댐 일유입량 예측을 위한 데이터 전처리 방법에 따른 머신러닝 및 딥러닝 모델 적용의 비교연구

In this study, we employed representative machine learning (ML) and deep learning (DL) models previously utilized in the fields of rainfall and runoff analysis in the water resources sector. We not only performed hyperparameter tuning of the models but also considered the characteristics of the mode...

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Bibliographic Details
Published inGeo Data pp. 92 - 102
Main Authors 조영식, 정관수
Format Journal Article
LanguageKorean
Published (사)지오에이아이데이터학회 01.06.2023
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Online AccessGet full text
ISSN2713-5004
DOI10.22761/GD.2023.0016

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Summary:In this study, we employed representative machine learning (ML) and deep learning (DL) models previously utilized in the fields of rainfall and runoff analysis in the water resources sector. We not only performed hyperparameter tuning of the models but also considered the characteristics of the model and the combination and preprocessing (such as lag-time and moving average) of meteorological and hydrological data. We then compared and evaluated the performance of the models according to various scenarios of data characteristics and ML & DL model combinations for predicting daily water inflow. To accomplish this, we utilized meteorological and hydrological data collected from 1974 to 2021 in the Soyang River Dam Basin to examine 1) precipitation, 2) inflow, and 3) meteorological data as primary independent variables. We then employed a total of 36 scenario combinations as input data for ML & DL, applying a) lag-time, b) moving average, and c) component separation conditions for inflow. To identify the most suitable data combination characteristics and ML & DL models for predicting daily inflow, we compared and evaluated 10 different ML & DL models: 1) Linear Regression, 2) Lasso, 3) Ridge, 4) Support Vector Regression, 5) Random Forest (RF), 6) Light Gradient Boosting Model, 7) XGBoost for ML, and 8) Long Short-Term Memory (LSTM) models, 9) Temporal Convolutional Network (TCN), and 10) LSTM-TCN for DL. KCI Citation Count: 0
Bibliography:https://geodata.kr/journal/view.php?number=85
ISSN:2713-5004
DOI:10.22761/GD.2023.0016