Arid
DOI10.1016/j.jhydrol.2023.130091
Application, interpretability and prediction of machine learning method combined with LSTM and LightGBM-a case study for runoff simulation in an arid area
Bian, Lekang; Qin, Xueer; Zhang, Chenglong; Guo, Ping; Wu, Hui
通讯作者Zhang, CL
来源期刊JOURNAL OF HYDROLOGY
ISSN0022-1694
EISSN1879-2707
出版年2023
卷号625
英文摘要The runoff prediction can provide scientific basis for flood control, disaster reduction and water resources planning. Due to a large number of uncertainties in runoff prediction, it is difficult to make precise predictions. To improve the accuracy of runoff prediction, this study combines techniques of Long Short-Term Memory (LSTM) and Light Gradient Boosting Machine (LightGBM) in machine learning with reciprocal error method to develop an integrated data-driven model (i.e., LSTM-LightGBM) for runoff prediction. To demonstrate its applicability, the model is applied to the annual runoff prediction of the Caiqi hydrological monitoring station in the Shiyang River in an arid area. Indicators include Error of Peak (EP), Nash-Sutcliffe Efficiency (NSE), Root Mean Squared Error (RMSE), and Mean Absolute Error (MAE) are adopted to evaluate the prediction performance of the LSTM, LightGBM, and LSTM-LightGBM methods under the same hyperparameter combinations. Then, the interpretability of LSTM and LightGBM models is also explored based on the permutation importance method and Shapley Additive exPlanations (SHAP) values, respectively. Finally, future annual runoff at the Caiqi for the next 50 years (2025-2075) is predicted based on LSTM-LightGBM model under 12 climate scenarios. Therefore, results show that: 1. the integrated model (LSTM-LightGBM) has good performance than two single models in NSE (0.92), RMSE (0.075 million m3) and MAE (0.046 million m3) and EP value (i.e., for bridging the peak-valley runoff). 2. In this case, it is found that four feature variables have the greatest influence on the target variables through the interpretable analysis. 3. The 12 combined climate scenarios used in this investigation produced generally steady predictions. The scenarios with the highest and lowest mean values are GFDL RCP 6.0 (3.12 x 108m3) and IPSL RCP 2.6 (3.04 x 108m3), respectively, with a decrease of 24.09 % and 26.03 % compared to the mean annual runoff of 4.11 x 108m3 in the baseline period (1955-2017). These findings can provide scientific bases for future water resources planning in the downstream of the Shiyang River Basin.
英文关键词Runoff prediction Long short-term memory Light gradient boosting machine The reciprocal error method Interpretability Arid area
类型Article
语种英语
收录类别SCI-E
WOS记录号WOS:001068957300001
WOS关键词MODEL
WOS类目Engineering, Civil ; Geosciences, Multidisciplinary ; Water Resources
WOS研究方向Engineering ; Geology ; Water Resources
资源类型期刊论文
条目标识符http://119.78.100.177/qdio/handle/2XILL650/397417
推荐引用方式
GB/T 7714
Bian, Lekang,Qin, Xueer,Zhang, Chenglong,et al. Application, interpretability and prediction of machine learning method combined with LSTM and LightGBM-a case study for runoff simulation in an arid area[J],2023,625.
APA Bian, Lekang,Qin, Xueer,Zhang, Chenglong,Guo, Ping,&Wu, Hui.(2023).Application, interpretability and prediction of machine learning method combined with LSTM and LightGBM-a case study for runoff simulation in an arid area.JOURNAL OF HYDROLOGY,625.
MLA Bian, Lekang,et al."Application, interpretability and prediction of machine learning method combined with LSTM and LightGBM-a case study for runoff simulation in an arid area".JOURNAL OF HYDROLOGY 625(2023).
条目包含的文件
条目无相关文件。
个性服务
推荐该条目
保存到收藏夹
导出为Endnote文件
谷歌学术
谷歌学术中相似的文章
[Bian, Lekang]的文章
[Qin, Xueer]的文章
[Zhang, Chenglong]的文章
百度学术
百度学术中相似的文章
[Bian, Lekang]的文章
[Qin, Xueer]的文章
[Zhang, Chenglong]的文章
必应学术
必应学术中相似的文章
[Bian, Lekang]的文章
[Qin, Xueer]的文章
[Zhang, Chenglong]的文章
相关权益政策
暂无数据
收藏/分享

除非特别说明,本系统中所有内容都受版权保护,并保留所有权利。