基于神经网络的楼宇舒适度管理模型预测控制方法

R. Eini, S. Abdelwahed
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引用次数: 7

摘要

本文提出了一种结合机器学习的模型预测控制(MPC)方法来控制智能建筑中的能耗和居住者的舒适度(热舒适和视觉舒适)。神经网络(NN)被用来学习和预测建筑的舒适规格、环境条件和功耗。基于预测数据,MPC为热和照明系统提供最佳控制输入,以达到预期的性能。与现有的建筑物控制框架相比,我们提出的基于学习的控制方法在控制回路中加入了与乘员相关的参数,提高了预测精度和控制性能。我们提出的基于学习的MPC方法在一个建筑物上实现,并在EnergyPlus软件中进行了仿真,并将其性能与基于模型的建筑物控制框架进行了比较。从仿真结果来看,我们的控制方法在保持居民舒适度和降低能耗方面明显优于传统的MPC。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Neural Network-based Model Predictive Control Approach for Buildings Comfort Management
This paper proposes a model predictive control (MPC) approach incorporated with machine learning to control the energy consumption and occupants’ comfort (thermal and visual comfort) in a smart building. Neural networks (NN)s are developed to learn and predict the building’s comfort specifications, environmental conditions, and power consumption. Based on the predicted data, MPC provides optimal control inputs for the thermal and lighting systems to achieve the desired performance. In contrast to the existing building control frameworks, our proposed learning-based control method incorporates the occupant-related parameters in the control loop, which enhances the prediction accuracy and control performance. Our proposed learning-based MPC approach is implemented on a building, simulated in EnergyPlus software, and its performance is compared with that of a model-based building control framework. From the simulation results, our control method performs significantly better than the conventional MPC in maintaining residents’ comfort and reducing energy consumption.
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