Application of Machine Learning Techniques to Ensure Safer Work Environments in Estonia

Name
Mario Käära
Abstract
Occupational accidents are a major global concern which results in significant human and economic losses. In Estonia, over 4,000 work-related accidents are recorded annually, and 428 fatalities were reported between 2001 and 2021. For example, work-related accidents led to a loss of 141,000 workdays and approximately €5.3 million in 2021. Several studies across different countries have recently proposed automated data analytic tools and machine learning based models to understand occupational hazards and predict the likelihood and severity of accidents. These applications can identify high-risk workers and ensure robust safety management systems across various industries, such as construction and manufacturing. However, these proposed models are not directly applicable to Estonia, and no specific tools can handle the local settings. Through this Thesis, we aim to develop automated models based on machine learning techniques to predict the severity of occupational accidents in Estonia. We also identify critical factors for different industries contributing to these accidents. Our dataset consists of 82,641 work-related accidents, featuring 37 variables, and spans the period from 2002 to 2022. The Thesis demonstrates that the best-performing models, including Support Vector Machine and Logistic Regression, can predict accident severity and identify crucial factors for targeted prevention strategies. The primary outcomes include critical insights into the important factors and the development of tailored machine learning models for occupations in specific economic sectors. Therefore, we propose accurate and efficient automated tools that can handle the inherent data challenges and ensure the significance of targeted modelling in accident prevention. The Thesis illustrates the potential of understanding the data patterns, developing specific data analytic tools and machine learning algorithms to improve decision-making in workplace safety and developing cost-effective prevention strategies.
Graduation Thesis language
English
Graduation Thesis type
Master - Conversion Master in IT
Supervisor(s)
Roshni Chakraborty
Defence year
2023
 
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