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Application of the Improved K-Nearest Neighbor-Based Multi-Model Ensemble Method for Runoff Prediction

Tao Xie, Lu Chen, Bin Yi, Siming Li, Zhiyuan Leng, Xiaoxue Gan, Ziyi Mei

2023Water25 citationsDOIOpen Access PDF

Abstract

Hydrological forecasting plays a crucial role in mitigating flood risks and managing water resources. Data-driven hydrological models demonstrate exceptional fitting capabilities and adaptability. Recognizing the limitations of single-model forecasting, this study introduces an innovative approach known as the Improved K-Nearest Neighbor Multi-Model Ensemble (IKNN-MME) method to enhance the runoff prediction. IKNN-MME dynamically adjusts model weights based on the similarity of historical data, acknowledging the influence of different training data features on localized predictions. By combining an enhanced K-Nearest Neighbor (KNN) algorithm with adaptive weighting, it offers a more powerful and flexible ensemble. This study evaluates the performance of the IKNN-MME method across four basins in the United States and compares it to other multi-model ensemble methods and benchmark models. The results underscore its outstanding performance and adaptability, offering a promising avenue for improving runoff forecasting.

Topics & Concepts

Adaptabilityk-nearest neighbors algorithmWeightingBenchmark (surveying)Ensemble forecastingComputer scienceData miningEnsemble learningSimilarity (geometry)Flood mythArtificial intelligenceMachine learningGeographyGeodesyEcologyRadiologyArchaeologyMedicineBiologyImage (mathematics)Hydrology and Watershed Management StudiesHydrological Forecasting Using AIFlood Risk Assessment and Management