Assessment of Aircraft Engine Blade Inspection Performance Using Attribute Agreement Analysis (2022)

View/ Open
Type of Content
Journal ArticlePublisher
MDPI AGISSN
2313-576XLanguage
enCollections
Abstract
Background—Visual inspection is an important element of aircraft engine maintenance to assure flight safety. Predominantly performed by human operators, those maintenance activities are prone to human error. While false negatives imply a risk to aviation safety, false positives can lead to increased maintenance cost. The aim of the present study was to evaluate the human performance in visual inspection of aero engine blades, specifically the operators’ consistency, accuracy, and reproducibility, as well as the system reliability. Methods—Photographs of 26 blades were presented to 50 industry practitioners of three skill levels to assess their performance. Each image was shown to each operator twice in random order, leading to N = 2600 observations. The data were statistically analysed using Attribute Agreement Analysis (AAA) and Kappa analysis. Results—The results show that operators were on average 82.5% consistent with their serviceability decision, while achieving an inspection accuracy of 67.7%. The operators’ reproducibility was 15.4%, as was the accuracy of all operators with the ground truth. Subsequently, the false-positive and false-negative rates were analysed separately to the overall inspection accuracy, showing that 20 operators (40%) achieved acceptable performances, thus meeting the required standard. Conclusions—In aviation maintenance the false-negative rate of <5% as per Aerospace Standard AS13100 is arguably the single most important metric since it determines the safety outcomes. The results of this study show acceptable false-negative performance in 60% of appraisers. Thus, there is the desirability to seek ways to improve the performance. Some suggestions are given in this regard.
Citation
Aust J, Pons D (2022). Assessment of Aircraft Engine Blade Inspection Performance Using Attribute Agreement Analysis. Safety. 8(2). 23-23.This citation is automatically generated and may be unreliable. Use as a guide only.
Keywords
human cognitive performance; aviation safety; visual inspection; aero engine maintenance; measurement systems analysis; attribute agreement analysis; inspection accuracy; consistency; repeatability; reproducibility; reliability; human factorsANZSRC Fields of Research
40 - Engineering::4001 - Aerospace engineering::400103 - Aircraft performance and flight control systems52 - Psychology::5204 - Cognitive and computational psychology::520401 - Cognition
Rights
All rights reserved unless otherwise statedRelated items
Showing items related by title, author, creator and subject.
-
Comparative Analysis of Human Operators and Advanced Technologies in the Visual Inspection of Aero Engine Blades
Aust J; Pons, Dirk (MDPI AG, 2022)Background—Aircraft inspection is crucial for safe flight operations and is predominantly performed by human operators, who are unreliable, inconsistent, subjective, and prone to err. Thus, advanced technologies offer the ... -
Evaluation of Influence Factors on the Visual Inspection Performance of Aircraft Engine Blades
Aust J; Pons, Dirk; Mitrovic, Antonija (MDPI AG, 2021)Background—There are various influence factors that affect visual inspection of aircraft engine blades including type of inspection, defect type, severity level, blade perspective and background colour. The effect of those ... -
Aviation human error modelled as a production process
Pons, Dirk J.; Dey, Karla. (University of Canterbury. Mechanical Engineering, 2015)As technology systems have become more complex, so it is increasingly difficult for human operators to comprehend how the system is behaving. There is a need to better understand the causes of human-error in the context ...