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Applying artificial optimization methods for transformer model reduction of lumped parameter models

机译:人工优化方法在集总参数模型变压器模型约简中的应用

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摘要

Detailed R-C-L-M models of power transformers, which are based on lumped parameters, are used extensively not only for transient analysis of power transformers to determine electrical stresses in windings, but also for studying transients in power systems. Models with few elements are generally more practicable for power system studies but at the expense of accuracy. The use of artificial methods to reduce an R-C-L-M model is the main contribution of this paper. Advantages of the suggested method include: (1) a reduced loss of accuracy compared with the original model and (2) the flexibility to choose the number of model elements to achieve the desired model depending on size and accuracy. The ability of three different artificial methods, genetic algorithm, particle swarm optimization, and bacterial foraging algorithm, to model reduction is evaluated using measurements on an actual 400 kV test object and the results are compared with those obtained by common analytical formulae.
机译:基于集总参数的详细的电力变压器R-C-L-M模型不仅广泛用于电力变压器的瞬态分析以确定绕组中的电应力,还广泛用于研究电力系统的瞬态。具有较少元素的模型通常对于电力系统研究更可行,但要以准确性为代价。使用人工方法来简化R-C-L-M模型是本文的主要贡献。所建议的方法的优点包括:(1)与原始模型相比,准确性降低了;(2)根据大小和准确性选择模型元素数量以实现所需模型的灵活性。通过在实际的400 kV测试对象上进行测量,评估了三种不同的人工方法(遗传算法,粒子群优化和细菌觅食算法)对模型进行还原的能力,并将结果与​​常用解析公式进行了比较。

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