基于混合数字孪生的多区域建筑能耗优化控制

O. Maryasin
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摘要

本文研究了一种基于建筑混合数字孪生体的多区域办公楼能耗优化控制方案。混合数字双胞胎包括建筑物的能源模型,单个区域和整个建筑物的数字能耗模型,以及建筑物的采暖,通风和空调系统的计算机模型。所有数字模型均采用人工神经网络实现。EnergyPlus能源模拟系统生成输入数据以训练神经网络。采用遗传算法求解该问题的最优解。在笔者开发的DTTool软件包中实现了建筑的最优能耗控制。这种方法可以实现对多区域建筑的最佳能耗控制,将能耗划分为整个建筑的能耗和建筑的某些区域的能耗。
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Optimal Energy Consumption Control in a Multi-Zone Building Based on a Hybrid Digital Twin
The paper considers a solution for optimal energy consumption control in a multi-zone office building based on a hybrid digital twin of a building. The hybrid digital twin comprises the energy model of the building, digital energy consumption models of both individual zones and the entire building, and a computer model of the heating, ventilation, and air conditioning system of the building. Artificial neural networks were used to implement all digital models. The EnergyPlus energy simulation system generated the input data to train neural networks. A genetic algorithm was used to find an optimal solution to the problem. The optimal energy consumption control of the building was implemented in the DTTool software package, developed by the author. This approach allows implementing optimal energy consumption control for multi-zone buildings with the division of energy consumption into that consumed by the entire building and that consumed by certain zones of the building.
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