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Artificial neural network application to economic operation of all thermal power plants

机译:人工神经网络在所有火电厂经济运行中的应用

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Presented in this paper is the application of artificial neural networks (ANN) to the economic operation of all thermal power plants. Training data are obtained, in practice, from a database of power system economic operation. In this paper, the training data are obtained for a simulated example, via running an approximate dispatch program, taking into account the power network transmission losses (B coefficients), as well as the generator limits. The simulated example comprises three thermal units supplying the power to a variable load. The proposed ANN algorithm is tested for two groups of data; while the first group represents about 30% of the whole training data set, the second group is a complete set of new data. Effects of the number of hidden neurons and the type of the selected transfer function on the performance of the neural network are investigated. Simulated results are reported, which form the conclusions presented at the end of the paper.
机译:本文介绍的是人工神经网络(ANN)在所有火力发电厂的经济运行中的应用。训练数据实际上是从电力系统经济运行的数据库中获得的。在本文中,通过运行近似调度程序,并考虑了电网传输损耗(B系数)以及发电机极限,通过模拟示例获得了训练数据。该模拟示例包括三个向可变负载供电的热单元。所提出的人工神经网络算法已针对两组数据进行了测试。第一组约占整个训练数据集的30%,而第二组是新数据的完整集。研究了隐藏神经元的数量和所选传递函数的类型对神经网络性能的影响。报告了模拟结果,形成了本文末尾的结论。

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