Enhancing Workplace Safety through Personalized Environmental Risk Assessment: An AI-Driven Approach in Industry 5.0

Author:

Lemos Janaína1ORCID,de Souza Vanessa Borba2,Falcetta Frederico Soares3ORCID,de Almeida Fernando Kude4,Lima Tânia M.15ORCID,Gaspar Pedro Dinis15ORCID

Affiliation:

1. Department of Electromechanical Engineering, University of Beira Interior, 6201-001 Covilhã, Portugal

2. Postgraduate Program in Computing, Federal University of Rio Grande do Sul, Av. Bento Gonçalves, 9500, Porto Alegre 91501-970, Brazil

3. Laboratory Diagnostic Service, HCPA Hospital, R. Ramiro Barcelos, 2350, Porto Alegre 90035-903, Brazil

4. Oncology Division, Fêmina Hospital, R. Mostardeiro, 17, Porto Alegre 90430-001, Brazil

5. C-MAST—Centre for Mechanical and Aerospace Science and Technologies, 6201-001 Covilhã, Portugal

Abstract

This paper describes an integrated monitoring system designed for individualized environmental risk assessment and management in the workplace. The system incorporates monitoring devices that measure dust, noise, ultraviolet radiation, illuminance, temperature, humidity, and flammable gases. Comprising monitoring devices, a server-based web application for employers, and a mobile application for workers, the system integrates the registration of workers’ health histories, such as common diseases and symptoms related to the monitored agents, and a web-based recommendation system. The recommendation system application uses classifiers to decide the risk/no risk per sensor and crosses this information with fixed rules to define recommendations. The system generates actionable alerts for companies to improve decision-making regarding professional activities and long-term safety planning by analyzing health information through fixed rules and exposure data through machine learning algorithms. As the system must handle sensitive data, data privacy is addressed in communication and data storage. The study provides test results that evaluate the performance of different machine learning models in building an effective recommendation system. Since it was not possible to find public datasets with all the sensor data needed to train artificial intelligence models, it was necessary to build a data generator for this work. By proposing an approach that focuses on individualized environmental risk assessment and management, considering workers’ health histories, this work is expected to contribute to enhancing occupational safety through computational technologies in the Industry 5.0 approach.

Funder

Fundação para a Ciência e Tecnologia (FCT) and C-MAST

Publisher

MDPI AG

Reference74 articles.

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