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A hybrid forecasting system based on a dual decomposition strategy and multi-objective optimization for electricity price forecasting

机译:基于双重分解策略和多目标优化的混合电价预测系统

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Electricity price forecasting plays a crucial role in balancing electricity generation and consumption, which is of great political and economic significance for all of society but is still a challenging task. However, in previous studies, most researchers have focused on improving either forecasting accuracy or stability while ignoring the significance of performing these tasks simultaneously. More importantly, few researchers have deeply studied the data preprocessing strategy, only focusing on the application of individual decomposition approaches. Therefore, a novel hybrid forecasting system based on a dual decomposition strategy and multi-objective optimization is developed for electricity price forecasting that includes four modules: a data preprocessing module, optimization module, forecasting module and evaluation module. In this system, an effective multi-objective optimization algorithm is employed to guarantee simultaneous improvements in accuracy and stability. In addition, an improved data preprocessing approach named the dual decomposition strategy is developed, which successfully overcomes the potential drawback of the individual decomposition approach and further improves the effectiveness of the developed forecasting system. Moreover, the evaluation module is incorporated to verify the superiority of the developed forecasting system. Case studies utilizing half-hourly electricity price data collected from New South Wales, Australia are employed as examples. The results prove the superiority of the multi-objective optimization algorithm and the developed dual decomposition strategy and reveal that the developed forecasting system outperforms all of the considered comparison models, which shows its better ability to forecast future electricity prices with better accuracy and stability.
机译:电价预测在平衡发电量和消耗量中起着至关重要的作用,这对整个社会具有重要的政治和经济意义,但仍然是一项艰巨的任务。但是,在以前的研究中,大多数研究人员都专注于提高预测的准确性或稳定性,而忽略了同时执行这些任务的重要性。更重要的是,很少有研究者对数据预处理策略进行深入研究,而只关注单个分解方法的应用。因此,开发了一种基于双重分解策略和多目标优化的新型混合电价预测系统,该系统包括四个模块:数据预处理模块,优化模块,预测模块和评估模块。在该系统中,采用了有效的多目标优化算法来保证准确性和稳定性的同时提高。此外,开发了一种改进的数据预处理方法,称为双重分解策略,该方法成功地克服了单个分解方法的潜在缺点,并进一步提高了开发的预测系统的有效性。此外,还集成了评估模块以验证所开发的预测系统的优越性。以利用从澳大利亚新南威尔士州收集的半小时电价数据为例的案例研究。结果证明了多目标优化算法和已开发的对偶分解策略的优越性,并表明已开发的预测系统优于所有已考虑的比较模型,这表明它具有更好的以更好的准确性和稳定性来预测未来电价的能力。

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