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在城市地区的雨水水质模拟中,SWMM 模型的新优化策略。

New optimization strategies for SWMM modeling of stormwater quality applications in urban area.

机构信息

Department of Civil Engineering and Architecture (DICAr), University of Pavia, Pavia, Italy.

Department of Civil Engineering and Architecture (DICAr), University of Pavia, Pavia, Italy; Interdepartmental Centre for Water Research (CRA), University of Pavia, Pavia, Italy.

出版信息

J Environ Manage. 2024 Jun;361:121244. doi: 10.1016/j.jenvman.2024.121244. Epub 2024 May 29.

Abstract

Build-up/wash-off models were originally developed for small-scale laboratory facilities with uniform properties. The effective translation of these models to catchment scale necessitates the meticulous calibration of model parameters. The present study combines the Mat-SWMM tool with a genetic algorithm (GA) to improve the calibration of build-up and wash-off parameters. For this purpose, Mat-SWMM was modified to equip it with the capacity to provide comprehensive water quality analysis outcomes. Additionally, this research also conducts a comparative examination of two distinct types of objective functions in the optimization. Rather than depending on previous literature, this study undertook a numerical campaign to ascertain an appropriate range for the relevant parameters within the case study, thereby ensuring the optimization algorithm's efficient functionality. This research also implements an integrated event calibration approach, i.e., a novel method that calibrates all rainfall events collectively, thus improving systemic interaction representation and model robustness. The findings indicate that employing this methodology significantly enhances the reliability of the outcomes, thereby establishing a more robust procedure. The first objective function (TSS instantaneous less squared difference function, OF 1), which is widely employed in the literature, was designed to minimize the difference between observed and predicted instantaneous Total Suspended Solids (TSS) concentrations. In contrast, the second function (mass and mass peak consistency function, OF 2) considers integral model outputs, i.e., the overall mass balance, the time of the peak mass flow rate, and its intensity. The analysis of the outputs revealed that both objective functions demonstrated sufficient performance. OF 1 provided slightly better performance in predicting the TSS concentrations, whereas OF 2 demonstrated superior ability in capturing global event characteristics. Notably, the optimal parameter set identified through OF 2 aligned with the physically plausible ranges traditionally recommended in technical manuals for urban catchments. In contrast, OF 1's optimal set necessitated an expansion in the acceptable parameter ranges. Finally, from a computational burden viewpoint, OF 1 demanded a significantly higher number of function evaluations, thus implying an escalating computational cost as the range expands. Conversely, OF 2 necessitated fewer evaluations to converge toward the optimal solution.

摘要

建立-冲刷模型最初是为具有均匀特性的小规模实验室设施开发的。要将这些模型有效地转化为集水区规模,就需要对模型参数进行细致的校准。本研究结合 Mat-SWMM 工具和遗传算法(GA)来改进建立和冲刷参数的校准。为此,对 Mat-SWMM 进行了修改,使其具备提供全面水质分析结果的能力。此外,本研究还对优化中的两种不同类型的目标函数进行了比较研究。本研究没有依赖以前的文献,而是进行了数值模拟活动,以确定案例研究中相关参数的适当范围,从而确保优化算法的高效功能。本研究还实施了一种综合事件校准方法,即一种集体校准所有降雨事件的新方法,从而改善系统交互表示和模型稳健性。研究结果表明,采用这种方法显著提高了结果的可靠性,从而建立了一个更稳健的程序。第一个目标函数(TSS 瞬时平方差函数,OF1),在文献中被广泛使用,旨在最小化观测和预测瞬时总悬浮固体(TSS)浓度之间的差异。相比之下,第二个函数(质量和质量峰值一致性函数,OF2)考虑了模型的整体输出,即总质量平衡、最大质量流率出现的时间及其强度。对输出的分析表明,这两个目标函数都表现出了足够的性能。OF1 在预测 TSS 浓度方面提供了稍好的性能,而 OF2 在捕捉全局事件特征方面表现出了更强的能力。值得注意的是,通过 OF2 确定的最优参数集与传统上推荐用于城市集水区的技术手册中的物理上合理的范围相吻合。相比之下,OF1 的最优参数集需要扩大可接受的参数范围。最后,从计算负担的角度来看,OF1 需要进行更多的函数评估,因此随着范围的扩大,计算成本也会不断增加。相比之下,OF2 需要更少的评估就能收敛到最优解。

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