A Combined Measurement System for Fast Classification of Water Contamination in Lubricant Oil

A. V. Radogna, E. Sciurti, L. Francioso, M. Signore, G. Grassi, C. Pascali, Stefano D’Amico
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Abstract

In this paper, a measurement system aimed to the fast classification of water contamination in oil samples will be presented. The transduction principle is based on the permittivity change of an interdigital capacitor which changes its capacitance value while immersed in oil samples with different water concentrations. Differently from other works, the presented system proposes a circuit and a measurement approach. It combines the broadband excitation property of MLS-based impulse response (IR) measurements with the support vector machine (SVM) machine-learning (ML) model. This approach allows to speed up the measurements, thus reducing the energy-per-measurement parameter in order to make the system suitable for battery-powered portable devices. The theoretical foundations, the circuit-level description of the analog front-end, and the used ML model will be presented in detail. The classification capability of the system will be proved by evaluating 40 IRs from 6 prepared oil samples at water concentrations of 0 vol%, 0.2 vol%, 0.5 vol%, 1 vol%, 2 vol%, and 3 vol%. The proposed system is able to measure a 1023-point IR in 700 ms, which is better than the state-of-the-art. Finally, an overall classification accuracy of 90% is obtained after the SVM training process with a 10 fold cross-validation.
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润滑油中水污染快速分类的组合测量系统
本文介绍了一种用于油样中水污染快速分类的测量系统。其转导原理是基于数字间电容的介电常数变化,当浸入不同水浓度的油样中时,电容值会发生变化。与其他工作不同,本系统提出了一种电路和测量方法。它将基于mls的脉冲响应(IR)测量的宽带激励特性与支持向量机(SVM)机器学习(ML)模型相结合。这种方法可以加快测量速度,从而减少每次测量参数的能量,使系统适用于电池供电的便携式设备。详细介绍了模拟前端的理论基础、电路级描述以及所使用的ML模型。该系统的分类能力将通过在水浓度为0 vol%, 0.2 vol%, 0.5 vol%, 1 vol%, 2 vol%和3 vol%的6种制备的油样品中评估40 ir来证明。该系统能够在700毫秒内测量1023点的红外,这比目前最先进的系统要好。最后,经过10倍交叉验证的SVM训练过程,获得了90%的总体分类准确率。
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