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HIDRA 1.0: deep-learning-based ensemble sea level forecasting in the northern Adriatic

机译:HIDRA 1.0:北方北方人的深度学习合奏海平面预测

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Interactions between atmospheric forcing, topographic constraints to air and water flow, and resonant character of the basin make sea level modelling in the Adriatic a challenging problem. In this study we present an ensemble deep-neural-network-based sea level forecasting method HIDRA, which outperforms our set-up of the general ocean circulation model ensemble (NEMO v3.6) for all forecast lead times and at a minuscule fraction of the numerical cost (order of 2 × 10 - 6 ). HIDRA exhibits larger bias but lower RMSE than our set-up of NEMO over most of the residual sea level bins. It introduces a trainable atmospheric spatial encoder and employs fusion of atmospheric and sea level features into a self-contained network which enables discriminative feature learning. HIDRA architecture building blocks are experimentally analysed in detail and compared to alternative approaches. Results show the importance of sea level input for forecast lead times below 24? h and the importance of atmospheric input for longer lead times. The best performance is achieved by considering the input as the total sea level, split into disjoint sets of tidal and residual signals. This enables HIDRA to optimize the prediction fidelity with respect to atmospheric forcing while compensating for the errors in the tidal model. HIDRA is trained and analysed on a 10-year (2006–2016) time series of atmospheric surface fields from a single member of ECMWF atmospheric ensemble. In the testing phase, both HIDRA and NEMO ensemble systems are forced by the ECMWF atmospheric ensemble. Their performance is evaluated on a 1-year?(2019) hourly time series from a tide gauge in Koper (Slovenia). Spectral and continuous wavelet analysis of the forecasts at the semi-diurnal frequency (12? h ) ?1 and at the ground-state basin seiche frequency (21.5? h ) ?1 is performed. The energy at the basin seiche in the HIDRA forecast is close to that observed, while our set-up of NEMO underestimates it. Analyses of the January?2015 and November?2019 storm surges indicate that HIDRA has learned to mimic the timing and amplitude of basin seiches.
机译:大气强迫之间的相互作用,对空气和水流的地形约束,以及盆地的共振特征在亚得里亚的一个具有挑战性问题中进行海平面模型。在这项研究中,我们展示了一个基于集合的深神经网络的海平面预测方法Hidra,这优于我们对所有预测的转速时间和微量分数的通用海洋循环模型集合(NEMO V3.6)的建立数值成本(2×10-6的顺序)。 HIDRA展示较大的偏见,但比我们在大部分残留的海平面垃圾箱上的NEMO设置较低。它引入了培训大气空间编码器,采用大气和海平面的融合到一个独立的网络中,使能辨别特征学习。 HIDRA架构构建块进行了实验详细分析,与替代方法相比。结果表明海平面投入对24岁以下的预测交易时间的重要性? h和大气输入的重要性,更长的交货时间。通过将输入视为总海平面,分成潮汐和剩余信号集的输入来实现最佳性能。这使HIDRA能够在大气强制上优化预测保真度,同时补偿潮汐模型中的误差。 Hidra在10年(2006 - 2016年)的大气表面场上,从EcMWF大气集合的单个成员进行培训和分析。在测试阶段,ECMWF大气集合强制亨德拉和NEMO集合系统。他们的表现是在1年内评估的(2019年)每小时时间序列来自Koper(斯洛文尼亚)的潮汐仪表。在半场频率(12ΩH)α1和地面盆地Seiche频率(21.5ΩH)α1处的预测的光谱和连续小波分析。 Hidra预测的盆地Seiche的能量接近了观察到的,而我们的Nemo设置低估了它。 1月份的分析2015年11月和2019年的风暴浪涌表明,Hidra学会了模仿盆地Seiches的时序和幅度。

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