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Combined wavelet-based networks and game-theoretical decision approach for real-time power dispatch

机译:结合小波网络和博弈论的实时电力调度决策方法

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This paper proposes a novel approach combining wavelet-based networks and game-theoretical decision approach to reach the terms real-time power dispatch and the best compromise solution. The goals considered are both fuel cost and environment impact of NOx emission. The wavelet-based networks, evolved by an evolutionary computing algorithm, are composed of 3-layer structures, which contain the wavelet, weighting, and summing nodes. The parameters of translation and dilation in the wavelet nodes and the weighting factors in the weighting nodes are tuned to make the computed outputs fit the historical data. Once the networks are trained properly, the desired outputs can be produced as soon as the inputs are given. Based on the set of noninferior solutions for a certain load level, a game-theoretical approach is relied on to provide operators the best compromise solution. The effectiveness of the proposed approach has been demonstrated by the IEEE 30-bus 6-generator test system. Comparisons of learning performances are made to the existing artificial neural networks (ANNs) method.
机译:本文提出了一种新颖的方法,将基于小波的网络和博弈论的决策方法相结合,以达到实时电力分配和最佳折衷解决方案的要求。所考虑的目标是燃料成本和NOx排放对环境的影响。通过进化计算算法进化的基于小波的网络由3层结构组成,其中包含小波,加权和求和节点。调整小波节点中平移和膨胀的参数以及加权节点中的加权因子,以使计算出的输出适合历史数据。一旦对网络进行了正确的培训,就可以在给出输入后立即产生所需的输出。基于针对一定负载水平的一组非劣等解决方案,依靠博弈论方法为运营商提供最佳折衷解决方案。 IEEE 30总线6发电机测试系统已经证明了该方法的有效性。将学习性能与现有的人工神经网络(ANN)方法进行比较。

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