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Fusing Imperfect Experimental Data for Risk Assessment of Musculoskeletal Disorders in Construction Using Canonical Polyadic Decomposition

Overview
Journal Autom Constr
Publisher Elsevier
Date 2021 Apr 26
PMID 33897107
Citations 2
Authors
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Abstract

Field or laboratory data collected for work-related musculoskeletal disorder (WMSD) risk assessment in construction often becomes unreliable as a large amount of data go missing due to technology-induced errors, instrument failures or sometimes at random. Missing data can adversely affect the assessment conclusions. This study proposes a method that applies Canonical Polyadic Decomposition (CPD) tensor decomposition to fuse multiple sparse risk-related datasets and fill in missing data by leveraging the correlation among multiple risk indicators within those datasets. Two knee WMSD risk-related datasets-3D knee rotation (kinematics) and electromyography (EMG) of five knee postural muscles-collected from previous studies were used for the validation and demonstration of the proposed method. The analysis results revealed that for a large portion of missing values (40%), the proposed method can generate a fused dataset that provides reliable risk assessment results highly consistent (70%-87%) with those obtained from the original experimental datasets. This signified the usefulness of the proposed method for use in WMSD risk assessment studies when data collection is affected by a significant amount of missing data, which will facilitate reliable assessment of WMSD risks among construction workers. In the future, findings of this study will be implemented to explore whether, and to what extent, the fused dataset outperforms the datasets with missing values by comparing consistencies of the risk assessment results obtained from these datasets for further investigation of the fusion performance.

Citing Articles

A Bibliometric Analysis of Neuroscience Tools Use in Construction Health and Safety Management.

Ding Z, Xiong Z, Ouyang Y Sensors (Basel). 2023; 23(23).

PMID: 38067895 PMC: 10708774. DOI: 10.3390/s23239522.


Application of Neuroscience Tools in Building Construction - An Interdisciplinary Analysis.

Wang M, Liu X, Lai Y, Cao W, Wu Z, Guo X Front Neurosci. 2022; 16:895666.

PMID: 35801176 PMC: 9253515. DOI: 10.3389/fnins.2022.895666.

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