Predicting the Probability of Abrupt Changes to Wave-Generated Seafloor Sand Ripples

IF 3.5 2区 地球科学 Q1 GEOSCIENCES, MULTIDISCIPLINARY Journal of Geophysical Research: Earth Surface Pub Date : 2024-10-10 DOI:10.1029/2023JF007470
A. M. Penko, W. S. Kearney
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Abstract

A new, non-dimensional ripple reset parameter and a stochastic point process model is used to estimate the likelihood of propagating ocean waves to form ripples on sandy seabeds. The ripple reset parameter is a function only of water depth, significant wave height, and mean grain size. Ripple formation is estimated by the magnitude of an intensity function based on a time series of the ripple reset parameter. The point process model is trained with a time series of observed waves and ripple change, and is then applied to predict the probability that a ripple field with a different geometry will form within a given time interval from another time series of wave data. The model is trained and tested with four field deployments at three field sites to determine its skill in predicting the ripple formation (a) at one field site over one time period after being trained with observations from the same site over a different time period, and (b) at one field site after being trained with observations from another field site. Results show that while the model is sufficient at predicting ripple formation in both scenarios, it is sensitive to the quality and quantity of the training data. Increasing the amount of training data greatly improves model performance. Employing a stochastic model based on a simple ripple reset parameter reduces tunable model parameters and provides a prediction of the probability for ripple formation given only a water depth, grain size, and time series of wave heights.

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预测波浪产生的海底沙纹发生突变的概率
利用一个新的、非二维波纹重置参数和一个随机点过程模型来估算传播的海浪在沙质海床上形成波纹的可能性。波纹重置参数仅是水深、显著波高和平均粒径的函数。波纹的形成是通过基于波纹重置参数时间序列的强度函数的大小来估计的。点过程模型通过观测到的波浪和波纹变化的时间序列进行训练,然后根据另一个波浪数据时间序列预测在给定时间间隔内形成不同几何形状的波纹场的概率。该模型在三个现场进行了四次实地部署训练和测试,以确定其预测波纹形成的技能:(a) 根据同一现场不同时间段的观测数据进行训练后,在一个时间段内在一个现场形成的波纹;(b) 根据另一个现场的观测数据进行训练后,在一个现场形成的波纹。结果表明,虽然该模型足以预测两种情况下波纹的形成,但它对训练数据的质量和数量很敏感。增加训练数据量可大大提高模型性能。采用基于简单波纹重置参数的随机模型,减少了可调整的模型参数,只需给定水深、粒径和波高时间序列,就能预测波纹形成的概率。
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来源期刊
Journal of Geophysical Research: Earth Surface
Journal of Geophysical Research: Earth Surface Earth and Planetary Sciences-Earth-Surface Processes
CiteScore
6.30
自引率
10.30%
发文量
162
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