사업성과 BK21 FOUR 산업혁신 애널리틱스 교육연구단

논문

2024 Individual-specific postural discomfort prediction using decision tree models

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작성자 관리자 작성일 24-09-23 18:13

본문

Author
Soomin Hyun, Hyunju Lee, Woojin Park
Journal
Applied Ergonomics
Vol
118
Page
104282
Year
2024

Abstract

The objective of the current study was to explore the utilization of the decision tree (DT) algorithm to model posture-discomfort relationships at the individual level. The DT algorithm has the advantage that it makes no assumptions about the distribution of data, is robust in representing non-linear data with noise, and produces white-box models that are interpretable. Individual-level modelling is essential for examining individual-specific postural discomfort perception processes and understanding the inter-individual variability. It also has practical applications, including the development of individual-specific digital human models and more precise and informative population accommodation analysis. Individual-specific DT models were generated using postural discomfort rating data for various seated upper body postures to predict discomfort based on postural and task variables. The individual-specific DT models accurately predicted postural discomfort and revealed large inter-individual variability in the modelling results. DT modelling is expected to greatly facilitate investigating the human discomfort perception process.