Aeroengine Blades Damage Detection and Measurement Based on Multimodality Fusion Learning
Xin Wu, Xiaolong Wei, Haojun Xu, Yuanhan Hou, Caizhi Li, Yizhen Yin, Weifeng He, Liucheng Zhou
Abstract
Aeroengines often work in harsh conditions such as high load, high-speed rotation, strong corrosion, etc. under these conditions, the aeroengine blades are easily damaged by the impact of foreign objects, which seriously affects the aeroengine performance and flight safety. Therefore, it is very necessary to carry out the research on aeroengine blades damage detection and measurement. In this paper, a multimodality intelligent damage detection method based on visual image and depth map and an automatic damage measurement method for aeroengine blades are proposed. An aeroengine blade damage visual-depth multimodality dataset (ABDM Dataset) is constructed. The dataset contains four common types of engine blade damage, namely nick, tear, bent and chamfer. According to the different fusion stages, three fusion networks are designed: visual-depth data level fusion network (VDFNet-data), visual-depth feature level fusion network (VDFNet-feature) and visual-depth decision level fusion network (VDFNet-decision). Among them, VDFNet-feature has the best damage detection performance, with its mean average precision (mAP) of 85.60% and inference speed of 37.48 frames per second (fps). In the backbone, multi branch concatenation block (Multi-Concat-Block), parallel down sampling block (Parallel-Down-Block) and cross stage partial spatial pyramid pooling block (CSPSPP) are designed to solve the challenges of damage intelligent detection caused by dim detection environment light, large change in damage size and small size of some damage. In addition, a stacked symmetrical network (SSNet) is designed to extract the damage feature points, and then damage size is calculated according to the spatial coordinates of feature points on depth map. The percentage of correct keys (PCK) and size error (SE) of the measurement method proposed in this paper are 93.28% and 0.12 mm respectively.