论文标题
基于MILP的模仿学习用于HVAC控制
MILP-based Imitation Learning for HVAC control
论文作者
论文摘要
为了优化具有高级技术(例如人造神经网络)的HVAC系统的运行,以前的研究通常需要在其方法中进行预测信息。但是,预测信息不可避免地会始终包含错误,从而降低了HVAC操作的性能。因此,在这项研究中,我们提出了基于MILP的模仿学习方法来控制HVAC系统,而无需使用预测信息以降低能源成本并在给定水平上保持热舒适度。我们提出的控制器是一个深层神经网络(DNN),该网络通过使用带有历史数据的MILP求解器标记的数据来训练。训练后,我们的控制器被用来控制HVAC系统使用实时数据。为了进行比较,我们还开发了一种名为基于预测的MILP的方法,该方法使用预测信息控制HVAC系统。通过在美国密歇根州底特律市使用真正的户外温度和实际日间价格,可以验证这两种方法的性能。数值结果清楚地表明,基于MILP的模仿学习的性能优于基于预测的MILP方法,在小时功耗,每日能源成本和热舒适度方面。此外,基于MILP的模仿学习方法和最佳结果的结果几乎可以忽略不计。这些最佳结果只有在我们拥有当天天气和价格的全部信息时,只有在一天结束时使用MILP求解器来实现这些最佳结果。
To optimize the operation of a HVAC system with advanced techniques such as artificial neural network, previous studies usually need forecast information in their method. However, the forecast information inevitably contains errors all the time, which degrade the performance of the HVAC operation. Hence, in this study, we propose MILP-based imitation learning method to control a HVAC system without using the forecast information in order to reduce energy cost and maintain thermal comfort at a given level. Our proposed controller is a deep neural network (DNN) trained by using data labeled by a MILP solver with historical data. After training, our controller is used to control the HVAC system with real-time data. For comparison, we also develop a second method named forecast-based MILP which control the HVAC system using the forecast information. The performance of the two methods is verified by using real outdoor temperatures and real day-ahead prices in Detroit city, Michigan, United States. Numerical results clearly show that the performance of the MILP-based imitation learning is better than that of the forecast-based MILP method in terms of hourly power consumption, daily energy cost, and thermal comfort. Moreover, the difference between results of the MILP-based imitation learning method and optimal results is almost negligible. These optimal results are achieved only by using the MILP solver at the end of a day when we have full information on the weather and prices for the day.