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Exergy-wise predictive control framework for optimal performance of MicroCSP systems for HVAC applications in buildings

机译:高度明智的预测控制框架,用于大楼HVAC应用的Microcsp Systems的最佳性能

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摘要

The paper presents a new control method to optimize energy flows of a micro-scale concentrated solar power (MicroCSP) system in order to minimize the electrical energy consumption of a building heating, ventilation, and air conditioning (HVAC) system integrated with a MicroCSP system. A new real-time optimal control method is proposed using exergy-based model predictive control (XMPC) techniques. To achieve this, the first law of thermodynamics (FLT) and the second law of thermodynamics (SLT) based mathematical models of MicroCSP are developed and integrated into FLT and SLT based models of an office building located at Michigan Technological University. Then, an XMPC framework is designed to optimize MicroCSP operation in accordance with the building HVAC energy demand. The new controller shows 45% grid electrical energy saving, compared to a common rule-based controller. Furthermore, a probability analysis using Monte-Carlo simulations shows energy saving ranges from 44% to 46.5% in the presence of prediction uncertainties and 35% to 57.5% energy savings considering seasonal variations of the weather.
机译:本文提出了一种新的控制方法,优化微级集中太阳能电力(Microcsp)系统的能量流动,以最大限度地减少建筑加热,通风和空调(HVAC)系统的电能消耗,集成与Microcsp系统。采用基于Deergy的模型预测控制(XMPC)技术提出了一种新的实时最优控制方法。为实现这一目标,基于Microcsp的第一个热力学(FLT)和第二种热力学定律(SLT)的数学模型,开发并集成到位于密歇根省理工大学的办公楼的FLT和SLT基础上。然后,XMPC框架旨在根据建筑HVAC能量需求优化Microcsp操作。与公共规则的控制器相比,新控制器显示了45%的网格电气节能。此外,考虑到天气季节性变化,使用Monte-Carlo模拟的概率分析显示出在预测不确定性的情况下为44%至46.5%的节能范围,考虑到季节性变化的节能35%至57.5%。

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