Abstract:
The downstream petroleum industry in Ghana is one among many sectors 
characterised by the convergence of numerous hazardous exposures that can 
potentially cause serious catastrophe and work-related accidents. Several 
studies have been conducted separately on the applications of artificial 
intelligence technology, occupational safety, the effects of artificial intelligence 
on safety, and technology and occupational safety. The general objective of the 
study was to analyse artificial intelligence technology application and
occupational safety to improve occupational safety in downstream petroleum
industry. The study applied the quantitative research approach. The study relied 
on primary interval data obtained through questionnaire administration. The 
data were processed with tools from STATA 15. Data were analysed using
descriptive, correlation and synthesis frameworks and descriptive statistics, 
regression techniques. The results of the study showed that predictive analytics 
of the environment was found to be the most common area of AI technology
application in the downstream petroleum industry, followed by cyber security 
and compliance with safety rules. Technology attitudes, trust, social norms, and 
technology adoption culture were observed to be significant determinants of AI 
acceptance in the downstream petroleum sector. The primary effect of AI 
technology application in the downstream petroleum sector appears to be 
precision in decision. A novel framework for model AI technology application 
for improved occupational safety comprising of the following system 
characteristics: inputs, AI-based models, occupational safety modes, and 
efficiency indices. The study findings have implications for how occupational 
health and safety within the downstream petroleum sector is addressed