Safe human-robot collaboration: A systematic review of risk assessment methods with AI integration and standardization considerations
Type de document
Revues de littérature, synthèses de connaissances
Année de publication
2024
Langue
Anglais
Titre de la revue
International Journal of Advanced Manufacturing Technology
Première page
4077
Dernière page
4110
Résumé
Improving risk assessment (RA) for human-robot collaboration (HRC) is crucial, given challenges in existing RA tools. For example, simulation and testing RA tools lack realism due to simplified models, limited dynamic realism, and sensor integration constraints. This study explores how Artificial Intelligence (AI) can enhance risk assessment methods. Using a systematic literature review, the study analyzes three risk assessment methods: PFMEA, HAZOP, and FTA to which AI has been integrated. Results highlight strengths (e.g., systematic process failure identification, thorough hazard identification, complex system modeling) and limitations (e.g., limited coverage of human-robot dynamics, reliance on historical data, adaptability constraints, resource intensity, design dependency, complexity, human factor oversight, data dependency) in addressing HRC risks. Challenges and opportunities of AI in risk assessment are identified, emphasizing reliability, adaptation, safety, and method accuracy. Adhering to standards significantly improves the trustworthiness of AI-driven risk assessments, ensuring consistent, and validated results across diverse HRC scenarios. The study proposes a hybrid approach that combines multiple methods and incorporates image processing as a practical AI feature to enhance risk detection and prevention. The study advances AI-based risk assessment for HRC, offering a comprehensive overview of the current state of the art, highlighting gaps for future research, and suggesting a holistic solution. © The Author(s), under exclusive licence to Springer-Verlag London Ltd., part of Springer Nature 2024.
Mots-clés
Robot collaboratif, Collaborative robot, Intelligence artificielle, Artificial intelligence, Évaluation du risque, Hazard evaluation
Numéro de projet IRSST
n/a
Citation recommandée
Alenjareghi, M. J., Keivanpour, S., Chinniah, Y. A., Jocelyn, S. et Oulmane, A. (2024). Safe human-robot collaboration: A systematic review of risk assessment methods with AI integration and standardization considerations. The International Journal of Advanced Manufacturing Technology, 133(9), 4077-4110. https://doi.org/10.1007/s00170-024-13948-3