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首页> 外文期刊>IEE proceedings. Part C, Generation, Transmission, and Distribution >Locational marginal price forecasting in deregulated electricity markets using artificial intelligence
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Locational marginal price forecasting in deregulated electricity markets using artificial intelligence

机译:放松管制的电力市场中使用人工智能的位置边际电价预测

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摘要

Bidding competition is one of the main transaction approaches in deregulated electricity markets. Locational marginal prices (LMPs) resulting from bidding competition represent electricity values at nodes or in areas. A method using both neural networks (NNs) and fuzzy-c-means (FCM) is presented for forecasting LMPs. The recurrent neural network (RNN) was addressed and the traditional NN-based on a backpropagation algorithm was also investigated for comparison. The FCM helped classify the load levels into three clusters. Individual RNNs according to three load clusters were developed for forecasting LMPs. These RNNs were trained/ validated and tested with historical data from the PJM (Pennsylvania, New Jersey, and Maryland) power system. It was found that the proposed neural networks were capable of forecasting LMP values efficiently.
机译:竞价竞争是放松管制的电力市场中的主要交易方式之一。竞标竞争产生的位置边际电价(LMP)表示节点或区域的电价。提出了一种同时使用神经网络(NNs)和模糊c均值(FCM)预测LMP的方法。解决了递归神经网络(RNN),并研究了基于反向传播算法的传统NN以进行比较。 FCM帮助将负载级别分为三个类别。根据三个负荷群开发了单独的RNN,用于预测LMP。这些RNN使用PJM(宾夕法尼亚州,新泽西州和马里兰州)电力系统的历史数据进行了培训/验证和测试。发现所提出的神经网络能够有效地预测LMP值。

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