hammerstein -双线性HVAC系统的高级控制

I. Kasiyanto
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引用次数: 0

摘要

2019冠状病毒病大流行影响了人类生活的许多方面,包括工作环境。有研究发现,疫情后,美国、欧洲五大经济体等发达国家的大型办公大楼有能源和二氧化碳排放量增加的趋势。因此,先进的采暖、通风和空调(HVAC)技术可以降低建筑部门的能耗,将对全国总能耗产生重大影响。许多建筑物在其HVAC控制系统中配备了传统控制,例如PI或PID控制。这种控制器有缺点,如无法处理HVAC系统中的交叉耦合性质和约束。相反,模型预测控制(MPC)作为一种高级控制,在处理具有约束和不确定性的系统时具有优势,因为它可以在优化控制问题的表述中考虑到约束和不确定性。本文基于hammerstein双线性模型对工业暖通空调系统进行了数学推导,该模型由静态非线性和动态双线性子系统组成。得到的线性输出误差(OE)模型随后用作MPC设计中的工厂模型。MPC控制器的性能相当优越,并被证明能够满足期望的控制目标(保持区域温度在。此外,MPC控制器在温度和湿度控制回路中都比PI控制器节省了更多的经济能耗(约节省)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Advanced Control for Hammerstein-bilinear HVAC System
The COVID-19 pandemic has influenced many aspects of human life, including working environments. Some research finds that there is a tendency to the increase of energy and CO2 emissions of large office buildings in developed countries, such as US and Europe’s top five economics, post-pandemic. Therefore, advanced heating, ventilation and air-conditioning (HVAC) technology that can reduce energy consumption in the building sector will yield a significant impact on the total national energy consumption. Many buildings equipped with conventional control in their HVAC control systems, such as PI or PID controls. Such controllers have drawbacks like unable to handle cross-coupling nature and constraints in a HVAC system. Conversely, model predictive control (MPC)—which belongs to advanced control—has the advantages when dealing with the system with constraints and uncertainties as it can take into account them in its optimization control problem formulation. This paper derived mathematically an industrial HVAC system based on Hammerstein-bilinear model—a model consists of a static nonlinearity followed by a dynamic bilinear subsystem. The obtained linear output-error (OE) models are subsequently used as plant models in the MPC design. The MPC controller performance is quite superior and proven to be able to meet the desired control objective (keeping the zone temperature in range of . In addition, the MPC controller gives more economic energy consumption (about save) than the PI one both for temperature and humidity control loop.
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