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Showing 2 results for Artificial Intelligence

Mousa Nazari, Arezoo Sammak Amani, Mohammad Amin Mououdi, Mohammad Mahdi Alyan Nezhadi,
Volume 11, Issue 4 (1-2024)
Abstract

Objectives: Work-related musculoskeletal Disorders (WMSDs) are the most significant challenges in both developing and developed countries, affecting the majority of individuals throughout their lives. Considering the detrimental effects of musculoskeletal disorders on the productivity and general health of employees, this research utilizes the Cornell Musculoskeletal Disorder Questionnaire (CMDQ) to develop an intelligent model for assessing and predicting the levels of musculoskeletal disorders.
Methods: In this descriptive-analytical study, 810 employees from five organizations (in four occupational categories, including administrative, technical, production, and services) completed the CMDQ voluntarily. After collecting the questionnaire and performing relevant statistical analyses, data normalization and clustering based on the K-Means method were used to determine levels of musculoskeletal disorders. Finally, the multilayer perceptron artificial neural network was trained to predict the levels of musculoskeletal disorders; moreover,  the criteria of precision, accuracy, recall, and F1-score were used to evaluate the proposed model.
Results: The performance of the proposed model in predicting the levels of musculoskeletal disorders is presented in two scenarios (use and non-use of the Synthetic Minority Oversampling Technique (SMOTE) method) based on the evaluation criteria provided. The accuracy, precision, recall, and F1-score values were 0.724, 0.709, 0.756, and 0.720, respectively. The appropriate accuracy and precision in the proposed model indicate its capability to identify the levels of musculoskeletal disorders in individuals and help healthcare professionals take necessary measures to prevent and predict them.
Conclusion: This study employs the CMDQ questionnaire and artificial intelligence to analyze musculoskeletal disorders in the workplace. The proposed model demonstrates significant accuracy and precision compared to similar studies. The results indicate that this model can be utilized to identify and predict musculoskeletal disorders in organizational employees, offering the potential to expedite the identification process and reduce costs.

Ali Reza Nikray, Dr. Mohammad Reza Vesali Naseh, Abbas Mohammadi,
Volume 13, Issue 3 (9-2025)
Abstract

Objectives: As industrial systems become increasingly complex and technologically advanced, the human role in ensuring safety and efficiency remains indispensable. This study presents a comprehensive review of Human Reliability Assessment researches published between 2010-2023. It compares HRA methodologies with emerging technologies such as artificial intelligence and lights-out manufacturing, identifies existing research gaps, and analyzes both the analytical techniques employed and the industrial sectors addressed.
Methods: A systematic search of major scientific databases was conducted using domain-specific keywords, yielding over 230 publications. Following the removal of duplicates studies, 180 articles were selected for detailed analysis. Each article was evaluated based on methodology, industrial application, country and institutional affiliation, and publishing outlet.
Results: The results indicate that SHERPA, CREAM, and Fuzzy Mathematics are the most frequently applied approaches in HRA research. The United States, China, and South Korea emerged as leading contributors to the field. The findings reveal that neither qualitative nor quantitative methods alone are sufficient to fulfill the three core objectives of HRA: error identification, probability estimation, and control design. A hybrid approach is therefore recommended through the integration of SHERPA and TESEO. SHERPA offers comprehensive coverage of error identification and designing effective control measures, while TESEO facilitates rapid and conservative probability estimation. Together, these methods provide a practical and efficient framework for achieving HRA objectives within operational constraints. Additionally, ten key research gaps were identified.
Conclusion: The SHERPA–TESEO hybrid framework presents a viable strategy for achieving the core goals of HRA. Nonetheless, in the context of smart environments and operator-free production, the shift from static to dynamic and data-driven models is necessary. Recommended developments include revising SHERPA’s cognitive task classifications, recalibrating TESEO’s adjustment factors, and integrating real-time data with human–AI interaction. These advancements are expected to significantly enhance real-time prediction of human-error-risks and support timely intervention strategies.


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