首页> 外文会议>IEEE International Geoscience and Remote Sensing Symposium >SPATIALLY PENALIZED REGRESSION FOR DEPENDENCE ANALYSIS OF RARE EVENTS: A STUDY IN PRECIPITATION EXTREMES
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SPATIALLY PENALIZED REGRESSION FOR DEPENDENCE ANALYSIS OF RARE EVENTS: A STUDY IN PRECIPITATION EXTREMES

机译:对罕见事件的依赖分析的空间罚款回归:极端降水研究

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Discovery of dependence structure between precipitation extremes and other climate variables (covariates) within a smaller spatial and temporal neighborhood is an important step in better understanding the drivers of this complex phenomenon as well as short-term prediction of extremes occurrence. Apart from the inherent spatio-temporal variability of the dependence, it is further complicated by the availability of the covariates at different vertical levels. The above problem can be split into three different sub-problems. Firstly, a spatio-temporal neighborhood of influence has to be discovered, which can be different for different locations. Secondly, the dependence structure between the precipitation extremes and the covariates has to be discovered within this neighborhood and thirdly, it has to be investigated whether this dependence structure can be exploited for any predictive power. Climate scientists have already discovered some physics-based relations between some of the covariates (e.g. temperature, relative humidity, precipitable water etc.) and precipitation extremes. We are exploring data-dependent alternatives for these problems and any possibility of incorporating the physics-based relations into the resulting data model. In particular, we used elastic net-based sparse optimization technique which solves all three problems of neighborhood discovery, covariate dependence discovery and predictive modeling and at the same time maintains the interpretability of the resulting model. Preliminary results look promising and show potential for some interesting knowledge discovery. We are currently exploring non-linear correlations and the alternatives to combine the physics-based relationships into the data model.
机译:在较小的空间和时间邻域内的降水极端和其他气候变量(协变量)之间发现依赖结构是一个重要的步骤,更好地理解这种复杂现象的驱动器以及极端发生的短期预测。除了固有的时空变化的依赖性之外,还通过不同垂直水平的协变量的可用性进一步复杂化。上述问题可以分为三个不同的子问题。首先,必须发现影响影响的时空邻域,这对于不同的位置可以是不同的。其次,在该社区中必须发现沉淀极端和协变量之间的依赖性结构,第三,必须研究是否可以针对任何预测力来利用这种依赖性结构。气候科学家已经发现了一些协变量之间的一些基于的物理关系(例如,温度,相对湿度,可降水等)和降低极端。我们正在探索这些问题的数据相关的替代方案,以及将物理学关系纳入所产生的数据模型的任何可能性。特别地,我们使用了基于弹性的基于净的稀疏优化技术,其解决了邻里发现的所有三个问题,协变量依赖性发现和预测建模,同时保持所得模型的解释性。初步结果看起来很有兴趣,并表现出一些有趣的知识发现的潜力。我们目前正在探索非线性相关性和将基于物理的关系结合到数据模型中的替代方案。

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