Wear Classification of Abrasive Flap Wheels using a Hierarchical Deep Learning Approach
This work addresses wear condition monitoring for automated flap wheel grinding in industrial finishing processes, representing an incremental improvement with a novel hierarchical approach.
The paper tackled the problem of monitoring wear in abrasive flap wheels by proposing a vision-based hierarchical classification framework, achieving high robustness with classification accuracies ranging from 93.8% to 99.3% for different wear types and severities.
Abrasive flap wheels are common for finishing complex free-form surfaces due to their flexibility. However, this flexibility results in complex wear patterns such as concave/convex flap profiles or flap tears, which influence the grinding result. This paper proposes a novel, vision-based hierarchical classification framework to automate the wear condition monitoring of flap wheels. Unlike monolithic classification approaches, we decompose the problem into three logical levels: (1) state detection (new vs. worn), (2) wear type identification (rectangular, concave, convex) and flap tear detection, and (3) severity assessment (partial vs. complete deformation). A custom-built dataset of real flap wheel images was generated and a transfer learning approach with EfficientNetV2 architecture was used. The results demonstrate high robustness with classification accuracies ranging from 93.8% (flap tears) to 99.3% (concave severity). Furthermore, Gradient-weighted Class Activation Mapping (Grad-CAM) is utilized to validate that the models learn physically relevant features and examine false classifications. The proposed hierarchical method provides a basis for adaptive process control and wear consideration in automated flap wheel grinding.