Mapping of attributes used in construction accidents prediction models using Machine Learning techniques

Mapping of attributes used in construction accidents prediction models using ML techniques

Authors

DOI:

https://doi.org/10.46421/entac.v20i1.6180

Keywords:

Safety management, Accident, Machine learning, Predictive models

Abstract

The low occupational health and safety performance faced by the construction industry impacts countries' gross domestic product and brings financial losses to companies and workers. In this context, several predictive models using machine learning (ML) have been developed using historical data on construction accidents. However, there is still no consensus on the types of attributes that should be input into these models to achieve more assertive predictions. Therefore, this paper aims to survey and categorize the most commonly used attributes in predictive models using ML. To this end, a systematic review aims to identify the main research of accident predictive models. The findings show six main categories of attributes; the most frequent attributes were those related to workers, organization, and safety management.  Thus, this paper aims to define what types of data related to accidents should be collected to assist in predicting accidents and consequently improving safety performance.

Author Biographies

Mírian Caroline Farias Santos, Universidade Federal da Bahia

Mestrado em Engenharia Civil pela Universidade Federal da Bahia.
Doutoranda em Engenharia Civil na Universidade Federal da Bahia (Salvador - BA, Brasil).

Vinicius Fernandes Santos, Universidade Federal da Bahia

Engenheiro Civil, formado pela Universidade Federal da Bahia..

Roseneia Rodrigues Santos de Melo , Universidade Federal da Bahia

Doutorado em Engenharia Civil pela Universidade Federal da Bahia.

Pós-doutoranda em Engenharia Civil pela Universidade Federal da Bahia.

Dayana Bastos Costa, Universidade Federal da Bahia

 

Doutorado em Engenharia Civil pela Universidade Federal do Rio Grande do Sul.

Professora Associada do Departamento de Construção e Estruturas da Escola Politécnica da Universidade Federal da Bahia.

References

POH, C. Q. X.; UBEYNARAYANA, C. U.; GOH, Y. M. Safety leading indicators for construction sites: A machine learning approach.

Automation in Construction, v. 93, p. 375–386, 1 set. 2018.

CHOI, J. et al. Machine learning predictive model based on national data for fatal accidents of construction workers. Automation in

Construction, v. 110, 2020.

ANAMT - ASSOCIAÇÃO NACIONAL DE MEDICINA DO TRABALHO. Divulgadas as estatísticas de acidentes de trabalho para o ano de

Disponível em: <https://www.anamt.org.br/portal/2023/02/08/divulgadas-as-estatisticas-de-acidentes-de-trabalho-para-o-

ano-de-2021/>. Acesso em: 29 mar. 2023.

OIT - ORGANIZAÇÃO INTERNACIONAL DO TRABALHO. Série SmartLab de Trabalho Decente 2022: acidentes de trabalho e mortes

acidentárias voltam a crescer em 2021. Disponível em: <https://www.anamt.org.br/portal/2023/02/08/divulgadas-as-estatisticas-

de-acidentes-de-trabalho-para-o-ano-de-2021/>. Acesso em: 29 mar. 2023.

SAURIN, T. A. Safety inspections in construction sites: A systems thinking perspective. Accident Analysis & Prevention, v. 93, p.

-250, 2016.

MELO, R. R. S.; COSTA, D. B. Integrating resilience engineering and UAS technology into construction safety planning and control.

Engineering, Construction and Architectural Management, v. 26, n. 11, p. 2705-2722, 2019.

LIN, K. et al. A user-centered information and communication technology (ICT) tool to improve safety inspections. Automation in

construction, v. 48, p. 53-63, 2014.

LIU, Y. et al. Computer Vision Technologies and Machine Learning Algorithms for Construction Safety Management: A Critical

Review. [s.l: s.n.].

KANG, K.; KOO, C.; RYU, H. An interpretable machine learning approach for evaluating the feature importance affecting lost

workdays at construction sites. Journal of Building Engineering, v. 53, p. 104534, 2022.

SHUANG, Q.; ZHANG, Z. Determining critical cause combination of fatality accidents on construction sites with machine learning

techniques. Buildings, v. 13, n. 2, p. 345, 2023.

ZHU, J. et al. Developing predictive models of construction fatality characteristics using machine learning. Safety science, v. 164, p.

, 2023.

JAFARI, P. et al. Leading safety indicators: Application of machine learning for safety performance measurement. In: ISARC.

Proceedings of the International Symposium on Automation and Robotics in Construction. IAARC Publications, 2019. p. 501-506.

KOC, K.; EKMEKCIOĞLU, Ö.; GURGUN, A. P. Integrating feature engineering, genetic algorithm and tree-based machine learning

methods to predict the post-accident disability status of construction workers. Automation in Construction, v. 131, p. 103896, 2021.

ZERMANE, A. et al. Predicting fatal fall from heights accidents using random forest classification machine learning model. Safety

science, v. 159, p. 106023, 2023.

LEE, G. et al. Assessment of construction workers’ perceived risk using physiological data from wearable sensors: A machine

learning approach. Journal of Building Engineering, v. 42, p. 102824, 2021.

KOC, K.; EKMEKCIOĞLU, Ö.; GURGUN, A. P. Determining susceptible body parts of construction workers due to occupational

injuries using inclusive modelling. Safety science, v. 164, p. 106157, 2023.

KOC, K.; EKMEKCIOĞLU, Ö.; GURGUN, A. P. Developing a national data-driven construction safety management framework with

interpretable fatal accident prediction. Journal of Construction Engineering and Management, v. 149, n. 4, p. 04023010, 2023b.

ZHU, R. et al. Application of machine learning techniques for predicting the consequences of construction accidents in China.

Process Safety and Environmental Protection, v. 145, p. 293–302, 1 jan. 2021.

LEE, S. H.; SON, J. Development of a safety management system tracking the weight of heavy objects carried by construction

workers using fsr sensors. Applied Sciences, v. 11, n. 4, p. 1–15, 2021.

SEONG, H.; SON, H.; KIM, C. A Comparative Study of Machine Learning Classification for Color-based Safety Vest Detection on

Construction-Site Images. KSCE Journal of Civil Engineering, v. 22, n. 11, p. 4254–4262, 2018.

RADZI, A. R. et al. Relationship between digital twin and building information modeling: a systematic review and future directions.

Construction Innovation, v. 24, n. 3, p. 811-829, 2024.

KOC, K.; EKMEKCIOĞLU, Ö.; GURGUN, A. P. Prediction of construction accident outcomes based on an imbalanced dataset through

integrated resampling techniques and machine learning methods. Engineering, Construction and Architectural Management, v.

, n. 9, p. 4486-4517, 2022.

Published

2024-10-07

How to Cite

SANTOS, Mírian Caroline Farias; SANTOS, Vinicius Fernandes; MELO , Roseneia Rodrigues Santos de; COSTA, Dayana Bastos. Mapping of attributes used in construction accidents prediction models using Machine Learning techniques: Mapping of attributes used in construction accidents prediction models using ML techniques. In: NATIONAL MEETING OF BUILT ENVIRONMENT TECHNOLOGY, 20., 2024. Anais [...]. Porto Alegre: ANTAC, 2024. p. 1–11. DOI: 10.46421/entac.v20i1.6180. Disponível em: https://eventos.antac.org.br/index.php/entac/article/view/6180. Acesso em: 21 nov. 2024.

Issue

Section

Tecnologia da Informação e Comunicação

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