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Transmission loss allocation in power systems using artificial neural network

机译:使用人工神经网络电力系统中的传输损耗分配

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Cost allocation and determining the part of the operators in a power system from the total costs are among the most important issues appeared along with the restructuring in the power industry. One of these imposed costs in the utilization domain is the cost of the power losses which should be fairly distributed between the participants in the electric power market. In this paper, using the load flow calculations, the part of each bus in the power losses is determined by the Z-Bus method. These results are compared with those obtained from the load flow calculations using the artificial neural network. It is shown that the artificial neural network is an efficient tool for power loss allocation in the large and complicated power systems which may have a nonlinear nature. The proposed method is then applied to two test bench systems, the IEEE 5-bus and 30-bus test benches, and the results from two approaches are compared and the differences in term of error are reported. A real case study including a 400kV transmission system is also studied and the annual peak-load power loss allocation assuming the peak hour in a month is determined and the related errors are computed.
机译:成本分配和确定从总成本的电力系统中的操作员的一部分是在电力行业的重组中出现的最重要问题之一。利用领域的这些施加成本之一是功率损耗的成本,应在电力市场的参与者之间公积分布。在本文中,使用负载流量计算,通过Z-BUS方法确定每个总线中的每个总线的一部分。将这些结果与使用人工神经网络从负载流量计算获得的结果进行比较。结果表明,人工神经网络是可以具有非线性性质的大型和复杂电力系统中的功率损耗分配的有效工具。然后将所提出的方法应用于两个测试台系统,IEEE 5总线和30总线测试台,并比较了来自两种方法的结果,并且报告了错误术语的差异。还研究了包括400kV传输系统的真实案例研究,并确定了在一个月内峰值小时的年峰值负载功率丢失分配,并且计算相关错误。

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