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Electricity Price and Demand Forecasting in Smart Grids

机译:智能电网的电价和需求预测

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摘要

In future smart grids, consumers of electricity will be enabled to react to electricity prices. The aggregate reaction of consumers can potentially shift the demand curve in the market, resulting in prices that may differ from the initial forecasts. In this paper, a hybrid forecasting framework is proposed that takes such dynamics into account when forecasting electricity price and demand. The proposed framework combines a multi-input multi-output (MIMO) forecasting engine for joint price and demand prediction with data association mining (DAM) algorithms. In this framework, a DAM-based rule extraction mechanism is used to determine and extract the patterns in consumers' reaction to price forecasts. The extracted rules are then employed to fine-tune the initially generated demand and price forecasts of a MIMO engine. Simulation results are presented using Australia's and New England's electricity market data.
机译:在未来的智能电网中,电力消费者将能够对电价做出反应。消费者的总体反应可能会改变市场的需求曲线,从而导致价格可能与最初的预测有所不同。在本文中,提出了一种混合预测框架,该框架在预测电价和需求时会考虑这种动态。所提出的框架结合了用于联合价格和需求预测的多输入多输出(MIMO)预测引擎以及数据关联挖掘(DAM)算法。在此框架中,基于DAM的规则提取机制用于确定和提取消费者对价格预测的反应模式。然后,将提取的规则用于微调MIMO引擎最初生成的需求和价格预测。仿真结果是使用澳大利亚和新英格兰的电力市场数据给出的。

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