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NTIS 바로가기지능정보연구 = Journal of intelligence and information systems, v.28 no.1, 2022년, pp.329 - 352
It is reported that particulate matter(PM) penetrates the lungs and blood vessels and causes various heart diseases and respiratory diseases such as lung cancer. The subway is a means of transportation used by an average of 10 million people a day, and although it is important to create a clean and ...
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