Login / Signup

Multi-Objective Optimization of an Assembly Layout Using Nature-Inspired Algorithms and a Digital Human Modeling Tool.

Andreas LindV ElangoLars HansonDan HögbergDan LämkullP MårtenssonAnna Syberfeldt
Published in: IISE transactions on occupational ergonomics and human factors (2024)
OCCUPATIONAL APPLICATIONSIn the context of Industry 5.0, our study advances manufacturing factory layout planning by integrating multi-objective optimization with nature-inspired algorithms and a digital human modeling tool. This approach aims to overcome the limitations of traditional planning methods, which often rely on engineers' expertise and inputs from various functions in a company, leading to slow processes and risk of human errors. By focusing the multi-objective optimization on three primary targets, our methodology promotes objective and efficient layout planning, simultaneously considering worker well-being and system performance efficiency. Illustrated through a pedal car assembly station layout case, we demonstrate how layout planning can transition into a transparent, cross-disciplinary, and automated activity. This methodology provides multi-objective decision support, showcasing a significant step forward in manufacturing factory layout design practices.
Keyphrases
  • endothelial cells
  • machine learning
  • induced pluripotent stem cells
  • deep learning
  • pluripotent stem cells
  • primary care
  • emergency department
  • high throughput
  • patient safety