Hydrological time series forecasting using simple combinations: Big data testing and investigations on one-year ahead river flow predictability
Georgia Papacharalampous, Hristos Tyralis

TL;DR
This study introduces a simple, flexible hydrological forecasting methodology that combines multiple models using median aggregation, tested on extensive river flow data across North America and Europe, demonstrating long-term effectiveness.
Contribution
The paper proposes a novel median-based combination approach for hydrological time series forecasting and evaluates its performance across a large, diverse dataset, providing insights into model integration.
Findings
The combined methodology outperforms individual models in long-term forecasting accuracy.
Using more than two models in combination enhances forecast reliability.
Linear regression analyses reveal relationships between performance metrics and river flow statistics.
Abstract
Delivering useful hydrological forecasts is critical for urban and agricultural water management, hydropower generation, flood protection and management, drought mitigation and alleviation, and river basin planning and management, among others. In this work, we present and appraise a new simple and flexible methodology for hydrological time series forecasting. This methodology relies on (a) at least two individual forecasting methods and (b) the median combiner of forecasts. The appraisal is made by using a big dataset consisted of 90-year-long mean annual river flow time series from approximately 600 stations. Covering large parts of North America and Europe, these stations represent various climate and catchment characteristics, and thus can collectively support benchmarking. Five individual forecasting methods and 26 variants of the introduced methodology are applied to each time…
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Taxonomy
MethodsLinear Regression
