딥러닝 모델 구조에 따른 모르타르의 단위수량 평가에 대한 비교 실험 연구

Comparative Experimental Study on the Evaluation of the Unit-water Content of Mortar According to the Structure of the Deep Learning Model

  • 조양제 (한양대학교 스마트시티공학과) ;
  • 유승환 (한양대학교 융합로봇시스템학과) ;
  • 양현민 (한양대학교 ERICA) ;
  • 윤종완 (한양대학교 ERICA 산학협력중점) ;
  • 박태준 (한양대학교 ERICA 로봇공학과) ;
  • 이한승 (한양대학교 ERICA 건축학부)
  • 발행 : 2021.11.12

초록

The unit-water content of concrete is one of the important factors in determining the quality of concrete and is directly related to the durability of the construction structure, and the current method of measuring the unit-water content of concrete is applied by the Air Meta Act and the Electrostatic Capacity Act. However, there are complex and time-consuming problems with measurement methods. Therefore, high frequency moisture sensor was used for quick and high measurement, and unit-water content of mortar was evaluated through machine running and deep running based on measurement big data. The multi-input deep learning model is as accurate as 24.25% higher than the OLS linear regression model, which shows that deep learning can more effectively identify the nonlinear relationship between high-frequency moisture sensor data and unit quantity than linear regression.

키워드

과제정보

이 연구는 2021년도 정부(과학기술정보통신부)의 재원으로 한국연구재단의 지원을 받아 수행된 기초연구사업이다.(No.2015R1A5A1037548)