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A comparison of extremum seeking algorithms applied to vapor compression system optimization

机译:极值搜索算法在蒸汽压缩系统优化中的比较

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In recent years, a number of extremum seeking algorithms have been proposed. While each approach aims to estimate the gradient of a performance metric in realtime and steer inputs to values that optimize the metric, the way in which each method accomplishes this goal can have practical implications that depend on the application. In this paper, we compare the performance of traditional perturbation-based extremum seeking to time-varying extremum seeking in the context of optimizing the energy efficiency of a vapor compression system. In order to benchmark these algorithms, we simulate their performance using a moving-boundary model of a vapor compression machine that has been tuned and calibrated to data gathered from a multi-split style room air conditioner operating in cooling mode. We show that while perturbation-based extremum seeking appears simplest to tune, some challenging minima are not obtained. Also, we find that time-varying extremum seeking converges faster and more reliably than the other method tested.
机译:近年来,已经提出了许多极值搜索算法。虽然每种方法都旨在实时估计性能指标的梯度,并将输入引导至优化指标的值,但每种方法实现此目标的方式可能会产生实际含义,具体取决于应用程序。在本文中,我们在优化蒸气压缩系统的能效的背景下,将传统的基于摄动的极值搜索与时变极值搜索的性能进行了比较。为了对这些算法进行基准测试,我们使用蒸汽压缩机的移动边界模型模拟了它们的性能,该模型已经过调整并校准为从以制冷模式运行的多分裂式房间空调器收集的数据。我们显示,虽然基于扰动的极值搜索似乎最容易调整,但并没有获得一些极具挑战性的极小值。此外,我们发现时变极值搜索比其他测试方法收敛得更快,更可靠。

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