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Measurement-based modelling of composite load using genetic algorithm

机译:基于遗传算法的复合载荷基于测量的建模

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One of the major issues in simulation and control of power system dynamics is load modelling. More accurate load models in power system stability analysis increases the accuracy of simulation results. If inappropriate model is used for the load, the obtained results may contain a high degree of error. In majority of analysis, the loads are usually considered as a constant impedance element. Whereas, such a model is not only accountable for the stability analysis of power system but also may sometimes lead to opposite results. Due to the variation of the load and also the variation of the composition of the load components, it would be difficult to provide a fixed model for electrical loads similar to those of other elements of the power system. A method for modelling the power system loads via genetic algorithm is presented in this paper. This methodology is performed based on the composite load model. In order to get an accurate load model, several scenarios are considered. The particular method of this paper is that after obtaining the load model parameters corresponding to each of the scenarios, various values obtained for the parameters are averaged. Finally, the validity of the obtained parameters is testified with some other scenarios. The results reported in this paper indicate that the existing load models satisfactorily describe the actual behaviour of the physical load and can be reliably estimated using the identification techniques presented herein. (C) 2018 Elsevier B.V. All rights reserved.
机译:电力系统动力学仿真和控制中的主要问题之一是负载建模。电力系统稳定性分析中更准确的负载模型可以提高仿真结果的准确性。如果对负载使用了不合适的模型,则获得的结果可能会包含很高的误差。在大多数分析中,负载通常被视为恒定阻抗元件。然而,这种模型不仅负责电力系统的稳定性分析,而且有时可能会导致相反的结果。由于负载的变化以及负载组件的组成的变化,将难以为电气负载提供类似于电力系统其他元件的固定模型。提出了一种基于遗传算法的电力系统负荷建模方法。该方法基于复合载荷模型执行。为了获得准确的负载模型,考虑了几种情况。本文的特定方法是,在获得与每种情况相对应的负载模型参数后,对获得的参数值进行平均。最后,通过其他一些场景证明了所获得参数的有效性。本文报告的结果表明,现有的负载模型可以令人满意地描述物理负载的实际行为,并且可以使用此处介绍的识别技术可靠地进行估算。 (C)2018 Elsevier B.V.保留所有权利。

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