Improving the competitiveness of aircraft manufacturing automated processes by a deep neural network

Author:

Ruiz Leandro1,Díaz Sebastián1,González José M.1,Cavas Francisco2

Affiliation:

1. Innovation Division, MTorres Diseños Industriales SAU, Murcia, Spain

2. Structures, Construction and Graphical Expression, Technical University of Cartagena, Cartagena, Spain

Abstract

The accuracy and reliability requirements in aerospace manufacturing processes are some of the most demanding in industry. One of the first steps is detection and precise measurement using artificial vision models to accurately process the part. However, these systems require complex adjustments and do not work correctly in uncontrolled scenarios, but require manual supervision, which reduces the autonomy of automated machinery. To solve these problems, this paper proposes a convolutional neural network for the detection and measurement of drills and other fixation elements in an uncontrolled industrial manufacturing environment. In addition, a fine-tuning algorithm is applied to the results obtained from the network, and a new metric is defined to evaluate the quality of detection. The efficiency and robustness of the proposed method were verified in a real production environment, with 99.7% precision, 97.6% recall and an overall quality factor of 96.0%. The reduction in operator intervention went from 13.3% to 0.6%. The presented work will allow the competitiveness of aircraft component manufacturing processes to increase, and working environments will be safer and more efficient.

Publisher

IOS Press

Subject

Artificial Intelligence,Computational Theory and Mathematics,Computer Science Applications,Theoretical Computer Science,Software

Reference66 articles.

1. Deloitte. 2022 Aerospace and defense industry outlook. 2022.

2. Expanding the use of robotics in airframe assembly via accurate robot technology;Devlieg;SAE Int J Aerospace,2010

3. Advances of Industry 4.0 concepts on aircraft construction: an overview of trends;Barbosa;J Steel Struct Constr,2017

4. Artificial intelligence and manufacturing;Crandall;Smart Factories: Issues of Information Governance,2019

5. Gramegna N, Corte ED, Cocco M, Bonollo F, Grosselle F, editors. Innovative and integrated technologies for the development of aeronautic components. TMS Annual Meeting. 2010.

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