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A sensor-less stroke detection technique for linear refrigeration compressors using artificial neural network

机译:一种使用人工神经网络的线性制冷压缩机的传感器较少的行程检测技术

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Linear compressors are very attractive for domestic refrigeration due to elimination of crank mechanism, high efficiency and compactness compared with conventional compressors. The significance of stroke control in a linear compressor not only lies in avoiding the piston collision into the cylinder head but also enabling cooling capacity modulation. Predicting piston stroke without a displacement sensor reduces the cost and facilitates the stroke control especially in miniature linear compressor where there is very limited space for installing sensors. This paper reports an artificial neural network (ANN) based stroke detection approach that can be used in linear compressors and any other linear (free-piston) machines. Experimental tests were conducted in a novel linear compressor driven refrigeration system to sample and record voltage, current and displacement. Fast Fourier transform (FFT) analysis was performed on current and voltage signals to extract harmonic terms as inputs of the neural network model to predict the stroke. Six cases with different numbers of harmonic term for current and voltage were compared. Both the mean squared errors and correlation coefficients are significantly improved with the increase of harmonic terms from one to three. However, small difference is indicated between the cases with three and six terms. Best percentage error distribution was achieved in the case with six harmonic terms with the majority of percentage errors falling within +/- 0.7% and a maximum percentage error of 3.5%. It can be concluded that the present ANN based stroke prediction approach can be effectively adopted for linear compressors without expensive displacement sensors. This is a key step towards the commercialization of linear refrigeration compressor technologies. (C) 2020 Elsevier Ltd and IIR. All rights reserved.
机译:由于消除了与传统压缩机相比,由于消除了曲柄机构,高效率和紧凑性,线性压缩机对于国内制冷非常有吸引力。行程控制在线性压缩机中的重要性不仅避免了活塞碰撞进入汽缸盖,还可以实现冷却能力调制。在没有位移传感器的情况下预测活塞行程降低了成本并且便于行程控制,特别是在微型线性压缩机中,其中有用于安装传感器的空间非常有限。本文报告了一种基于人工神经网络(ANN)的行程检测方法,可用于线性压缩机和任何其他线性(自由活塞)机器。实验测试在新型线性压缩机驱动制冷系统中进行,以采样和记录电压,电流和位移。对电流和电压信号进行快速傅里叶变换(FFT)分析,以提取谐波术语作为神经网络模型的输入来预测行程。比较了用于电流和电压不同数量的谐波术语的六种情况。随着谐波术语从一到三个增加,平均平方误差和相关系数都显着改善。但是,在具有三个和六个术语的情况下表明了小差异。在具有六个谐波术语的情况下实现了最佳百分比错误分布,其中大多数百分比误差达到+/- 0.7%,最大百分比误差为3.5%。可以得出结论,当没有昂贵的位移传感器的线性压缩机可以有效地采用本基于ANN的行程预测方法。这是朝着线性制冷压缩机技术商业化的关键步骤。 (c)2020 Elsevier Ltd和IIR。版权所有。

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