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Global optimal control of variable air volume air-conditioning system with iterative learning: an experimental case study

机译:可迭代学习可变风量空调系统的全局最优控制:实验案例研究

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The air-conditioning system in a large commercial or high-rise building is a complex multi-variable system influenced by many factors. The energy saving potential from the optimal operation and control of heating, ventilating, and air-conditioning (HVAC) systems can be large, even when they are properly designed. The ultimate goal of optimization is to use the minimum amount of energy needed to improve system efficiency while meeting comfort requirements. In this study, a multi-zone variable air volume (VAV) and variable water volume (VWV) air-conditioning system is developed. The steady state modes and dynamic models of the HVAC subsystems are constructed. Optimal control based on large scale system theory for system-level energy-saving of HVAC is introduced. Control strategies such as proportional-integral-derivative (PID) controller (gearshift integral PID and self-tuning PID) and iterative learning control (ILC) are studied in the platform to improve the dynamic characteristics. The system performance is improved. An 18.2% energy saving is achieved with the integration of ILC and sequential quadratic programming based on a steady-state hierarchical optimization control scheme.
机译:大型商业或高层建筑中的空调系统是一种受许多因素影响的复杂多变量系统。即使当它们被正确设计时,加热,通风和空调(HVAC)系统的最佳操作和控制的节能电位也可以很大。优化的最终目标是在满足舒适要求时使用提高系统效率所需的最小能量。在该研究中,开发了多区可变空气量(VAV)和可变水量(VWV)空调系统。构建了HVAC子系统的稳态模式和动态模型。介绍了基于大规模系统理论的HVAC系统级节能的最优控制。在平台中研究了比例 - 积分衍生物(PID)控制器(Gearshift Integrate PID和自我调整PID)和迭代学习控制(ILC)等控制策略,以提高动态特性。系统性能得到改善。基于稳态分层优化控制方案的ILC和顺序二次编程实现了18.2%的节能。

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