Litcius/Paper detail

Automatic SWMM Parameter Calibration Method Based on the Differential Evolution and Bayesian Optimization Algorithm

Jiawei Gao, Ji Liang, Yu Lu, Ruilong Zhou, Xin Lu

2023Water13 citationsDOIOpen Access PDF

Abstract

In response to the low accuracy exhibited by the Storm Water Management Model (SWMM), we propose an enhanced Differential Evolution and Bayesian Optimization Algorithm (DE-BOA). This algorithm integrates the global search capability of the differential evolution algorithm with the local search capability of the Bayesian optimization algorithm, which enables a more comprehensive exploration of the vector solution space. A comparative analysis of various types of rainfall events is conducted. For model calibration and validation, a drainage subzone in Jinshazhou, Guangzhou City, is selected as the research subject. In total, 20 specific rainfall events are selected, and the DE-BOA algorithm outperforms the manual calibration, the differential evolution algorithm, and the Bayesian optimization algorithm regarding model calibration accuracy. Furthermore, the DE-BOA algorithm exhibits robust adaptability to rainfall events characterized by multiple peaks and higher precipitation levels, with the Nash–Sutcliffe efficiency coefficient values surpassing 0.90. This study’s findings could hold significant reference value for dynamically updating model parameters, thereby enhancing the model simulation performance and improving the accuracy of the urban intelligent water management platform.

Topics & Concepts

Storm Water Management ModelDifferential evolutionAlgorithmCalibrationBayesian probabilityComputer scienceMathematical optimizationBayesian optimizationAdaptabilityEvolutionary algorithmData miningMathematicsArtificial intelligenceStatisticsBiologyStormwaterSurface runoffEcologyFlood Risk Assessment and ManagementHydrology and Watershed Management StudiesHydrological Forecasting Using AI