The Collected data-based Air Pollutant Emission Prediction for construction equipment in Construction Sites

건설장비의 배출가스 데이터 기반 대기오염물질 배출량 예측 시스템

  • 노재윤 (인하대학교 건축학부(건축공학과)) ;
  • 김유진 (인하대학교 건축학부(건축공학과)) ;
  • 김수민 (인하대학교 건축학부(건축공학과)) ;
  • 한승우 (인하대학교 건축학부(건축공학과))
  • Published : 2021.11.12

Abstract

As non-road mobile pollutants such as construction equipment are emerging as the main cause of air pollutants emission, construction equipment regulations are gradually strengthening. Research was conducted by correcting the emission coefficient to calculate and predict air pollutant emissions of construction equipment, but it did not reflect site variables such as field and equipment conditions that affect actual emissions. This study derived an Artificial Neural Network emission prediction model based on the actual emission data of excavators and trucks measured at the site and proposed a platform to predict the emission of air pollutants at the site according to the working size and conditions. Through this, it is possible to establish an eco-friendly process plan using a model from the construction plan.

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Acknowledgement

본 논문은 한국연구재단의 지원(과제번호 2021R1A2C1007467)의 지원으로 수행된 연구입니다.