论文标题
分布式海浪传感器的同化
Assimilation of distributed ocean wave sensors
论文作者
论文摘要
原位海浪观测对于提高模型技能和验证遥感波测量至关重要。从历史上看,由于传统的波浪浮标和传感器的巨大成本和复杂性,这种观察结果极为稀疏。在这项工作中,我们提出了一个最近部署的自由流入卫星连接的地面气象浮标的网络,该网络可在北太平洋盆地提供较远的地面天气覆盖。为了评估使用此分布式传感器网络模型预测技能的指导改进,我们实施了广泛使用的数据同化技术,并将预测技能与同一模型进行比较而无需数据同化。即使以这里使用的基本同化策略,我们也发现了掺入波浮标观测值的预测准确性的显着改善,而总体上有明显的WaveHeights中,根平方误差降低了27%。对于一个极端事件,预测准确性特别相关,我们观察到膨胀时间和膨胀的大小分别在6小时和1 m的范围内有了显着改善。我们的结果表明,分布式海洋网络可以以极低的成本有意义地提高模型技能。对同化策略的改进很容易实现,并将立即实现进一步的建模增长。
In-situ ocean wave observations are critical to improve model skill and validate remote sensing wave measurements. Historically, such observations are extremely sparse due to the large costs and complexity of traditional wave buoys and sensors. In this work, we present a recently deployed network of free-drifting satellite-connected surface weather buoys that provide long-dwell coverage of surface weather in the northern Pacific Ocean basin. To evaluate the leading-order improvements to model forecast skill using this distributed sensor network, we implement a widely-used data assimilation technique and compare forecast skill to the same model without data assimilation. Even with a basic assimilation strategy as used here, we find remarkable improvements to forecast accuracy from the incorporation of wave buoy observations, with a 27% reduction in root-mean-square error in significant waveheights overall. For an extreme event, where forecast accuracy is particularly relevant, we observe considerable improvements in both arrival time and magnitude of the swell on the order of 6 hours and 1 m, respectively. Our results show that distributed ocean networks can meaningfully improve model skill, at extremely low cost. Refinements to the assimilation strategy are straightforward to achieve and will result in immediate further modelling gains.