The Development of a Quantitative Precipitation Forecast Correction Technique Based on Machine Learning for Hydrological Applications

被引:19
作者
Ko, Chul-Min [1 ]
Jeong, Yeong Yun [1 ]
Lee, Young-Mi [1 ]
Kim, Byung-Sik [2 ]
机构
[1] ECOBRAIN Co Ltd, New Business Dev Team, Jeju 63309, South Korea
[2] Kangwon Natl Univ, Dept Urban & Environm Disaster Prevent Engn, Samcheok 25913, South Korea
关键词
heavy rainfall; machine learning; hydrological application; rainfall correction; RAINFALL;
D O I
10.3390/atmos11010111
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
This study aimed to enhance the accuracy of extreme rainfall forecast, using a machine learning technique for forecasting hydrological impact. In this study, machine learning with XGBoost technique was applied for correcting the quantitative precipitation forecast (QPF) provided by the Korea Meteorological Administration (KMA) to develop a hydrological quantitative precipitation forecast (HQPF) for flood inundation modeling. The performance of machine learning techniques for HQPF production was evaluated with a focus on two cases: one for heavy rainfall events in Seoul and the other for heavy rainfall accompanied by Typhoon Kong-rey (1825). This study calculated the well-known statistical metrics to compare the error derived from QPF-based rainfall and HQPF-based rainfall against the observational data from the four sites. For the heavy rainfall case in Seoul, the mean absolute errors (MAE) of the four sites, i.e., Nowon, Jungnang, Dobong, and Gangnam, were 18.6 mm/3 h, 19.4 mm/3 h, 48.7 mm/3 h, and 19.1 mm/3 h for QPF and 13.6 mm/3 h, 14.2 mm/3 h, 33.3 mm/3 h, and 12.0 mm/3 h for HQPF, respectively. These results clearly indicate that the machine learning technique is able to improve the forecasting performance for localized rainfall. In addition, the HQPF-based rainfall shows better performance in capturing the peak rainfall amount and spatial pattern. Therefore, it is considered that the HQPF can be helpful to improve the accuracy of intense rainfall forecast, which is subsequently beneficial for forecasting floods and their hydrological impacts.
引用
收藏
页数:17
相关论文
共 12 条
[1]  
[Anonymous], FLOOD GUID STAT US G
[2]  
[Anonymous], KOREA WATER RESOUR A
[3]  
[Anonymous], 2019, ATMOSPHERE BASEL, DOI DOI 10.3390/ATMOS10050251
[4]  
Chen Tianqi., XGBoost eXtreme Gradient Boosting
[5]   Additive logistic regression: A statistical view of boosting - Rejoinder [J].
Friedman, J ;
Hastie, T ;
Tibshirani, R .
ANNALS OF STATISTICS, 2000, 28 (02) :400-407
[6]   Rainfall forecasting by technological machine learning models [J].
Hong, Wei-Chiang .
APPLIED MATHEMATICS AND COMPUTATION, 2008, 200 (01) :41-57
[7]   PM2.5 Prediction Based on Random Forest, XGBoost, and Deep Learning Using Multisource Remote Sensing Data [J].
Joharestani, Mehdi Zamani ;
Cao, Chunxiang ;
Ni, Xiliang ;
Bashir, Barjeece ;
Talebiesfandarani, Somayeh .
ATMOSPHERE, 2019, 10 (07)
[8]  
Ke GL, 2017, ADV NEUR IN, V30
[9]   Flood simulation using the gauge-adjusted radar rainfall and physics-based distributed hydrologic model [J].
Kim, Byung Sik ;
Kim, Bo Kyung ;
Kim, Hung Soo .
HYDROLOGICAL PROCESSES, 2008, 22 (22) :4400-4414
[10]  
Parmar A., 2017, P 2017 INT C INN INF