-based load modeling analysis. Future work will focus on fastening the converging speed of the genetic algorithms, and/or utilizing more efficient evolutionary computation methods.
机译:负载建模对于电源系统操作和控制非常重要。近年来,基于测量的载荷建模已被广泛实施。在数学上,基于测量的负载建模问题与参数识别区域密切相关。因此,需要一种有效的优化方法来基于测量和模型输出之间的估计误差的反馈来导出负载模型参数。本文报告了我们对基于测量的载荷建模研究应用遗传算法的工作。由于其对负载模型参数上的初始猜测的鲁棒性,遗传算法非常适合加载模型参数识别。在纸上研究了两个案例,包括电站中的实际测量和数字仿真。为了比较目的,还应用经典非线性最小平方估计方法来找到负载模型参数。来自负载模型的模拟输出证实了基于测量的载荷建模分析中遗传算法的效率。未来的工作将专注于紧固遗传算法的融合速度,以及/或利用更有效的进化计算方法。

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