Litcius/Paper detail

Using the General Regression Neural Network Method to Calibrate the Parameters of a Sub-Catchment

Qing-Chi Cai, Tsung-Hung Hsu, Jen‐Yang Lin

2021Water14 citationsDOIOpen Access PDF

Abstract

Computer software is an effective tool for simulating urban rainfall–runoff. In hydrological analyses, the storm water management model (SWMM) is widely used throughout the world. However, this model is ineffective for parameter calibration and verification owing to the complexity associated with monitoring data onsite. In the present study, the general regression neural network (GRNN) is used to predict the parameters of the catchment directly, which cannot be achieved using SWMM. Then, the runoff curve is simulated using SWMM, employing predicted parameters based on actual rainfall events. Finally, the simulated and observed runoff curves are compared. The results demonstrate that using GRNN to predict parameters is helpful for achieving simulation results with high accuracy. Thus, combining GRNN and SWMM creates an effective tool for rainfall–runoff simulation.

Topics & Concepts

Storm Water Management ModelSurface runoffArtificial neural networkCalibrationComputer scienceStormSoftwareRegression analysisHydrological modellingEnvironmental scienceRunoff curve numberHydrology (agriculture)Drainage basinMeteorologyStatisticsMachine learningStormwaterEngineeringMathematicsGeologyGeotechnical engineeringWatershedCartographyGeographyBiologyProgramming languageClimatologyEcologyHydrology and Watershed Management StudiesHydrological Forecasting Using AIFlood Risk Assessment and Management