Simultaneous Optimization of SWMM Parameters by the Dynamic System Response Curve with Multi-Objective Function

Water Resources Management(2023)

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Abstract
The effective and efficient optimization of Storm Water Management Model (SWMM) parameters is critical to improving the accuracy of the urban rainfall-runoff simulation. Therefore, it is necessary to investigate the applicability of the dynamic system response curve (DSRC) method in optimizing SWMM model parameters, which is newly proposed to solve the nonlinear problems encountered by current widely used optimization methods. A synthetic case, free of data and model errors, was used to examine the applicability of the DSRC with single-objective or multi-objective functions in finding the optimum parameter values known by assumption. A real watershed case was selected for the optimization of SWMM parameters by use of DSRC with the most suitable objective function, which was determined by a synthetic case. In addition, the advantages of the DSRC in SWMM parameter optimization over the Particle Swarm Optimization(PSO) and Multiple Objective Particle Swarm Optimization(MOPSO) algorithms were analyzed in terms of NSE, RE_v , RE_p , and EP_t . The results revealed that the DSRC with multi-objective function could find the global optima of all SWMM model parameters in the synthetic case, but it could only attain part of them with a single-objective function. In the real watershed case, the DSRCS-optimized SWMM performed better than MOPSO-optimized one with an increase of average NSE by 5.8
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Key words
Dynamic system response curve,PSO/MOPSO algorithms,SWMM model,Parameter optimization,Multi-objective function
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