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The use of genetic programming to develop a predictor of swash excursion on sandy beaches

机译:遗传编程在沙滩上开发斯瓦什郊区的预测因子

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摘要

We use genetic programming (GP), a type of machine learning (ML) approach, to predict the total and infragravity swash excursion using previously published data sets that have been used extensively in swash prediction studies. Three previously published works with a range of new conditions are added to this data set to extend the range of measured swash conditions. Using this newly compiled data set we demonstrate that a ML approach can reduce the prediction errors compared to well-established parameterizations and therefore it may improve coastal hazards assessment (e.g. coastal inundation). Predictors obtained using GP can also be physically sound and replicate the functionality and dependencies of previous published formulas. Overall, we show that ML techniques are capable of both improving predictability (compared to classical regression approaches) and providing physical insight into coastal processes.
机译:我们使用遗传编程(GP),一种机器学习(ML)方法,以预测使用先前发布的数据集的总和和Intravavity涡轮偏移,这些数据集已广泛用于涡旋预测研究。 在此数据集中添加了三个先前发布的具有一系列新条件的工作,以扩展测量旋转条件的范围。 使用这种新编译的数据集,我们证明了与良好的参数化相比,ML方法可以减少预测误差,因此可以改善沿海危险评估(例如沿海淹没)。 使用GP获得的预测器也可以是物理上的声音并复制先前发布公式的功能和依赖性。 总的来说,我们表明ML技术能够提高可预测性(与古典回归方法相比)并提供对沿海过程的身体洞察。

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