Habbouche Houssem, Benkedjouh Tarak, Amirat Yassine, Benbouzid Mohamed
Mechanical Structures Laboratory, Ecole Militaire Polytechnique, Algiers 16046, Algeria.
L@bIsen, ISEN Yncrea Ouest, 29200 Brest, France.
Entropy (Basel). 2021 May 31;23(6):697. doi: 10.3390/e23060697.
Failure detection and diagnosis are of crucial importance for the reliable and safe operation of industrial equipment and systems, while gearbox failures are one of the main factors leading to long-term downtime. Condition-based maintenance addresses this issue using several expert systems for early failure diagnosis to avoid unplanned shutdowns. In this context, this paper provides a comparative study of two machine-learning-based approaches for gearbox failure diagnosis. The first uses linear predictive coefficients for signal processing and long short-term memory for learning, while the second is based on mel-frequency cepstral coefficients for signal processing, a convolutional neural network for feature extraction, and long short-term memory for classification. This comparative study proposes an improved predictive method using the early fusion technique of multisource sensing data. Using an experimental dataset, the proposals were tested, and their effectiveness was evaluated considering predictions based on statistical metrics.
故障检测与诊断对于工业设备和系统的可靠与安全运行至关重要,而齿轮箱故障是导致长期停机的主要因素之一。基于状态的维护利用多个专家系统进行早期故障诊断来解决这一问题,以避免计划外停机。在此背景下,本文对两种基于机器学习的齿轮箱故障诊断方法进行了比较研究。第一种方法使用线性预测系数进行信号处理,并使用长短期记忆网络进行学习,而第二种方法基于梅尔频率倒谱系数进行信号处理,使用卷积神经网络进行特征提取,并使用长短期记忆网络进行分类。这项比较研究提出了一种使用多源传感数据早期融合技术的改进预测方法。利用一个实验数据集对这些方法进行了测试,并基于统计指标的预测来评估其有效性。