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신경망 모델을 이용한 40MPa, 60MPa 고유동 콘크리트의 최적배합설계
The Optimum Mix Design of 40MPa, 60MPa High Fluidity Concrete using Neural Network Model
조성원 ( Cho Sung-won ) , 조성은 ( Cho Sung-eun ) , 김영수 ( Kim Young-su )
UCI I410-ECN-0102-2022-500-000701747
이 자료는 4페이지 이하의 자료입니다.

Recently, the demand for high fluidity concrete has been increased due to skyscrapers. However, it has its own limits. First of all, high fluidity concrete has large variation and through trial & error it costs lots of money and time. Neural network model has repetitive learning process which can solve the problem while training the data. Therefore, the purpose of this study is to predict optimum mix design of 40MPa, 60MPa high fluidity concrete by using neural network model and verifying compressive strength by applying real data. As a result, comparing collective data and predicted compressive strength data using MATLAB, 40MPa mix design error rate was 1.2%~1.6% and 60MPa mix design error rate was 2%~3%. Overall 40MPa mix design error rate was less than 60MPa mix design error rate.

[자료제공 : 네이버학술정보]
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