Measuring the Robustness of ML Models Against Data Quality Issues in Industrial Time Series Data

Marcel Dix, Gianluca Manca, Kenneth Chigozie Okafor, Reuben Borrison, Konstantin Kirchheim, Divyasheel Sharma, Kr Chandrika, Deepti Maduskar, F. Ortmeier
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Abstract

The performance of machine learning models can be significantly impacted by variations in data quality. Typically, conventional model testing does not examine how robust the model would be in the face of potential data quality deterioration. In an industrial use case, however, data quality is a pertinent issue, as sensors are susceptible to a variety of technical and external issues that may result in poor data quality over time. In order to develop robust machine learning models, industrial data scientists must understand the sensitivity of their models against data quality issues, through the application of an appropriate and comprehensive testing solution. In this work, we propose a generic framework for systematically analyzing the impact of data quality issues on the performance of machine learning models by intentionally applying gradual perturbations to the original time series data. The evaluation is performed using a benchmark industrial process consisting of multivariate time series from sensors in a complex chemical process.
测量ML模型对工业时间序列数据质量问题的鲁棒性
机器学习模型的性能会受到数据质量变化的显著影响。通常,传统的模型测试不会检查模型在面对潜在的数据质量恶化时的鲁棒性。然而,在工业用例中,数据质量是一个相关问题,因为传感器容易受到各种技术和外部问题的影响,随着时间的推移,这些问题可能导致数据质量下降。为了开发强大的机器学习模型,工业数据科学家必须通过应用适当而全面的测试解决方案,了解他们的模型对数据质量问题的敏感性。在这项工作中,我们提出了一个通用框架,通过有意地对原始时间序列数据应用渐进扰动,系统地分析数据质量问题对机器学习模型性能的影响。评估是使用由复杂化学过程中传感器的多变量时间序列组成的基准工业过程进行的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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