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超声传感与机器学习方法在工业过程监测中的研究综述。

A review of ultrasonic sensing and machine learning methods to monitor industrial processes.

机构信息

Food, Water, Waste Research Group, Faculty of Engineering, University of Nottingham, University Park, Nottingham NG7 2RD, UK.

School of Computer Science, Jubilee Campus, University of Nottingham, Nottingham NG8 1BB, UK.

出版信息

Ultrasonics. 2022 Aug;124:106776. doi: 10.1016/j.ultras.2022.106776. Epub 2022 May 28.

Abstract

Supervised machine learning techniques are increasingly being combined with ultrasonic sensor measurements owing to their strong performance. These techniques also offer advantages over calibration procedures of more complex fitting, improved generalisation, reduced development time, ability for continuous retraining, and the correlation of sensor data to important process information. However, their implementation requires expertise to extract and select appropriate features from the sensor measurements as model inputs, select the type of machine learning algorithm to use, and find a suitable set of model hyperparameters. The aim of this article is to facilitate implementation of machine learning techniques in combination with ultrasonic measurements for in-line and on-line monitoring of industrial processes and other similar applications. The article first reviews the use of ultrasonic sensors for monitoring processes, before reviewing the combination of ultrasonic measurements and machine learning. We include literature from other sectors such as structural health monitoring. This review covers feature extraction, feature selection, algorithm choice, hyperparameter selection, data augmentation, domain adaptation, semi-supervised learning and machine learning interpretability. Finally, recommendations for applying machine learning to the reviewed processes are made.

摘要

由于其强大的性能,监督机器学习技术越来越多地与超声传感器测量相结合。这些技术还具有优于更复杂拟合的校准程序的优势,例如提高了通用性、减少了开发时间、能够进行连续再训练,以及传感器数据与重要过程信息的相关性。然而,它们的实现需要专业知识,以便从传感器测量中提取和选择适当的特征作为模型输入,选择要使用的机器学习算法的类型,并找到合适的模型超参数集。本文的目的是促进将机器学习技术与超声测量相结合,用于工业过程的在线和离线监测以及其他类似应用。本文首先回顾了超声传感器在监测过程中的应用,然后回顾了超声测量与机器学习的结合。我们包括来自其他领域的文献,如结构健康监测。本综述涵盖特征提取、特征选择、算法选择、超参数选择、数据增强、领域适应、半监督学习和机器学习可解释性。最后,对应用机器学习到所综述的过程提出了建议。

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