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Transfer learning with deep neural networks for model predictive control of HVAC and natural ventilation in smart buildings

机译:用深神经网络转移学习,以进行智能建筑暖通扫描和自然通风模型预测控制

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摘要

Advanced control strategies are central components of smart buildings. For model-based control algorithms, the quality of the model that represents building systems and dynamics is essential to guarantee satisfactory performance of smart building control and automation. For the model predictive control of the heating, ventilation, and air conditioning systems in buildings coupled with natural ventilation, a high-fidelity model is necessary to reliably predict the thermal responses of the building under various environmental and operational conditions. This task can be accomplished by using a deep neural network, which can capture the dynamics of complicated physical processes, such as natural ventilation. Training a deep neural network requires the collection of a large amount of data; however, in practice, the target building may not have enough operational data available. This study demonstrates how transfer learning could help with this dilemma. By freezing most layers of a deep neural network model with 42,902 parameters that are pre-trained on multi-year data from a source room in Beijing, the model can be re-trained with only 200 trainable parameters on only 15 days of data from the target room in Shanghai that has entirely different floor area, building material, and window size. The proposed transfer learning model achieves high accuracy predicting both indoor air temperature and relative humidity for a time horizon from 10 minutes to 2 hours, showing the mean squared error almost one magnitude smaller than the comparison model that is only trained on source data or target data. This methodology can be applied to the design of the control system in a new building which reduces the required amount of data for the training of the model, thus saving costs in control system design and commissioning. (C) 2020 Elsevier Ltd. All rights reserved.
机译:先进的控制策略是智能建筑的中央组件。对于基于模型的控制算法,表示构建系统和动态的模型的质量对于保证智能建筑控制和自动化的令人满意的性能至关重要。对于加热,通风和空调系统的模型预测控制与自然通气相结合的建筑物中,需要高保真模型以可靠地预测各种环境和操作条件下建筑物的热响应。这项任务可以通过使用深度神经网络来实现,这可以捕获复杂物理过程的动态,例如自然通风。培训深度神经网络需要收集大量数据;但是,在实践中,目标建筑物可能没有可用的可用运营数据。本研究表明转移学习如何有助于这种困境。通过使用42,902个参数冻结大多数深度神经网络模型,这些参数预先接受了来自北京的源房间的多年数据,该模型可以仅在仅15天的数据中仅用200个可训练参数重新培训上海的目标房间完全不同的楼层区域,建筑材料和窗口尺寸。所提出的转移学习模型实现了高精度,预测室内空气温度和相对湿度的时间范围从10分钟到2小时,显示平均平方误差几乎比仅在源数据或目标数据上训练的比较模型小一个幅度。 。该方法可以应用于新建筑中控制系统的设计,这减少了模型训练所需的数据量,从而节省了控制系统设计和调试的成本。 (c)2020 elestvier有限公司保留所有权利。

著录项

  • 来源
    《Journal of Cleaner Production》 |2020年第may1期|119866.1-119866.10|共10页
  • 作者单位

    Harvard Univ John A Paulson Sch Engn & Appl Sci Cambridge MA 02138 USA|Harvard Univ Grad Sch Design Cambridge MA 02138 USA|Harvard Univ Ctr Green Bldg & Cities Cambridge MA 02138 USA;

    Harvard Univ Ctr Green Bldg & Cities Cambridge MA 02138 USA|Zhejiang Univ Sch Mech Engn Hangzhou 310027 Peoples R China;

    Harvard Univ John A Paulson Sch Engn & Appl Sci Cambridge MA 02138 USA|Harvard Univ Ctr Green Bldg & Cities Cambridge MA 02138 USA;

    Harvard Univ Grad Sch Design Cambridge MA 02138 USA;

    MIT Dept Architecture 77 Massachusetts Ave Cambridge MA 02139 USA;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Deep neural network; Transfer learning; Model predictive control; Natural ventilation; HVAC;

    机译:深神经网络;转移学习;模型预测控制;自然通风;HVAC;

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