Two-objective on-line optimization of supervisory control strategy

Nabil Nassif, S. Kajl, Robert Sabourin
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引用次数: 34

Abstract

The set points of supervisory control strategy are optimized with respect to energy use and thermal comfort for existing HVAC systems. The set point values of zone temperatures, supply duct static pressure, and supply air temperature are the problem variables, while energy use and thermal comfort are the objective functions. The HVAC system model includes all the individual component models developed and validated against the monitored data of an existing VAV system. It serves to calculate energy use during the optimization process, whereas the actual energy use is determined by using monitoring data and the appropriate validated component models. A comparison, done for one summer week, of actual and optimal energy use shows that the on-line implementation of a genetic algorithm optimization program to determine the optimal set points of supervisory control strategy could save energy by 19.5%, while satisfying the minimum zone airflow rates and the thermal comfort. The results also indicate that the application of the two-objective optimization problem can help control daily energy use or daily building thermal comfort, thus saving more energy than the application of the one-objective optimization problem.
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监控策略的双目标在线优化
针对现有暖通空调系统的能耗和热舒适性,优化了监控策略的设定点。区域温度、送风静压和送风温度设定点为问题变量,能源利用和热舒适为目标函数。暖通空调系统模型包括根据现有VAV系统的监测数据开发和验证的所有单独组件模型。它用于计算优化过程中的能源使用,而实际的能源使用是通过使用监控数据和适当的经过验证的组件模型来确定的。夏季一周的实际能耗与最优能耗对比表明,在线实施遗传算法优化程序确定监控策略的最优设定点,在满足最小区域风量和热舒适的前提下,节能19.5%。结果还表明,应用双目标优化问题可以帮助控制日能耗或日建筑热舒适,从而比应用单目标优化问题节省更多的能源。
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