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Forecasting seasonal to multi-year shoreline change

机译:预测季节性到多年的海岸线变化

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This contribution details a simple empirical model for forecasting shoreline positions at seasonal to interannual time-scales. The one-dimensional (1-D) model is a simplification of a 2-D behavioural-template model proposed by Davidson and Turner (2009). The new model is calibrated and tested using five-years of weekly video-derived shoreline data from the Gold Coast, Australia. The modelling approach first utilises a least-squares methodology to calibrate the empirical model coefficients using the first half of the dataset of observed shoreline movement in response to known forcing by waves. The model is then verified by comparison of hindcast shoreline positions to the second half of the observed shoreline dataset. One thousand synthetic time-series of wave height and period are generated that encapsulate the statistical characteristics of the modelled wave field, retaining the observed seasonal variability and sequencing characteristics. The calibrated model is used in conjunction with the simulated wave time-series to perform Monte Carlo forecasting of the resulting shoreline positions. The ensemble-mean of the 1000 individual five-year shoreline simulations is compared to the unseen shoreline time-series. A simple linear trend forecast of the shoreline position was used as a baseline for assessing the performance of the model. The model performance relative to this baseline prediction was quantified by several objective methods, including cross-correlation (r), root mean square (RMS) error analysis and Brier Skill tests. Importantly, these tests involved no prior knowledge of either the wave forcing or shoreline response. The new forecast model was found to significantly improve shoreline predictions relative to the simple linear trend model, capturing well both the trend and seasonal shoreline variabilities observed at this site. Brier Skill Scores (BSS) indicate that the model forecasts based on unseen data were rated as 'excellent' (BSS = 0.83), and root mean square errors were less than 7 m (≈14% of the observed variability). The standard deviations of the 1000 individual simulations from ensemble-averaged 'mean' forecast were found to provide a useful means of predicting the higher-frequency (individual storm) shoreline variability, with 98% of the observed shoreline data falling within two standard deviations of the forecast position.
机译:此贡献详细介绍了一个简单的经验模型,用于预测季节到年际时间尺度上的海岸线位置。一维(1-D)模型是Davidson和Turner(2009)提出的2-D行为模板模型的简化。新模型使用来自澳大利亚黄金海岸的五年视频每周海岸线数据进行校准和测试。建模方法首先利用最小二乘方法使用响应于已知海浪强迫的观测海岸线运动数据集的前半部分来校准经验模型系数。然后,通过比较后预报海岸线位置与观察到的海岸线数据集的后半部分来验证模型。生成了1000个波高和周期的合成时间序列,这些时间序列封装了建模波场的统计特征,并保留了观察到的季节性变化和排序特征。校准的模型与模拟的波浪时间序列结合使用,以对产生的海岸线位置进行蒙特卡洛预测。将1000个单独的五年海岸线模拟的总体平均值与看不见的海岸线时间序列进行比较。海岸线位置的简单线性趋势预测被用作评估模型性能的基准。相对于此基准预测的模型性能通过几种客观方法进行了量化,包括互相关(r),均方根(RMS)误差分析和Brier Skill测试。重要的是,这些测试不涉及波浪强迫或海岸线响应的先验知识。发现新的预测模型相对于简单的线性趋势模型显着改善了海岸线预测,很好地捕获了在该站点观察到的趋势和季节性海岸线变化。 Brier技能评分(BSS)表明,基于看不见数据的模型预测被评为“优秀”(BSS = 0.83),并且均方根误差小于7 m(约为观察到的变异性的14%)。与整体平均“均值”预测相比,发现了1000个单独模拟的标准偏差,为预测较高频率(单个风暴)的海岸线变化提供了一种有用的方法,观测到的海岸线数据的98%属于以下两个标准偏差:预测位置。

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