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Intelligent Wind Generator Models for Power Flow Studies in PSS?E and PSS?SINCAL

机译:PSS?E和PSS?SINCAL中用于功率流研究的智能风力发电机模型

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Wind generator (WG) output is a function of wind speed and three-phase terminal voltage. Distribution systems are predominantly unbalanced. A WG model that is purely a function of wind speed is simple to use with unbalanced three-phase power flow analysis but the solution is inaccurate. These errors add up and become pronounced when a single three-phase feeder connects several WGs. Complete nonlinear three-phase WG models are accurate but are slow and unsuitable for power flow applications. This paper proposes artificial neural network (ANN) models to represent type-3 doubly-fed induction generator and type-4 permanent magnet synchronous generator. The proposed approach can be readily applied to any other type of WGs. The main advantages of these ANN models are their mathematical simplicity, high accuracy with unbalanced systems and computational speed. These models were tested with the IEEE 37-bus test system. The results show that the ANN WG models are computationally ten times faster than nonlinear accurate models. In addition, simplicity of the proposed ANN WG models allow easy integration into commercial software packages such as PSS?E and PSS?SINCAL and implementations are also shown in this paper.
机译:风力发电机(WG)的输出是风速和三相端子电压的函数。分配系统主要是不平衡的。 WG模型纯粹是风速的函数,很容易与不平衡的三相潮流分析一起使用,但是解决方案不准确。当单个三相馈线连接多个WG时,这些误差加起来并变得明显。完整的非线性三相WG模型是准确的,但速度慢且不适合潮流应用。本文提出了人工神经网络(ANN)模型来表示3型双馈感应发电机和4型永磁同步发电机。提议的方法可以很容易地应用于任何其他类型的工作组。这些人工神经网络模型的主要优点是它们的数学简单性,不平衡系统的高精度和计算速度。这些模型已通过IEEE 37总线测试系统进行了测试。结果表明,ANN WG模型在计算上比非线性精确模型快十倍。此外,所提议的ANN WG模型的简单性使得可以轻松集成到商业软件包中,例如PSS?E和PSS?SINCAL,并且本文还介绍了实现。

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