Operational forecasting centers are investing in decadal (1-10 year) forecast systems to support long-term decision making for a more climate-resilient society. One method that has previously been employed is the Dynamic Mode Decomposition (DMD) algorithm - also known as the Linear Inverse Model - which fits linear dynamical models to data. While the DMD usually approximates non-linear terms in the true dynamics as a linear system with random noise, we investigate an extension to the DMD that explicitly represents the non-linear terms as a neural network. Our weight initialization allows the network to produce sensible results before training and then improve the prediction after training as data becomes available. In this short paper, we evaluate the proposed architecture for simulating global sea surface temperatures and compare the results with the standard DMD and seasonal forecasts produced by the state-of-the-art dynamical model, CFSv2.
翻译:运行预测中心正在投资于十进制(1-10年)预报系统,以支持长期决策,建立一个更能抵御气候的社会。以前采用的方法之一是动态模式分解算法(DMD),也称为线性反向模型,它适合数据线性动态模型。虽然DMD通常在真实动态中将非线性术语作为有随机噪音的线性系统,但我们调查DMD的延伸,它明确代表非线性术语作为神经网络。我们的权重初始化使网络在培训前产生合理的结果,然后在数据出现后改进培训后的预测。在本短文中,我们评估模拟全球海面温度的拟议结构,并将结果与最新动态模型CFSv2产生的标准DMD和季节性预报结果进行比较。