首页> 外文会议>IEEE International Conference on Networking, Sensing and Control >Long-lead Term Precipitation Forecasting by Hierarchical Clustering-based Bayesian Structural Vector Autoregression
【24h】

Long-lead Term Precipitation Forecasting by Hierarchical Clustering-based Bayesian Structural Vector Autoregression

机译:基于分层聚类的贝叶斯结构矢量自动增加的长期术语降水预测

获取原文

摘要

Heavy precipitation for several days and weeks always leads to some extreme nature disasters. Long-lead term precipitation forecasting plays an important role on the prevision of such calamities. Most works focus on the generation of training labels with allocation of the proper corresponding spatio-temporal information. In this paper, we will provide a different path by performing regression analysis using the precipitation amounts at particular locations. This method is called Hierarchical Clustering based Bayesian Structural Vector Autoregression (HC-BSVAR). The approach for HC-BSVAR is divided into two steps. First, we apply a hierarchical clustering algorithm to identify the Elite locations and then transfer the 3-dimensional data space into a new traditional 2-dimensional data space. Every column of the new data frame is a hydro-meteorological feature of the original data and each row represents a time point (day) in the original space. Secondly, an economic-based multivariate time series model called Bayesian-based Structural Vector Autoregression (BSVAR) is exploited to perform the final prediction result. The prediction quality will be vary for different cut of tree structure which generated by hierarchical clustering. The coefficient for determination of each location by each level of cut is applied to quantize the quality of prediction. The relationship between the cut level of clustering geographic locations and the regression model performance are also discussed, based on the result of prediction quality.
机译:几天和几周的大量降水总能导致一些极端的自然灾害。长期术语降水预测对预防此类灾难起着重要作用。大多数工作都侧重于使用适当的相应时空信息的分配来产生训练标签。在本文中,我们将通过使用特定位置的降水量进行回归分析来提供不同的路径。此方法称为基于分层聚类的贝叶斯结构矢量自动增加(HC-BSVAR)。 HC-BSVAR的方法分为两个步骤。首先,我们应用分层聚类算法来识别Elite位置,然后将三维数据空间传送到新的传统二维数据空间中。新数据帧的每一列是原始数据的水力气象特征,每行代表原始空间中的时间点(日)。其次,利用称为贝叶斯的结构向量自动增加(BSVAR)的经济为基础的多变量时间序列模型以执行最终预测结果。通过分层聚类生成的树结构的不同剪切,预测质量将变化。通过每个切割级别确定每个位置的系数来量化预测的质量。还基于预测质量的结果讨论了聚类地理位置的切割水平与回归模型性能之间的关系。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号