Model Predictive Control for Building Energy Reduction and Temperature Regulation

Tian Zhang, M. Wan, B. Ng, Shiyu Yang
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引用次数: 10

Abstract

Building climate control mechanisms account for more than 50% of the overall residential and commercial sector energy usage. Other than undertaking complementary green building design procedure to cut down the operational cost, optimal control of air-conditioning and mechanism ventilation (ACMV) systems in existing buildings is mutually important. While current building manage systems (BMS) usually operates with proportional-integral controllers to maintain constant component set points, there is no supervisory optimization for overall system operation under various conditions. In this paper, we propose a model predictive control (MPC)-based optimal temperature controller suitable for on-line optimization for smart buildings equipped with sensors. The proposed MPC controller integrates building thermodynamics, occupancy data, weather forecast data, as well as ACMV component models for minimizing energy consumption as well as stabilizing building temperature. To ensure feasibility during real-time operation, the above mentioned optimization is further decoupled into two sub-optimizations, dealing with system thermodynamics and component power consumption characteristics separately. In the simulation studies, the proposed MPC controller is able to achieve as much as 18.2% energy saving with different temperature regulation settings.
建筑节能与温度调节模型预测控制
建筑气候控制机制占住宅和商业部门总能源使用量的50%以上。除了采用互补的绿色建筑设计程序以降低运行成本外,现有建筑物的空调和机械通风系统的最佳控制也是相互重要的。目前的楼宇管理系统(BMS)通常使用比例积分控制器来维持恒定的组件设定点,但在各种条件下,没有对整个系统运行进行监督优化。本文提出了一种基于模型预测控制(MPC)的最优温度控制器,适用于具有传感器的智能建筑的在线优化。提出的MPC控制器集成了建筑热力学、占用数据、天气预报数据以及ACMV组件模型,以最大限度地减少能源消耗并稳定建筑温度。为了保证实时运行的可行性,将上述优化进一步解耦为两个子优化,分别处理系统热力学和组件功耗特性。在仿真研究中,所提出的MPC控制器在不同的温度调节设置下,可实现高达18.2%的节能。
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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