Understanding Dominant Factors for Precipitation over the Great Lakes Region

Authors

  • Soumyadeep Chatterjee University of Minnesota, Twin Cities
  • Stefan Liess University of Minnesota, Twin Cities
  • Arindam Banerjee University of Minnesota, Twin Cities
  • Vipin Kumar University of Minnesota, Twin Cities

DOI:

https://doi.org/10.1609/aaai.v30i1.9905

Keywords:

sparse regression, climate science, feature selection

Abstract

Statistical modeling of local precipitation involves understanding local, regional and global factors informative of precipitation variability in a region. Modern machine learning methods for feature selection can potentially be explored for identifying statistically significant features from pool of potential predictors of precipitation. In this work, we consider sparse regression, which simultaneously performs feature selection and regression, followed by random permutation tests for selecting dominant factors. We consider average winter precipitation over Great Lakes Region in order to identify its dominant influencing factors.Experiments show that global climate indices, computed at different temporal lags, offer predictive information for winter precipitation. Further, among the dominant factors identified using randomized permutation tests, multiple climate indices indicate the influence of geopotential height patterns on winter precipitation.Using composite analysis, we illustrate that certain patterns are indeed typical in high and low precipitation years, and offer plausible scientific reasons for variations in precipitation.Thus, feature selection methods can be useful in identifying influential climate processes and variables, and thereby provide useful hypotheses over physical mechanisms affecting local precipitation.

Downloads

Published

2016-03-05

How to Cite

Chatterjee, S., Liess, S., Banerjee, A., & Kumar, V. (2016). Understanding Dominant Factors for Precipitation over the Great Lakes Region. Proceedings of the AAAI Conference on Artificial Intelligence, 30(1). https://doi.org/10.1609/aaai.v30i1.9905

Issue

Section

Special Track: Computational Sustainability