基于数据驱动鲁棒模型预测控制的可持续建筑热舒适控制

Wei-Han Chen, Shiyu Yang, F. You
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引用次数: 0

摘要

虽然实施可再生能源系统和模型预测控制(MPC)可以减少不可再生能源的消耗,但使用MPC建立气候控制的一个挑战是天气预报的不确定性。在这项工作中,我们提出了一个数据驱动的鲁棒模型预测控制(DDRMPC)框架,以解决天气预报不确定性下可再生混合能源系统可持续建筑的气候控制问题。控制和能源系统配置包括采暖、通风、空调、地热热泵、光伏板、蓄电池等。从气象站收集历史天气预报和测量数据,以识别预报误差,并使用不确定集构建。数据驱动的不确定性集采用多种机器学习技术构建,包括主成分分析与核密度估计、K-means聚类与PCA和KDE相结合、基于密度的含噪声应用空间聚类和Dirichlet过程混合模型。最后,提出了一个数据驱动的鲁棒优化问题,以获得具有可再生能源系统的建筑物的最优控制输入。本文以康奈尔大学校园内一栋采用可再生能源系统的建筑为例,展示了DDRMPC框架的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Thermal Comfort Control on Sustainable Building via Data-Driven Robust Model Predictive Control
While implementing renewable energy systems and model predictive control (MPC) could reduce non-renewable energy consumption, one challenge to building climate control using MPC is the weather forecast uncertainty. In this work, we propose a data-driven robust model predictive control (DDRMPC) framework to address climate control of a sustainable building with renewable hybrid energy systems under weather forecast uncertainty. The control and energy system configurations include heating, ventilation, and air conditioning, geothermal heat pump, photovoltaic panel, and electricity storage battery. Historical weather forecast and measurement data are gathered from the weather station to identify the forecast errors and for the use of uncertainty set construction. The data-driven uncertainty sets are constructed with multiple machine learning techniques, including principal component analysis with kernel density estimation, K-means clustering coupled with PCA and KDE, density-based spatial clustering of applications with noise, and the Dirichlet process mixture model. Lastly, a data-driven robust optimization problem is developed to obtain the optimal control inputs for a building with renewable energy systems. A case study on controlling a building with renewable energy systems located on the Cornell University campus is used to demonstrate the advantages of the proposed DDRMPC framework.
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