Neural network and multiple linear regression to predict school children dimensions for ergonomic school furniture design

Appl Ergon. 2012 Nov;43(6):979-84. doi: 10.1016/j.apergo.2012.01.007. Epub 2012 Feb 25.

Abstract

The current study investigates the possibility of obtaining the anthropometric dimensions, critical to school furniture design, without measuring all of them. The study first selects some anthropometric dimensions that are easy to measure. Two methods are then used to check if these easy-to-measure dimensions can predict the dimensions critical to the furniture design. These methods are multiple linear regression and neural networks. Each dimension that is deemed necessary to ergonomically design school furniture is expressed as a function of some other measured anthropometric dimensions. Results show that out of the five dimensions needed for chair design, four can be related to other dimensions that can be measured while children are standing. Therefore, the method suggested here would definitely save time and effort and avoid the difficulty of dealing with students while measuring these dimensions. In general, it was found that neural networks perform better than multiple linear regression in the current study.

MeSH terms

  • Anthropometry
  • Body Weights and Measures
  • Child
  • Ergonomics / methods*
  • Humans
  • Interior Design and Furnishings / methods*
  • Interior Design and Furnishings / standards
  • Linear Models
  • Male
  • Neural Networks, Computer*
  • Schools
  • Students / statistics & numerical data