One for Many: Transfer Learning for Building HVAC Control

Shichao Xu, Yixuan Wang, Yanzhi Wang, Zheng O’Neill, Qi Zhu
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引用次数: 50

Abstract

The design of building heating, ventilation, and air conditioning (HVAC) system is critically important, as it accounts for around half of building energy consumption and directly affects occupant comfort, productivity, and health. Traditional HVAC control methods are typically based on creating explicit physical models for building thermal dynamics, which often require significant effort to develop and are difficult to achieve sufficient accuracy and efficiency for runtime building control and scalability for field implementations. Recently, deep reinforcement learning (DRL) has emerged as a promising data-driven method that provides good control performance without analyzing physical models at runtime. However, a major challenge to DRL (and many other data-driven learning methods) is the long training time it takes to reach the desired performance. In this work, we present a novel transfer learning based approach to overcome this challenge. Our approach can effectively transfer a DRL-based HVAC controller trained for the source building to a controller for the target building with minimal effort and improved performance, by decomposing the design of neural network controller into a transferable front-end network that captures building-agnostic behavior and a back-end network that can be efficiently trained for each specific building. We conducted experiments on a variety of transfer scenarios between buildings with different sizes, numbers of thermal zones, materials and layouts, air conditioner types, and ambient weather conditions. The experimental results demonstrated the effectiveness of our approach in significantly reducing the training time, energy cost, and temperature violations.
一个对许多:建筑暖通空调控制的迁移学习
建筑供暖、通风和空调(HVAC)系统的设计至关重要,因为它占建筑能耗的一半左右,直接影响居住者的舒适度、生产力和健康。传统的暖通空调控制方法通常基于为建筑热动力学创建明确的物理模型,这通常需要大量的工作来开发,并且难以达到运行时建筑控制的足够准确性和效率以及现场实施的可扩展性。最近,深度强化学习(DRL)作为一种有前途的数据驱动方法出现了,它在运行时不分析物理模型的情况下提供了良好的控制性能。然而,DRL(以及许多其他数据驱动的学习方法)面临的一个主要挑战是需要很长的训练时间才能达到预期的性能。在这项工作中,我们提出了一种基于迁移学习的新方法来克服这一挑战。通过将神经网络控制器的设计分解为可转移的前端网络(捕获与建筑物无关的行为)和后端网络(可有效地为每个特定建筑物训练),我们的方法可以有效地将为源建筑训练的基于drl的HVAC控制器转换为目标建筑的控制器,从而减少工作量并提高性能。我们对不同大小、热区数量、材料和布局、空调类型和环境天气条件的建筑之间的各种转换场景进行了实验。实验结果表明,该方法在显著减少训练时间、能量成本和温度违规方面是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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