DNN과 LSTM을 활용한 콘크리트의 건조수축량 예측성능 평가

Performance Evaluation of Concrete Drying Shrinkage Prediction Using DNN and LSTM

  • 발행 : 2023.05.17

초록

In this study, the performance of the prediction model was compared and analyzed using DNN and LSTM learning models to predict the amount of dry shrinkage of the concrete. As a result of the analysis, DNN model had a high error rate of about 51%, indicating overfitting to the training data. But, the LSTM learning model showed a relatively higher accuracy with an error rate of 12% compared to the DNN model. Also, the Pre_LSTM model which preprocess data, showed the performance with an error rate of 9% and a coefficient of determination of 0.887 in the LSTM learning model.

키워드