School of Mechanical and Transportation Engineering, China University of Petroleum (Beijing), Beijing 102249, China.
Sensors (Basel). 2018 Jul 5;18(7):2166. doi: 10.3390/s18072166.
Blade tip timing (BTT) technology is considered the most promising method for blade vibration measurements due to the advantages of its simplicity and non-contact measurement capacity. Nevertheless, BTT technology still suffers from two problems, which are (1) the requirements of domain expertise and prior knowledge of BTT signals analysis due to severe under-sampling; and (2) that the traditional BTT method can only judge whether there is a defect in the blade but it cannot judge the severity and the location of the defect. Thus, how to overcome the above drawbacks has become a big challenge. Aiming at under-sampled BTT signals, a feature learning method using a convolutional neural network (CNN) is introduced. In this way, some new fault-sensitive features can be adaptively learned from raw under-sampled data and it is therefore no longer necessary to rely on prior knowledge. At the same time, research has found that tip clearance (TC) is also very sensitive to the blade state, especially regarding defect severity and location. A novel analysis method fusing TC and BTT signals is proposed in this paper. The goal of this approach is to integrate tip clearance information with tip timing information for blade fault detection. The method consists of four key steps: First, we extract the TC and BTT signals from raw pulse data; second, TC statistical features and BTT deep learning features will be extracted and fused using the kernel principal component analysis (KPCA) method; then, model training and selection are carried out; and finally, 16 sets of experiments are carried out to validate the feasibility of the proposed method and the classification accuracy achieves 95%, which is far higher than the traditional diagnostic method.
叶片尖顶定时(BTT)技术由于其简单和非接触测量能力的优势,被认为是叶片振动测量最有前途的方法。然而,BTT 技术仍然存在两个问题,即(1)由于严重欠采样,需要领域专业知识和 BTT 信号分析的先验知识;(2)传统的 BTT 方法只能判断叶片是否存在缺陷,但不能判断缺陷的严重程度和位置。因此,如何克服上述缺点已成为一个巨大的挑战。针对欠采样的 BTT 信号,本文提出了一种使用卷积神经网络(CNN)的特征学习方法。通过这种方式,可以从原始欠采样数据中自适应地学习一些新的故障敏感特征,因此不再需要依赖先验知识。同时,研究发现,尖顶间隙(TC)对叶片状态也非常敏感,特别是对缺陷的严重程度和位置。本文提出了一种融合 TC 和 BTT 信号的新分析方法。该方法的目的是将尖顶间隙信息与尖顶定时信息集成起来,用于叶片故障检测。该方法包括四个关键步骤:首先,从原始脉冲数据中提取 TC 和 BTT 信号;其次,使用核主成分分析(KPCA)方法提取和融合 TC 统计特征和 BTT 深度学习特征;然后,进行模型训练和选择;最后,进行了 16 组实验来验证所提出方法的可行性,分类准确率达到 95%,远高于传统诊断方法。