...
首页> 外文期刊>Journal of Climate >Using Self-Organizing Maps to Identify Coherent CONUS Precipitation Regions
【24h】

Using Self-Organizing Maps to Identify Coherent CONUS Precipitation Regions

机译:使用自组织地图来识别连贯康纳斯降水区

获取原文
获取原文并翻译 | 示例
           

摘要

Extreme precipitation events have major societal impacts. These events are rare and can have small spatial scale, making statistical analysis difficu both factors are mitigated by combining events over a region. A methodology is presented to objectively define "coherent" regions wherein data points have matching annual cycles. Regions are found by training self-organizing maps (SOMs) on the annual cycle of precipitation for each grid point across the contiguous United States (CONUS). Using the annual cycle for our intended application minimizes problems caused by consecutive dry periods and localized extreme events. Multiple criteria are applied to identify useful numbers of regions for our future application. Criteria assess these properties for each region: having many more events than experienced by a single grid point, good connectedness and compactness, and robustness to changing the number of regions. Our methodology is applicable across datasets and is tested here on both reanalysis and gridded observational data. Precipitation regions obtained align with large-scale geographical features and are readily interpretable. Useful numbers of regions balance two conflicting preferences: larger regions contain more events and thereby have more robust statistics, but more compact regions allow weather patterns associated with extreme events to be aggregated with confidence. For 6-h precipitation, 12-15 regions over the CONUS optimize our metrics. The regions obtained are compared against two existing region archetypes. For example, a popular set of regions, based on nine groups of states, has less coherent regions than defining the same number of regions with our SOM methodology.
机译:极端降水事件具有重大的社会影响。这些事件罕见,可以具有小的空间尺度,使统计分析困难;通过将事件组合在一个地区上来缓解了这两个因素。提出了一种方法来客观地定义“相干”区域,其中数据点具有匹配的年度周期。通过培训自组织地图(SOM)在邻近的美国(康士胡斯)的每个网格点的降水周期上的自组织地图(SOM)。使用年度周期为我们的预期应用最大限度地减少连续干周期和本地化极端事件引起的问题。应用多个标准来识别未来申请的有用数量的地区。标准评估每个区域的这些属性:具有比单个网格点,良好的连通性和紧凑性以及改变区域数量的稳健性所经历的更多事件。我们的方法在数据集中适用,并在此处在重新分析和网格化的观察数据上进行测试。降水区与大规模地理特征对齐,并且易于解释。有用的地区余额两个冲突的偏好:较大的区域包含更多事件,从而具有更强大的统计数据,但更紧凑的区域允许与极端事件相关联的天气模式以置信汇总。对于6-H降水,康明斯的12-15个地区优化了我们的指标。将获得的区域与两个现有区域进行比较。例如,基于九个州的一组流行的区域具有比我们的SOM方法定义相同数量的区域的相干区域。

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