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Energy Consumption Forecasting Using Semantic-Based Genetic Programming with Local Search Optimizer

机译:利用当地搜索优化器使用基于语义的遗传编程的能耗预测

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摘要

Energy consumption forecasting (ECF) is an important policy issue in today’s economies. An accurate ECF has great benefits for electric utilities and both negative and positive errors lead to increased operating costs. The paper proposes a semantic based genetic programming framework to address the ECF problem. In particular, we propose a system that finds (quasi-)perfect solutions with high probability and that generates models able to produce near optimal predictions also on unseen data. The framework blends a recently developed version of genetic programming that integrates semantic genetic operators with a local search method. The main idea in combining semantic genetic programming and a local searcher is to couple the exploration ability of the former with the exploitation ability of the latter. Experimental results confirm the suitability of the proposed method in predicting the energy consumption. In particular, the system produces a lower error with respect to the existing state-of-the art techniques used on the same dataset. More importantly, this case study has shown that including a local searcher in the geometric semantic genetic programming system can speed up the search process and can result in fitter models that are able to produce an accurate forecasting also on unseen data.
机译:能源消耗预测(ECF)是当今经济体的重要政策问题。精确的ECF对电力公用事业有很大的好处,负面和正误差均导致运营成本增加。本文提出了一种基于语义的基因编程框架来解决ECF问题。特别是,我们提出了一个系统发现(准)具有高概率的完美解决方案,并且还可以在未操作数据上产生能够在近最佳预测的模型。该框架融合了最近开发的遗传编程版本,将语义遗传运算符与本地搜索方法集成在一起。结合语义遗传编程和本地搜索者的主要思想是将前者的探索能力与后者的开发能力耦合。实验结果证实了提出的方法在预测能源消耗方面的适用性。特别地,该系统关于在同一数据集上使用的现有最先进技术产生较低的误差。更重要的是,这种情况研究表明,包括几何语义遗传编程系统中的本地搜索者可以加速搜索过程,并且可以导致能够在未经看不见的数据上产生准确的预测的钳工模型。

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