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Research Article

Online differential pressure reset method with adaptive adjustment algorithm for variable chilled water flow control in central air-conditioning systems

Tianyi Zhao1Ying Zhou1Jili Zhang1Xiuming Li2( )
Institute of Building Energy, School of Civil Engineering, Faculty of Infrastructure Engineering, Dalian University of Technology, Dalian 116024, China
School of Metallurgy, Northeastern University, Shenyang 110819, China
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Abstract

Central air-conditioning systems predominantly operate under partial load conditions. The optimization of a differential pressure setpoint in the chilled water system of a central air-conditioning system leads to a more energy-efficient operation. Determining the differential pressure adjustment value based on the terminal user’s real-time demand is one of the critical issues to be addressed during the optimal control process. Furthermore, the online application of the differential pressure setpoint optimization method needs to be considered, along with the stability of the system. This paper proposes a variable differential pressure reset method with an adaptive adjustment algorithm based on the Mamdani fuzzy model. The proposed method was compared with differential pressure reset methods with reference to the chilled water differential temperature, outdoor temperature, and linear model based on the adjustment algorithm. The energy-saving potential, temperature control effect, and avoidance of the most unfavorable thermodynamic loop effects of the four methods were investigated experimentally. The results indicated that, while satisfying the terminal user’s energy supply demand and ensuring the avoidance of the most unfavorable thermodynamic loop, the proposed adaptive adjustment algorithm also decreased the differential pressure setpoint value by 25.1%-59.1% and achieved energy savings of 10.6%-45.0%. By monitoring the valve position and supply air temperature of each terminal user, the proposed method exhibited suitable online adaptability and could be flexibly applied to buildings with random load changes.

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Building Simulation
Pages 1407-1422
Cite this article:
Zhao T, Zhou Y, Zhang J, et al. Online differential pressure reset method with adaptive adjustment algorithm for variable chilled water flow control in central air-conditioning systems. Building Simulation, 2021, 14(5): 1407-1422. https://doi.org/10.1007/s12273-020-0744-9

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Received: 26 June 2020
Accepted: 10 November 2020
Published: 09 January 2021
© Tsinghua University Press and Springer-Verlag GmbH Germany, part of Springer Nature 2021
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