The article describes the prerequisites for creating an automated system for planning measures to prevent occupational injuries at machine-building enterprises. The results of a study of occupational injuries based on statistical data depending on the employee’s experience, gender, working conditions, days of the week and month are given for the leading machine-building enterprises. The research of the influence of technical and economic indices of machine-building enterprises of the Western region of Ukraine on industrial injuries is described. It has been established that out of all significant technical and economic indicators of machine-building enterprises, only 3 factors significantly impact the level of occupational injuries: stock armament, energy armament, and occupational health and safety costs. The practical value of research results is to adjust plans to prevent injuries, taking into account situations with the highest probability of employee emergencies. Further research will develop and implement an automated system for planning injuries at the machine-building enterprise.
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