CVJan 25, 2023

Aircraft Skin Inspections: Towards a New Model for Dent Evaluation

arXiv:2301.10473v26 citationsh-index: 4
Originality Incremental advance
AI Analysis

This addresses a domain-specific problem for the aircraft maintenance industry by improving dent classification to reduce ambiguity and enable more targeted repairs.

The paper tackles the problem of ambiguous dent evaluation in aircraft skin inspections by proposing a 7-parameter model to describe actual dent shapes, enabling better use of high-fidelity 3D scanner data and suggesting increased damage evaluation capability and cost savings.

Aircraft maintenance, repair and overhaul industry is gradually switching to 3D scanning for dent inspection. High-accuracy devices allow quick and repeatable measurements, which translate into efficient reporting and more objective damage evaluations. However, the potential of 3D scanners is far from being exploited. This is due to the traditional way in which the structural repair manual deals with dents, that is, considering length, width and depth as the only relevant measures. Being equivalent to describing a dent similarly to a box, the current approach discards any information about the actual shape. This causes high degrees of ambiguity, with very different shapes (and corresponding fatigue life) being classified as the same, and nullifies the effort of acquiring such great amount of information from high-accuracy 3D scanners. In this paper a 7-parameter model is proposed to describe the actual dent shape, thus enabling the exploitation of the high fidelity data produced by 3D scanners. The compact set of values can then be compared against historical data and structural evaluations based on the same model. The proposed approach has been evaluated in both simulations and point cloud data generated by 8tree's dentCHECK tool, suggesting increased capability to evaluate damage, enabling more targeted interventions and, ultimately, saving costs.

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