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A novel optimization method combining metaheuristics and machine learning for daily optimal operations in building energy and storage systems

机译:一种新的优化方法,结合了型术和机器学习在建筑能量和存储系统中的日常优化操作

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摘要

In recent years, research on operational optimization of buildings and regional energy systems has been actively conducted. There are several groups that utilized linear approximations, considered nonlinearity, conducted scenario-based research, and used an optimization algorithm to find an optimum solution. In terms of real-world implementation in buildings, the nonlinearity of machine characteristics should be considered within practical computation time because linearization incurs modeling costs, and computational resources are limited. Hence, the authors propose a hybrid algorithm that consists of metaheuristics and machine learning for optimizing daily operating schedules in building energy systems. The deep neural network machine learning technique was used to predict optimal operations of integrated cooling tower systems, and metaheuristics were used to optimize the operation of the other components. The proposed method may reduce daily operating costs by more than 13.4%. In addition, the integrated cooling tower system evaluated in this study reduced cost and energy requirements compared to an individual cooling tower system.
机译:近年来,积极开展了建筑物和区域能源系统的运营优化研究。有几个用于线性近似的组,被认为是非线性,进行的基于场景的研究,并使用优化算法来找到最佳解决方案。就建筑物的实际实施而言,机器特性的非线性应在实际计算时间内考虑,因为线性化引起建模成本,计算资源有限。因此,作者提出了一种混合算法,该算法包括半训练和机器学习,用于优化建筑能量系统中的日常操作系统。深度神经网络机学习技术用于预测集成冷却塔系统的最佳操作,并且使用了所在的遗传学来优化其他部件的操作。所提出的方法可以减少每日运营成本超过13.4%。此外,与单个冷却塔系统相比,本研究中评估的集成冷却塔系统降低了成本和能量需求。

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