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Economic dispatch for power generation using artificial neural network ICPE’07 conference in Daegu, Korea

机译:利用人工神经网络ICPE’07在韩国大邱举行的发电经济调度

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This paper presents an optimal economic dispatch of electrical power plants by using back-propagation neural networks. The method of economic dispatch for generating units at different loads must have total fuel cost at the minimum point. There are many conventional methods that can use to solve economic dispatch problem such as Lagrange multiplier method, Lamda iteration method and Newton-Raphson method. However, an obstacle in optimal economic dispatch of conventional methods is the changed load. They are necessary to find the optimal economic dispatch from time to time. Moreover, they need a lot of time to repeat calculation for a new solution again. This paper presents back-propagation neural networks model to carry out instead the conventional Lamda iteration method. It is compared with the experimental results of electrical power system of 3 and 10 generating units respectively. The testing results of the back-propagation neural networks are compared with the Lamda iteration method by testing the teaching data and non-teaching data. It shows clearly that the back-propagation neural networks can find out the solutions accurately and use time to calculate less than other systems that are tested. Error of prediction will be increased slightly by the number of generating units in electrical power plants because it needs to learn a lot of input and output data in the neural network dramatically.
机译:本文提出了一种使用反向传播神经网络的电厂经济最优调度方法。不同负荷的发电机组的经济调度方法必须使总燃料成本最小。拉格朗日乘数法,拉姆达迭代法和牛顿-拉夫森法等许多可用于解决经济调度问题的常规方法。然而,传统方法的最佳经济调度中的障碍是负载的变化。他们是不时找到最佳经济调度的必要条件。而且,他们需要很多时间才能再次为新的解决方案重复计算。本文提出了反向传播神经网络模型来代替传统的Lamda迭代方法。分别与3台和10台发电机组的电力系统的实验结果进行了比较。通过测试教学数据和非教学数据,将反向传播神经网络的测试结果与Lamda迭代方法进行了比较。它清楚地表明,与其他经过测试的系统相比,反向传播神经网络可以准确地找到解决方案,并且可以节省时间。由于电厂需要大量学习神经网络中的大量输入和输出数据,因此预测误差将因电厂中发电机组的数量而略有增加。

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