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Early stopping technique using a genetic algorithm for calibration of an urban runoff model

机译:基于遗传算法对城市径流模型进行标定的早期停止技术

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ABSTRACT Identifying suitable parameter sets for use in catchment modelling remains a critical issue in hydrology. This paper describes an early stopping technique (EST) for use during calibration of a multi-parameter urban catchment modelling system. The proposed method takes advantage of MODE and lower confidence limit (LCL) functions in statistical analysis of spanning set of objective function values. The paper also introduces a monitoring process and regularization techniques to avoid under/overfitting during the calibration and to enhance generalisation performance. The methodology is assessed using SWMM and linked with a Genetic Algorithm for calibration of a Powells Creek catchment model in Sydney, Australia. Results demonstrate that the statistical spanning set analysis approach overcomes issues of poor interpretation and deterioration in the model’s generalisation properties. By stopping early, the calibration process avoided overfitting; this was indicated by too closely fitting to the calibration dataset and a failure to fit to the monitoring dataset.
机译:摘要 确定合适的参数集用于集水区建模仍然是水文学的一个关键问题。本文介绍了一种用于多参数城市集水区建模系统校准的早期停止技术 (EST)。该方法利用MODE和下置信限(LCL)函数对目标函数值的跨度集进行统计分析。本文还介绍了一种监测过程和正则化技术,以避免校准过程中的欠拟合/过拟合,并增强泛化性能。该方法使用SWMM进行评估,并与遗传算法相关联,用于校准澳大利亚悉尼的Powells Creek集水区模型。结果表明,统计跨集分析方法克服了模型泛化特性解释不畅和劣化问题。通过提前停止,校准过程避免了过拟合;这与校准数据集的拟合过于紧密,而无法与监测数据集拟合。

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