多类传感器漂移异常补偿的自动建模

IF 5.6 2区 工程技术 Q1 ENGINEERING, MULTIDISCIPLINARY Measurement Pub Date : 2025-06-15 Epub Date: 2025-03-03 DOI:10.1016/j.measurement.2025.117097
Melanie Schaller , Mathis Kruse , Antonio Ortega , Marius Lindauer , Bodo Rosenhahn
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引用次数: 0

摘要

解决传感器漂移在工业测量系统中是必不可少的,在工业测量系统中,精确的数据输出对于保持监测过程的准确性和可靠性是必要的,因为随着时间的推移,它会逐渐降低机器学习模型的性能。我们的研究结果表明,现有模型训练中使用的标准交叉验证方法由于没有充分考虑漂移而高估了性能。这主要是因为典型的交叉验证技术允许数据实例同时出现在训练集和测试集中,从而扭曲了预测评估的准确性。因此,这些模型无法精确预测未来的漂移效应,从而影响了它们的泛化和适应不断变化的数据条件的能力。本文提出了两种解决方案:(1)一种新的传感器漂移补偿学习范式,用于验证模型;(2)自动机器学习(AutoML)技术,以提高分类性能并补偿传感器漂移。通过采用数据平衡、元学习、自动集成学习、超参数优化、特征选择和增强等策略,我们的AutoML-DC(漂移补偿)模型显著提高了针对传感器漂移的分类性能。AutoML-DC进一步有效地适应不同的漂移严重程度。
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AutoML for multi-class anomaly compensation of sensor drift
Addressing sensor drift is essential in industrial measurement systems, where precise data output is necessary for maintaining accuracy and reliability in monitoring processes, as it progressively degrades the performance of machine learning models over time. Our findings indicate that the standard cross-validation method used in existing model training overestimates performance by inadequately accounting for drift. This is primarily because typical cross-validation techniques allow data instances to appear in both training and testing sets, thereby distorting the accuracy of the predictive evaluation. As a result, these models are unable to precisely predict future drift effects, compromising their ability to generalize and adapt to evolving data conditions. This paper presents two solutions: (1) a novel sensor drift compensation learning paradigm for validating models, and (2) automated machine learning (AutoML) techniques to enhance classification performance and compensate sensor drift. By employing strategies such as data balancing, meta-learning, automated ensemble learning, hyperparameter optimization, feature selection, and boosting, our AutoML-DC (Drift Compensation) model significantly improves classification performance against sensor drift. AutoML-DC further adapts effectively to varying drift severities.
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来源期刊
Measurement
Measurement 工程技术-工程:综合
CiteScore
10.20
自引率
12.50%
发文量
1589
审稿时长
12.1 months
期刊介绍: Contributions are invited on novel achievements in all fields of measurement and instrumentation science and technology. Authors are encouraged to submit novel material, whose ultimate goal is an advancement in the state of the art of: measurement and metrology fundamentals, sensors, measurement instruments, measurement and estimation techniques, measurement data processing and fusion algorithms, evaluation procedures and methodologies for plants and industrial processes, performance analysis of systems, processes and algorithms, mathematical models for measurement-oriented purposes, distributed measurement systems in a connected world.
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