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A Genetic Programming Approach to System Identification of Rainfall-Runoff Models

机译:遗传算法在降雨径流模型系统辨识中的应用

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摘要

Advancements in data acquisition, storage and retrieval are progressing at an extraordinary rate, whereas the same in the field of knowledge extraction from data is yet to be accomplished. The challenges associated with hydrological datasets, including complexity, non-linearity and multicollinearity, motivate the use of machine learning to build hydrological models. Increasing global climate change and urbanization call for better understanding of altered rainfall-runoff processes. There is a requirement that models are intelligible estimates of underlying physics, coupling explanatory and predictive components, maintaining parsimony and accuracy. Genetic Programming, an evolutionary computation technique has been used for short-term prediction and forecast in the field of hydrology. Advancing data science in hydrology can be achieved by tapping the full potential of GP in defining an evolutionary flexible modelling framework that balances prior information, simulation accuracy and strategy for future uncertainty. As a preliminary step, GP is used in conjunction with a conceptual rainfall-runoff model to solve model configuration problem. Two datasets belonging to a tropical catchment of Singapore and a temperate catchment of South Island, New Zealand with contrasting characteristics are analyzed in this study. The results indicate that proposed approach successfully combines the merits of evolutionary algorithm and conceptual knowledge in the generation of optimal model structure and associated parameters to capture runoff dynamics of catchments.
机译:数据获取,存储和检索的进步正以惊人的速度发展,而从数据提取知识的领域中,同样的事情尚待实现。与水文数据集相关的挑战(包括复杂性,非线性和多重共线性)促使人们使用机器学习来建立水文模型。全球气候变化和城市化的加剧要求人们更好地了解降雨径流过程的变化。要求模型是基础物理的可理解的估计,结合解释性和预测性成分,保持简约性和准确性。遗传编程是一种进化计算技术,已用于水文学领域的短期预测和预报。挖掘GP的全部潜能,可以在定义演化的灵活建模框架时实现GP的全部潜力,该框架可以平衡先验信息,模拟准确性和未来不确定性的策略。作为第一步,GP与概念性降雨径流模型结合使用来解决模型配置问题。本研究分析了两个具有鲜明对比特征的新加坡热带流域和新西兰南岛温带流域的数据集。结果表明,该方法成功地结合了进化算法和概念知识的优点,产生了最佳的模型结构和相关参数,以捕获流域的径流动态。

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