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Multi-Objective Automatic Calibration of a Semi-Distributed Watershed Model using Pareto Ordering Optimization and Genetic Algorithm

机译:帕累托订购优化和遗传算法的半分布式流域模型的多目标自动校准

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This study explored the application of a multi-objective evolutionary algorithm (MOEA) and Pareto ordering in the multiple-objective automatic calibration of the Soil and Water Assessment Tool (SWAT). SWAT was calibrated in the Calapooia watershed, Oregon, USA, with two different pairs of objective functions in a cluster of 24 parallel computers. The non-dominated sorting genetic algorithm (NSGA-II), a fast MOEA, and SWAT were called from a parallel genetic algorithm library (PGAPACK) to determine the Pareto optimal set. One hundred fifty-five parameters were explicitly calibrated (9 for each 17 hydrologic response units [HRUs] and 2 for the whole watershed). With the root mean square error (RMSE) and mean absolute error (MAE) of the daily flows asobjective functions, the Pareto front converged to a narrow range of solution set. A wider Pareto optimal front was formed when the RMSE of high and low flows were used as objective functions. The calibrated SWAT model simulated well the daily streamflowof the Calapooia River for a 3-year period. The daily Nash-Sutcliffe efficiency was 0.85 at calibration and 0.80 at validation. Automatic multi-objective calibration of a complex process-based watershed model such as SWAT was successfully implemented using Pareto ordering optimization and an MOEA. Simultaneous automatic-calibration of flows and water quality parameters for the whole watershed and for different sub-basins, dynamic link with economic models, and integration of uncertainty and sensitivitymethods are now explored.
机译:本研究探讨了多目标进化算法(MOEA)和Pareto排序在土壤和水评估工具(SWAT)的多目标自动校准中的应用。 SWAT在美国俄勒冈州俄勒冈州的Calapooia流域校准,在24台平行计算机的集群中,两对不同的客观功能。从并行遗传算法库(PGAPACK)调用非主导的分类遗传算法(NSGA-II),快速MOEA和SWAT以确定Pareto最佳集合。明确校准了一百五十五个参数(每个17个水文响应单元[HRUS]和整个流域的2个参数)。随着每日流动函数的根均线(RMSE)和平均误差(MAE),Pareto前部会聚到窄范围的解决方案集。当使用高和低流量的RMSE被用作客观功能时,形成了更广泛的Pareto最佳前线。校准的SWAT模型模拟了Calapooia River的日常流式流量为3年。校准时,每日NASH-SUTCLIFFE效率为0.85,验证时为0.80。使用Pareto订购优化和MOEA成功地实施了基于复杂的基于过程的流域模型的自动多目标校准如SWAT。目前探讨了整个流域的流动和水质参数的同时自动校准流动和水质参数,与经济模型的动态联系,以及不确定性和敏感性方法的整合。

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