Construction sites are inherently high-risk environments, making safety training for workers crucial to enhancing
operational skills, reinforcing safety awareness, and reducing accident risks. Traditional centralized training
often fails to engage workers due to monotonous nature and lack of relevance, leading to low efficiency. Moreover,
critical resources such as operating instructions, safety guidelines, and accident reports are frequently mismanaged or
underutilized. Therefore, this study proposes ConSTRAG, an innovative personalized construction safety training
framework. By integrating large language model-empowered agents with knowledge graph reasoning, ConSTRAG generates
tailored training materials, significantly improving the relevance and effectiveness of safety training.
Validation tests conducted on a dataset of 11,020 questions achieved an average score of 81.25, exceeding the benchmark by
6.94. The generated personalized training materials were evaluated through an expert questionnaire survey, with an
average score of 4.16 out of 5 across five dimensions. This research contributes to overcoming individual heterogeneity in
construction safety training, enhances training efficiency and effectiveness, and holds potential for extension to
other personnel training industries.