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Downscaling Global Wave Ensemble Forecasts With Machine Learning Techniques in Application to Billia Croo Test Site

机译:通过机器学习技术将全球海浪总体预报缩减规模,以应用于Billia Croo测试站点

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Accurate marine weather forecasts are essential for operational planning which could lead to significant cost savings on vessel, personnel, and equipment stand-by. There are many global forecasting products available on the market, providing free wind and wave forecasts on a global scale. However, the spatial resolutions are too coarse to fully resolve local effects. Several methods are available for forecast downscaling to represent local conditions: physical downscaling with high resolution mesoscale models, with global model providing the boundary conditions; bias correction of the global model forecast by an experienced forecaster with knowledge of local conditions; and statistical downscaling such as simple regressions or more sophisticated machine learning algorithms. The statistical downscaling approach allows fast, computationally inexpensive downscaling (as opposed to high resolution local model runs) without the need for continuous, operational support of a forecaster. Another advantage of this method is the possibility of constant improvement through continuous training as more data becomes available. The European Marine Energy Centre's (EMEC) Billia Croo test site for wave energy converters (WEC) is situated at a location dominated by high seas. This makes the operations and maintenance planning for WECs a challenge, which accurate forecasts could help to partially resolve. Datawell Waverider buoys provide in-situ wave measurements in real-time, with data also being collected and stored. This dataset allows the implementation of machine learning algorithms to dow nscale the global marine forecast products. In this study, an attempt is made to downscale operational ocean wave ensemble forecasts from NOAA/ NWS/NCEP model runs, with forecast lead times of + 12, +24, +36, +48, +72, +96 and +120 hours. After preliminary machine learning model training, an on-line training algorithm is put in place to assess its efficiency and capacity to continuously improve the accuracy. The utilisation of the wave ensemble forecasts as features in the machine learning model allows for consideration of the uncertainty of initial conditions of the forecast model run. A timeseries of in-situ observations in past hours are used as additional features, representing the preceding wave conditions.
机译:准确的海洋天气预报对于运营计划至关重要,这可能会大大节省船舶,人员和设备的成本。市场上有许多全球预报产品可用,可在全球范围内提供免费的风浪预报。但是,空间分辨率太粗糙,无法完全解决局部影响。有几种方法可以用于预测降尺度以表示局部条件:使用高分辨率中尺度模型进行物理降尺度,使用全局模型提供边界条件。由经验丰富的预报员根据当地情况对全球模型预报进行偏差校正;统计缩减,例如简单的回归或更复杂的机器学习算法。统计缩减方法允许快速,计算上便宜的缩减(与高分辨率本地模型运行相反),而无需预测者的持续操作支持。该方法的另一个优点是,随着可获得更多数据,可以通过连续训练不断改进。欧洲海洋能中心(EMEC)的比利亚克鲁(Billia Croo)波浪能转换器(WEC)测试场位于公海占主导的位置。这使WEC的运营和维护计划面临挑战,准确的预测可以帮助部分解决。 Datawell Waverider浮标提供实时的原位波测量,并且还可以收集和存储数据。该数据集允许实施机器学习算法,以扩展全球海洋预报产品的规模。在这项研究中,尝试从NOAA / NWS / NCEP模型运行中缩减可操作的海浪总体预报,预报的前置时间为+ 12,+ 24,+ 36,+ 48,+ 72,+ 96和+120小时。在初步的机器学习模型训练之后,将采用在线训练算法来评估其效率和能力,以不断提高准确性。在机器学习模型中将波系集成预测用作特征可以考虑预测模型运行的初始条件的不确定性。过去几个小时的现场观测的时间序列被用作附加特征,代表了先前的波浪情况。

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