Real-time streamflow forecasting: AI vs. Hydrologic insights

Witold F. Krajewski, Ganesh R. Ghimire, Ibrahim Demir, Ricardo Mantilla

Research output: Contribution to journalArticlepeer-review

23 Scopus citations

Abstract

In this paper, we propose a set of simple benchmarks for the evaluation of data-based models for real-time streamflow forecasting, such as those developed with sophisticated Artificial Intelligence (AI) algorithms. The benchmarks are also data-based and provide context to judge incremental improvements in the performance metrics from the more complicated approaches. The benchmarks include temporal and spatial persistence, persistence corrected for baseflow and streamflow, as well as river distance weighted runoff obtained from space-time distributed rainfall. In the development of the benchmarks, we use basic hydrologic insights such as flow aggregation by the river network, scale-dependence in basin response, streamflow partitioning into quick flow and baseflow, water travel time, and rainfall averaging by the basin width function. The study uses 140 streamflow gauges in Iowa that cover a range of basin scales between 7 and 37,000 km2. The data cover 17 years. This work demonstrates that the proposed benchmarks can provide good performance according to several commonly used metrics. For example, streamflow forecasting at half of the test locations across years achieves a Kling-Gupta Efficiency (KGE) score of 0.6 or higher at one-day ahead lead time, and 20% of cases reach the KGE of 0.8 or higher. The proposed benchmarks are easy to implement and should prove useful for developers of data-based as well as physics-based hydrologic models and real-time data assimilation techniques.

Original languageEnglish
Article number100110
JournalJournal of Hydrology X
Volume13
DOIs
StatePublished - Dec 1 2021

Funding

The Iowa Flood Center at the University of Iowa funded this study. The first author also acknowledges partial support from the Rose & Joseph Summers endowment. The authors acknowledge fruitful discussions with our colleagues Felipe Quintero, Zhongrun Xiang, Radoslaw Goska, Bongchul Seo, Navid Jadidoleslam, and Nicolas Velasquez. The Iowa Flood Center at the University of Iowa funded this study. The first author also acknowledges partial support from the Rose & Joseph Summers endowment. The authors acknowledge fruitful discussions with our colleagues Felipe Quintero, Zhongrun Xiang, Radoslaw Goska, Bongchul Seo, Navid Jadidoleslam, and Nicolas Velasquez.

Keywords

  • Artificial intelligence
  • Benchmarking
  • Hydrologic insights
  • Iowa
  • Persistence
  • Real-time streamflow forecasting

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