Abstract

AbstractThis study utilizes cluster analysis to produce sets of weather patterns for the Indian subcontinent. These patterns have been developed with future applications in mind; specifically relating to the occurrence of high‐impact weather and meteorologically induced hazards such as landslides. The weather patterns are also suited for use within probabilistic medium‐ to long‐range weather pattern forecasting tools driven by ensemble prediction systems. A total of 192 sets of weather patterns have been generated by varying the parameter which is clustered, the spatial domain and the number of weather patterns. Non‐hierarchical k‐means clustering was applied to daily 1200 UTC ERA‐Interim reanalysis data between 1979 and 2016 using pressure at mean sea level (PMSL) and u‐ and v‐component winds at 10‐m, 925‐hPa and 850‐hPa. The resultant weather pattern sets (clusters) were analysed for their ability to represent the main climatic precipitation patterns over India using the explained variation score. Weather patterns generated using 850‐hPa winds are among the most representative, with 30 patterns being enough to represent variability within different phases of the Indian climate. For example, several weather pattern variants are evident within the active monsoon, break monsoon and retreating monsoon. There are also several variants of weather patterns susceptible to western disturbances. These weather pattern variants are useful when it comes to identifying periods most susceptible to high‐impact weather within a large‐scale regime, such as identifying the most flood prone periods within the active monsoon. They hence have potentially many forecasting applications.

Highlights

  • This study uses cluster analysis to define a set of representative weather patterns for the Indian subcontinent

  • The Explained Variation (EV) score was calculated for all 192 weather pattern sets to help identify the optimal set of weather patterns for precipitation variability across India

  • All weather regime categories produced in this study have more than one weather pattern with the exception of the monsoon onset which is formed from weather pattern 26 only

Read more

Summary

Introduction

This study uses cluster analysis to define a set of representative weather patterns for the Indian subcontinent. These weather patterns represent all the main monsoonal and non-monsoonal circulation types which occur throughout the year and are tested against their ability to explain precipitation variability. The term weather regimes can be used to describe a defined circulation type, where weather regimes are typically larger in scale, fewer in number, and persist for more days than weather patterns. This study will investigate circulation variability within each of these largescale weather regimes, with the aim of identifying the sub-weekly weather patterns responsible for the within-regime precipitation variability

Objectives
Results
Discussion
Conclusion
Full Text
Paper version not known

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call

Disclaimer: All third-party content on this website/platform is and will remain the property of their respective owners and is provided on "as is" basis without any warranties, express or implied. Use of third-party content does not indicate any affiliation, sponsorship with or endorsement by them. Any references to third-party content is to identify the corresponding services and shall be considered fair use under The CopyrightLaw.