Atlas / Learn / Papers / 0aa9bc2f808c21a2828bc6a57cee8afad18bff73
Semantic Scholar · Article
The contributions of human factors on human error in Malaysia aviation maintenance industries
Attribution
This is the abstract and citation. Full text lives at Semantic Scholar — we link out rather than host. All credit to the authors and Semantic Scholar.
Abstract
Verbatim from Semantic Scholar. Not paraphrased, not summarized.
Aviation maintenance is a multitasking activity in which individuals perform varied tasks under constant pressure to meet deadlines as well as challenging work conditions. These situational characteristics combined with human factors can lead to various types of human related errors. The primary objective of this research is to develop a structural relationship model that incorporates human factors, organizational factors, and their impact on human errors in aviation maintenance. Towards that end, a questionnaire was developed which was administered to Malaysian aviation maintenance professionals. Structural Equation Modelling (SEM) approach was used in this study utilizing AMOS software. Results showed that there were a significant relationship of human factors on human errors and were tested in the model. Human factors had a partial effect on organizational factors while organizational factors had a direct and positive impact on human errors. It was also revealed that organizational factors contributed to human errors when coupled with human factors construct. This study has contributed to the advancement of knowledge on human factors effecting safety and has provided guidelines for improving human factors performance relating to aviation maintenance activities and could be used as a reference for improving safety performance in the Malaysian aviation maintenance companies.
Authors
- H. Padil
- M. N. Said
- A. Azizan
Keywords
- Physics
- Engineering
- Business
Citation: H. Padil, M. N. Said, A. Azizan (2018). The contributions of human factors on human error in Malaysia aviation maintenance industries. Semantic Scholar ID 0aa9bc2f808c21a2828bc6a57cee8afad18bff73. https://doi.org/10.1088/1757-899X/370/1/012035 ↗