大型建筑暖通空调优化的层次非线性MPC

S. Rastegarpour, L. Ferrarini
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引用次数: 4

摘要

本文研究了应用非线性预测控制策略对某大型大学建筑采暖通风空调系统进行性能提升和能耗降低的问题,同时也涉及到实际和实施问题。该系统由两个热泵组成,一个是水对水的热泵,一个是空气对水的热泵,以及两个不同的空气处理单元,它们调节和循环所有热区的空气。在这些应用中,预测热泵的未来动态行为对提高效率非常重要,但由于这些热泵的负荷依赖性和性能系数的非线性,这也非常具有挑战性。另一方面,潜在的模型失配的另一个来源是空气和水速度变化引起的AHU传热系数的非线性特征,这导致了一个非平凡的非线性系统。为此,研究了两种非线性模型预测控制策略,以处理许多物理约束和非线性问题。最后,进行了灵敏度和鲁棒性分析,以突出这些控制算法的优点、缺陷和对建筑物能源性能的影响。
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Hierarchical Nonlinear MPC for Large Buildings HVAC Optimization
This paper studies the problem of performance improvement and energy consumption reduction of the heating, ventilation and air conditioning system of a large-scale university building through the application of nonlinear predictive control strategies concerning also practical and implementation issues. The system consists of two heat pumps, a water-to-water and an air-to-water type, and two different air handling units, which regulate and circulate air in all thermal zones. In such applications, prediction of the future dynamical behavior of the heat pumps is extremely important to enforce efficiency, but it is also very challenging due to the load dependency and nonlinearity of the coefficient of performances of those heat pumps. On the other hand, another source of potential model mismatch is the nonlinear characterization of the heat transfer coefficients of the AHU induced by variable air and water velocity, which gives rise to a non-trivial nonlinear system. To do so, two nonlinear model predictive control strategies are investigated to deal with many physical constraints and nonlinear problems. Finally, a sensitivity and robustness analysis are performed to highlight the merits, defects and impacts of those control algorithms on the energy performance of the building.
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