PLoS ONE (Jan 2023)

Dynamic three-sided matching model for personnel-robot-position matching problem in intelligent environments.

  • Zhi-Chao Liang,
  • Yu Yang,
  • Qiu Xie,
  • Jing Wang,
  • Xue-Jiao Zhang,
  • Bao-Dong Li

DOI
https://doi.org/10.1371/journal.pone.0282312
Journal volume & issue
Vol. 18, no. 4
p. e0282312

Abstract

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In recent years, intelligent robots have facilitated intelligent production, and a new type of problem (personnel-robot-position matching (PRPM)) has been encountered in personnel-position matching (PPM). In this study, a dynamic three-sided matching model is proposed to solve the PRPM problem in an intelligent production line based on man-machine collaboration. The first issue considered is setting the dynamic reference point, which is addressed in the information evaluation phase by proposing a method for setting the dynamic reference point based on the prospect theory. Another important issue involves multistage preference information integration, wherein a probability density function and a value function are introduced. Considering the attenuation of preference information in a time series, the attenuation index model is introduced to calculate the satisfaction matrix. Furthermore, a dynamic three-sided matching model is established. Additionally, a multi-objective decision-making model is established to optimize the matching of multiple sides (personnel, intelligent robots, and positions). Subsequently, the model is transformed into a single objective model using the triangular balance principle, which is introduced to obtain the final optimisation results in this modelling process. A case study is presented to illustrate the practicality of the dynamic three-sided matching model in intelligent environments. The results indicate that this model can solve the PRPM problem in an intelligent production line.