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首页> 外文期刊>International Journal of Refrigeration >Investigations on optimal discharge pressure in CO2 heat pumps using the GMDH and PSO-BP type neural network part B: Experimental study
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Investigations on optimal discharge pressure in CO2 heat pumps using the GMDH and PSO-BP type neural network part B: Experimental study

机译:使用GMDH和PSO-BP型神经网络的CO2热泵最佳排放压力的研究B:实验研究

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摘要

In this second part of a two-part article, the Particle Swarm Optimization (PSO) based Back-Propagation Neural-Network (BP) based algorithm for the discharge pressure controlling was experimentally achieved based on a subcooler-based transcritical CO2 rig, for further developing an acceptable real-time control approach. The detail of the control strategy in practice was clearly shown including the recirculating water PID control, the PSO-BP based discharge pressure optimization and the electronic expansion valve regulatory mechanism. Besides, the optimal discharge pressure sought by PSO-BP and corresponding system performances were compared with the results from Wang/Liao's predictions and the tested values, which validated the prominent effectiveness of the PSO-BP method due to its satisfactory consistency with the tested data. Additionally, the subcooler-based rig under the discharge pressure from PSO-BP control had more than 15 and 25% improvements over the baseline cycle under floor heating and radiator conditions, respectively, which provided an innovative and appropriate idea for developers and manufacturers. (C) 2019 Elsevier Ltd and IIR. All rights reserved.
机译:在两个部分制品的第二部分中,基于基于Subcooler的跨临界CO2钻机实验实现了基于粒子群优化(PSO)的基于放电压力控制的反向传播神经网络(BP)的基于放电压力控制的算法开发一种可接受的实时控制方法。实践中控制策略的细节清楚地显示,包括再循环水PID控制,基于PSO-BP的放电压力优化和电子膨胀阀调节机制。此外,PSO-BP和相应的系统性能所寻求的最佳排放压力与王/辽的预测和测试值的结果进行了比较,这验证了PSO-BP方法由于其与测试数据的令人满意的符合而验证了PSO-BP方法的突出效果。另外,在PSO-BP对照的排出压力下的基础钻井架分别在地板加热和散热器条件下,基线周期的排出压力下有超过15%和25%,为开发人员和制造商提供了一种创新和适当的思路。 (c)2019年Elsevier Ltd和IIR。版权所有。

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