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Ensemble models from machine learning: an example of wave runup and coastal dune erosion

机译:机器学习的集合模型:海浪上升和海岸沙丘侵蚀的例子

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After decades of study and significant data collection of time-varying swash on sandy beaches, there is no single deterministic prediction scheme for wave runup that eliminates prediction error – even bespoke, locally tuned predictors present scatter when compared to observations. Scatter in runup prediction is meaningful and can be used to create probabilistic predictions of runup for a given wave climate and beach slope. This contribution demonstrates this using a data-driven Gaussian process predictor; a probabilistic machine-learning technique. The runup predictor is developed using 1?year of hourly wave runup data (8328?observations) collected by a fixed lidar at Narrabeen Beach, Sydney, Australia. The Gaussian process predictor accurately predicts hourly wave runup elevation when tested on unseen data with a root-mean-squared error of 0.18m and bias of 0.02m. The uncertainty estimates output from the probabilistic GP?predictor are then used practically in a deterministic numerical model of coastal dune erosion, which relies on a parameterization of wave runup, to generate ensemble predictions. When applied to a dataset of dune erosion caused by a storm event that impacted Narrabeen Beach in?2011, the ensemble approach reproduced ~85% of the observed variability in dune erosion along the 3.5 km beach and provided clear uncertainty estimates around these predictions. This work demonstrates how data-driven methods can be used with traditional deterministic models to develop ensemble predictions that provide more information and greater forecasting skill when compared to a single model using a deterministic parameterization – an idea that could be applied more generally to other numerical models of geomorphic systems.
机译:经过几十年的研究和沙滩上随时间变化的冲积的大量数据收集,没有一个单一的确定性波前预测方案可以消除预测误差–与观测值相比,即使是定制的局部调谐预测器也存在散射。径流预测中的散布意义重大,可以用于为给定的波浪气候和海滩坡度创建径流的概率预测。此贡献使用数据驱动的高斯过程预测器证明了这一点。一种概率机器学习技术。利用澳大利亚悉尼悉尼纳拉宾海滩的固定激光雷达收集的1小时每小时波加速数据(8328次观测值)来开发加速预报器。当在看不见的数据上进行测试时,高斯过程预测器可以准确地预测小时波上升高度,其均方根误差为0.18m,偏差为0.02m。然后,将概率GP预测器的不确定性估计输出实际用于海岸沙丘侵蚀的确定性数值模型中,该模型依赖于波径的参数化来生成整体预测。当将其应用到2011年暴风雨影响纳拉宾海滩的沙丘侵蚀数据集时,该集成方法重现了3.5公里海滩沙丘侵蚀观测到的变化的〜85%,并为这些预测提供了清晰的不确定性估计。这项工作演示了如何将数据驱动的方法与传统的确定性模型一起使用,以开发整体预测,与使用确定性参数化的单个模型相比,该预测可提供更多信息和更强的预测技巧-该想法可以更广泛地应用于其他数值模型地貌系统。

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