Combining Multiple Machine Learning Methods Based on CARS Algorithm to Implement Runoff Simulation
Yuyan Fan,
Xiaodi Fu,
Guangyuan Kan
et al.
Abstract:Runoff forecasting is crucial for water resource management and flood safety and remains a central research topic in hydrology. Recent advancements in machine learning provide novel approaches for predicting runoff. This study employs the Competitive Adaptive Reweighted Sampling (CARS) algorithm to integrate various machine learning models into a data-driven rainfall–runoff simulation model. We compare the forecasting performance of different machine learning models to improve rainfall–runoff prediction accura… Show more
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