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Electricity load and price forecasting with influential factors in a deregulated power industry

机译:电力市场放松管制中的电力负荷和价格预测及其影响因素

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With the emergence of smart power grid and distributed generation technologies in recent years, there is need to introduce new advanced models for forecasting. Electricity load and price forecasts are two primary factors needed in a deregulated power industry. The performances of the demand response programs are likely to be deteriorated in the absence of accurate load and price forecasting. Electricity generation companies, system operators, and consumers are highly reliant on the accuracy of the forecasting models. However, historical prices from the financial market, weekly price/load information, historical loads and day type are some of the explanatory factors that affect the accuracy of the forecasting. In this paper, a neural network (NN) model that considers different influential factors as feedback to the model is presented. This model is implemented with historical data from the ISO New England. It is observed during experiments that price forecasting is more complicated and hence less accurate than the load forecasting.
机译:近年来,随着智能电网和分布式发电技术的出现,有必要引入新的高级预测模型。电力负荷和价格预测是放松管制的电力行业所需的两个主要因素。在缺乏准确的负载和价格预测的情况下,需求响应程序的性能可能会下降。发电公司,系统运营商和消费者高度依赖于预测模型的准确性。但是,来自金融市场的历史价格,每周价格/负荷信息,历史负荷和日期类型是影响预测准确性的一些解释性因素。本文提出了一种神经网络(NN)模型,该模型考虑了不同的影响因素作为对该模型的反馈。该模型是使用来自ISO新英格兰的历史数据来实现的。在实验期间观察到,价格预测比负荷预测更为复杂,因此准确性较差。

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