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Forecasting short-term electricity consumption using a semantics-based genetic programming framework: The South Italy case

机译:使用基于语义的遗传编程框架预测短期用电量:南意大利案例

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摘要

Accurate and robust short-term load forecasting plays a significant role in electric power operations. This paper proposes a variant of genetic programming, improved by incorporating semantic awareness in algorithm, to address a short term load forecasting problem. The objective is to automatically generate models that could effectively and reliably predict energy consumption. The presented results, obtained considering a particularly interesting case of the South Italy area, show that the proposed approach outperforms state of the art methods. Hence, the proposed approach reveals appropriate for the problem of forecasting electricity consumption. This study, besides providing an important contribution to the energy load forecasting, confirms the suitability of genetic programming improved with semantic methods in addressing complex real-life applications.
机译:准确而强大的短期负荷预测在电力运营中发挥着重要作用。本文提出了一种遗传规划的变体,通过将语义意识纳入算法中进行了改进,以解决短期负荷预测问题。目的是自动生成可以有效,可靠地预测能耗的模型。考虑到意大利南部地区一个特别有趣的案例而获得的结果表明,所提出的方法优于现有方法。因此,所提出的方法揭示了适合于预测电力消耗的问题。这项研究除了对能源负荷预测做出重要贡献外,还证实了通过语义方法改进的遗传程序在解决复杂现实应用中的适用性。

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