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NTIS 바로가기Journal of Korean Society of Industrial and Systems Engineering = 한국산업경영시스템학회지, v.42 no.4, 2019년, pp.203 - 210
이종영 (전북대학교 산업정보시스템공학과) , 최명진 (호원대학교 국방무기체계학과) , 주영인 (전북대학교 산업정보시스템공학과) , 양재경 (전북대학교 산업정보시스템공학과)
Recently, a number of researchers have produced research and reports in order to forecast more exactly air quality such as particulate matter and odor. However, such research mainly focuses on the atmospheric diffusion models that have been used for the air quality prediction in environmental engine...
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