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A state of the art review on the prediction of building energy consumption using data-driven technique and evolutionary algorithms

机译:使用数据驱动技术和进化算法预测建筑能耗的最新技术回顾

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摘要

Energy consumption forecasting for buildings plays a significant role in building energy management, conservation and fault diagnosis. Owing to the ease of use and adaptability of optimal solution seeking, data-driven techniques have proved to be accurate and efficient tools in recent years. This study provides a comprehensive review on the existing data-driven approaches for building energy forecasting, such as regression models, artificial neural networks, support vector machines, fuzzy models, grey models, etc. On this basis, the paper puts emphasis to the discussion on evolutionary algorithms hybridized models that combine evolutionary algorithms with regular data-driven models to improve prediction accuracy and robustness. Various combinations of such hybrid models are classified and their characteristics are analyzed. Finally, a detailed discussion on the advantages and challenges of current predictive models is provided.
机译:建筑物的能耗预测在建筑物的能量管理,节约和故障诊断中起着重要作用。由于易于使用和最佳解决方案的适应性,近年来,数据驱动技术已被证明是准确有效的工具。这项研究对现有的建筑能耗预测的数据驱动方法进行了全面回顾,例如回归模型,人工神经网络,支持向量机,模糊模型,灰色模型等。在此基础上,本文着重讨论进化算法的混合模型将进化算法与常规数据驱动模型结合在一起,以提高预测准确性和鲁棒性。对这种混合模型的各种组合进行分类,并分析其特性。最后,详细讨论了当前预测模型的优势和挑战。

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