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Model-based predictive control for building energy management: Part II - Experimental validations

机译:基于模型的建筑节能管理预测控制:第二部分-实验验证

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Indoor climate control of thermal comfort for humans in a residential or commercial building is a major component of building energy management. The goal of optimal temperature and humidity control is to ensure indoor comfort with minimal energy consumption. Model-Based Predictive Control (MBPC) is considered to be one of the most suited solutions to achieve this goal due to its ability to use building dynamics, occupancy schedule, and weather conditions for optimal control. The development and verification of MBPC have been discussed in the Part I [1]. Here, to validate that MBPC achieves reduced energy consumption, while simultaneously satisfying comfort conditions, experiments are performed on a quarter scale shelter structure in a climate-controlled environmental chamber. The MBPC method is compared to three other control methods: conventional constant temperature setpoint control, scheduled control using a Honeywell smart thermostat, and scheduled control using Labview. Temperature variations and energy consumptions resulting from the four methods are analyzed. Compared to the three other methods, MBPC yields superior control performance with lowest energy consumption while still maintaining indoor thermal comfort. We also demonstrate that use of MBPC can reduce the number of sensors required for effective local control. (C) 2017 Elsevier B.V. All rights reserved.
机译:对住宅或商业建筑中的人类提供热舒适性的室内气候控制是建筑能源管理的主要组成部分。最佳温度和湿度控制的目标是以最小的能耗确保室内舒适度。基于模型的预测控制(MBPC)被认为是实现此目标的最合适的解决方案之一,因为它具有使用建筑物动态,占用时间表和天气条件进行最佳控制的能力。第一部分[1]中讨论了MBPC的开发和验证。在这里,为了验证MBPC在降低能耗的同时满足舒适性条件,我们在气候受控环境室内对四分之一规模的掩体结构进行了实验。 MBPC方法与其他三种控制方法进行了比较:常规恒温设定点控制,使用Honeywell智能恒温器的计划控制和使用Labview的计划控制。分析了四种方法导致的温度变化和能耗。与其他三种方法相比,MBPC具有出众的控制性能和最低的能耗,同时仍保持室内热舒适性。我们还证明了MBPC的使用可以减少有效的本地控制所​​需的传感器数量。 (C)2017 Elsevier B.V.保留所有权利。

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