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INTELLIGENT APPROACHES FOR MODELING AND OPTIMIZING HVAC SYSTEMS' ENERGY USE

机译:智能建模和优化HVAC系统能源使用方法

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Advanced energy management control systems (EMCS), or building automation systems (BAS), offer an excellent means of reducing energy consumption in heating, ventilating, and air conditioning (HVAC) systems while maintaining and improving indoor environmental conditions. This can be achieved through the use of computational intelligence and optimization. This paper evaluates model-based optimization processes (OP) for HVAC systems utilizing any computer algebra system (CAS), genetic algorithms and self-learning or self-tuning models (STM), which minimizes the error between measured and predicted performance data. The OP can be integrated into the EMCS to perform several intelligent functions achieving optimal system performance. The development of several self-learning HVAC models and optimizing the process (minimizing energy use) is tested using data collected from an actual HVAC system. Using this optimization process (OP), the optimal variable set points (OVSP), such as supply air temperature (T_s), supply duct static pressure (P_s), chilled water supply temperature (T_w), minimum outdoor ventilation, and chilled water differential pressure set-point (D_(pw)) are optimized with respect to energy use of the HVAC's cooling side including the chiller, pump, and fan. The optimized set point variables minimize energy use and maintain thermal comfort incorporating ASHRAE's new ventilation standard 62.1-2013. This research focuses primarily with: on-line, self-tuning, optimization process (OLSTOP); HVAC design principles; and control strategies within a building automation system (BAS) controller. The HVAC controller will achieve the lowest energy consumption of the cooling side while maintaining occupant comfort by performing and prioritizing the appropriate actions. The program's algorithms analyze multiple variables (humidity, pressure, temperature, CO_2, etc.) simultaneously at key locations throughout the HVAC system (pumps, cooling coil, chiller, fan, etc.) to reach the function's objective, which is the lowest energy consumption while maintaining occupancy comfort.
机译:先进的能量管理控制系统(EMC)或建筑自动化系统(BAS),提供了在保持和改善室内环境条件的同时降低加热,通风和空调(HVAC)系统中的能耗的优异手段。这可以通过使用计算智能和优化来实现。本文评估了利用任何计算机代数系统(CAS),遗传算法和自学模型(STM)的用于HVAC系统的模型的优化过程(OP),这最小化了测量和预测性能数据之间的误差。 OP可以集成到EMC中,以执行实现最佳系统性能的智能功能。使用从实际HVAC系统收集的数据测试多种自学习HVAC模型和优化过程(最小化能量使用)的开发。使用该优化过程(OP),最佳变量设定点(OVSP),如供应空气温度(T_S),供应管道静压(P_S),冷却供水温度(T_W),最小的室外通风,并冷却水差动关于HVAC的冷却侧的能量使用,优化了压力设定点(D_(PW)),包括冷却器,泵和风扇。优化的设定点变量最大限度地减少了能源使用,维护了Ashrae新通风标准62.1-2013的热舒适度。本研究主要集中在线:在线,自我调整,优化过程(OLSTOP); HVAC设计原则;建筑自动化系统(BAS)控制器中的控制策略。 HVAC控制器将通过执行和优先排序适当的动作,实现冷却侧的最低能量消耗,同时保持乘员舒适性。该程序的算法在整个HVAC系统(泵,冷却盘管,冷却器,风扇等)的关键位置处同时分析多个变量(湿度,压力,温度,CO_2等),以实现函数的目标,这是最低能量在保持占用舒适度的同时消耗。

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