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Application and research for electricity price forecasting system based on multi-objective optimization and sub-models selection strategy

机译:基于多目标优化和子模型选择策略的电力价格预测系统的应用与研究

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摘要

In general, electricity prices reflect the cost to build, finance, maintain, and operate power plants and the electricity grid. Therefore, the cost-optimized scheduling of industrial loads with accurate price forecasts is very important. As such, recent studies have attempted to combine models to forecast electricity prices more accurately. Earlier combined models have tended to ignore the selection of sub-models and data analyses, leading to poor forecasting performance. In order to select the best forecasting models in a combined model, we propose a hybrid electricity price forecasting system that includes a data analysis module, a sub-model selection strategy module, optimized forecasting processing, and a model evaluation module. As such, the hybrid system fully exploits the advantages of a single model, thus improving the forecasting performance of the combined model. The experimental results show that the proposed system selects optimal sub-models effectively and successfully identifies future trend changes in the electricity price. Thus, the system can be an effective tool in the planning and implementation of smart grids.
机译:一般而言,电价反映了建设,金融,维护和运营发电厂和电网的成本。因此,具有准确价格预测的工业负荷的成本优化调度非常重要。因此,最近的研究已经尝试将模型结合以更准确地预测电价。早期的组合模型往往忽略了子模型和数据分析的选择,导致预测性能差。为了在组合模型中选择最佳预测模型,我们提出了一种混合电价预测系统,包括数据分析模块,子模型选择策略模块,优化的预测处理和模型评估模块。因此,混合系统充分利用了单一模型的优点,从而提高了组合模型的预测性能。实验结果表明,所提出的系统有效地选择最佳子模型,并成功地识别电价的未来趋势变化。因此,系统可以是智能电网的规划和实现中的有效工具。

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