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Optimization of HVAC system energy consumption in a building using artificial neural network and multi-objective genetic algorithm

机译:基于人工神经网络和多目标遗传算法的建筑物暖通空调系统能耗优化

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摘要

The optimization of heating, ventilating and air conditioning (HVAC) system operations and other building parameters intended to minimize annual energy consumption and maximize the thermal comfort is presented in this paper. The combination of artificial neural network (ANN) and multi-objective genetic algorithm (MOGA) is applied to optimize the two-chiller system operation in a building. The HVAC system installed in the building integrates radiant cooling system, variable air volume (VAV) chiller system, and dedicated outdoor air system (DOAS). Several parameters including thermostat setting, passive solar design, and chiller operation control are considered as decision variables. Subsequently, the percentage of people dissatisfied (PPD) and annual building energy consumption is chosen as objective functions. Multi-objective optimization is employed to optimize the system with two objective functions. As the result, ANN performed a good correlation between decision variables and the objective function. Moreover, MOGA successfully provides several alternative possible design variables to achieve optimum system in terms of thermal comfort and annual energy consumption. In conclusion, the optimization that considers two objectives shows the best result regarding thermal comfort and energy consumption compared to base case design.
机译:本文介绍了供暖,通风和空调(HVAC)系统运行以及其他建筑参数的优化,旨在最大程度地减少年度能耗和最大化热舒适度。结合人工神经网络(ANN)和多目标遗传算法(MOGA)来优化建筑物中的两个冷却器系统运行。安装在建筑物中的HVAC系统集成了辐射冷却系统,可变风量(VAV)冷却器系统和专用室外空气系统(DOAS)。包括恒温器设置,被动式太阳能设计和冷却器运行控制在内的几个参数被视为决策变量。随后,将人们的不满意百分比(PPD)和年度建筑能耗作为目标函数。采用多目标优化来优化具有两个目标函数的系统。结果,人工神经网络在决策变量和目标函数之间表现出良好的相关性。此外,MOGA成功地提供了几种可能的设计变量,以在热舒适性和年度能耗方面实现最佳系统。总之,考虑到两个目标的优化与基础案例设计相比,在热舒适性和能耗方面显示出最佳结果。

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