The proper care and feeding of CAMELS: How limited training data affects streamflow prediction

被引:94
作者
Gauch, Martin [1 ]
Mai, Juliane [2 ]
Lin, Jimmy [1 ]
机构
[1] Univ Waterloo, David R Cheriton Sch Comp Sci, Waterloo, ON, Canada
[2] Univ Waterloo, Civil & Environm Engn, Waterloo, ON, Canada
关键词
LSTM; XGBoost; CAMELS; Streamflow prediction; Machine learning; BENCHMARKING;
D O I
10.1016/j.envsoft.2020.104926
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
Accurate streamflow prediction largely relies on historical meteorological records and streamflow measurements. For many regions, however, such data are only scarcely available. Facing this problem, many studies simply trained their machine learning models on the region's available data, leaving possible repercussions of this strategy unclear. In this study, we evaluate the sensitivity of treeand LSTM-based models to limited training data, both in terms of geographic diversity and different time spans. We feed the models meteorological observations disseminated with the CAMELS dataset, and individually restrict the training period length, number of training basins, and input sequence length. We quantify how additional training data improve predictions and how many previous days of forcings we should feed the models to obtain best predictions for each training set size. Further, our findings show that treeand LSTM-based models provide similarly accurate predictions on small datasets, while LSTMs are superior given more training data.
引用
收藏
页数:9
相关论文
共 29 条
[1]   A Ranking of Hydrological Signatures Based on Their Predictability in Space [J].
Addor, N. ;
Nearing, G. ;
Prieto, Cristina ;
Newman, A. J. ;
Le Vine, N. ;
Clark, M. P. .
WATER RESOURCES RESEARCH, 2018, 54 (11) :8792-8812
[2]   The CAMELS data set: catchment attributes and meteorology for large-sample studies [J].
Addor, Nans ;
Newman, Andrew J. ;
Mizukami, Naoki ;
Clark, Martyn P. .
HYDROLOGY AND EARTH SYSTEM SCIENCES, 2017, 21 (10) :5293-5313
[3]   A UNIVERSAL THEOREM ON LEARNING-CURVES [J].
AMARI, SI .
NEURAL NETWORKS, 1993, 6 (02) :161-166
[4]  
[Anonymous], 1988, Statistical power analysisfor the behavioral sciences
[5]  
[Anonymous], ery and Data Mining, DOI DOI 10.1145/2939672.2939785
[6]  
Banko M., 2001, Proceedings of the first international conference on Human language technology research, P1, DOI [10.3115/1072133.1072204, DOI 10.3115/1072133.1072204]
[7]   The Plumbing of Land Surface Models: Benchmarking Model Performance [J].
Best, M. J. ;
Abramowitz, G. ;
Johnson, H. R. ;
Pitman, A. J. ;
Balsamo, G. ;
Boone, A. ;
Cuntz, M. ;
Decharme, B. ;
Dirmeyer, P. A. ;
Dong, J. ;
Ek, M. ;
Guo, Z. ;
Haverd, V. ;
Van den Hurk, B. J. J. ;
Nearing, G. S. ;
Pak, B. ;
Peters-Lidard, C. ;
Santanello, J. A., Jr. ;
Stevens, L. ;
Vuichard, N. .
JOURNAL OF HYDROMETEOROLOGY, 2015, 16 (03) :1425-1442
[8]   Application of Machine Learning Approaches in Rainfall-Runoff Modeling (Case Study: Zayandeh_Rood Basin in Iran) [J].
Dastorani, M. T. ;
Mahjoobi, J. ;
Talebi, A. ;
Fakhar, F. .
CIVIL ENGINEERING INFRASTRUCTURES JOURNAL-CEIJ, 2018, 51 (02) :293-310
[9]   An artificial neural network approach to rainfall-runoff modelling [J].
Dawson, CW ;
Wilby, R .
HYDROLOGICAL SCIENCES JOURNAL-JOURNAL DES SCIENCES HYDROLOGIQUES, 1998, 43 (01) :47-66
[10]   River flow forecasting using artificial neural networks [J].
Dibike, YB ;
Solomatine, DP .
PHYSICS AND CHEMISTRY OF THE EARTH PART B-HYDROLOGY OCEANS AND ATMOSPHERE, 2001, 26 (01) :1-7