Integrated Vehicle Health Management Centre, Cranfield University, Cranfield MK43 0AL, UK.
Centre for Autonomous and Cyberphysical Systems, Cranfield University, Cranfield MK43 0AL, UK.
Sensors (Basel). 2021 Jun 28;21(13):4424. doi: 10.3390/s21134424.
Bearings are critical components found in most rotating machinery; their health condition is of immense importance to many industries. The varied conditions and environments in which bearings operate make them prone to single and multiple faults. Widespread interest in the improvements of single fault diagnosis meant limited attention was spent on multiple fault diagnosis. However, multiple fault diagnosis poses extra challenges due to the submergence of the weak fault by the strong fault, presence of non-Gaussian noise, coupling of the frequency components, etc. A number of existing convolutional neural network models operate on a distinct feature that is not enough to assure reliable results in the presence of these challenges. In this paper, extended feature sets in three homogenous deep learning models are used for multiple fault diagnosis. This ensures a measure of diversity is introduced to the health management dataset to obtain complementary solutions from the models. The outputs of the models are fused through blending ensemble learning. Experiments using vibration datasets based on bearing multiple faults show an accuracy of 98.54%, with an improvement of 2.74% in the overall effectiveness over the single models. Compared with other technologies, the results show that this approach provides an improved generalized diagnostic capability.
轴承是大多数旋转机械中至关重要的组成部分;它们的健康状况对许多行业都非常重要。由于轴承的工作条件和环境多种多样,因此它们容易出现单一故障和多种故障。由于对单一故障诊断的改进广泛关注,因此对多种故障诊断的关注有限。然而,由于强故障掩盖弱故障、存在非高斯噪声、频率分量耦合等原因,多种故障诊断带来了额外的挑战。一些现有的卷积神经网络模型基于不充分的特征进行操作,在存在这些挑战的情况下,无法保证可靠的结果。在本文中,使用了三个同质深度学习模型中的扩展特征集进行多种故障诊断。这确保了在健康管理数据集中引入了一定程度的多样性,从而从模型中获得互补的解决方案。通过混合集成学习对模型的输出进行融合。使用基于轴承多种故障的振动数据集进行的实验表明,其准确率为 98.54%,与单一模型相比,整体有效性提高了 2.74%。与其他技术相比,结果表明该方法提供了改进的广义诊断能力。