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Using Machine Learning to Improve Forecasting of Deep Convection

PI Christopher Hennon

We are working to train a neural network to forecast the initiation time, location, and intensity of thunderstorms. These results will support operations during the proposed CONVECT project and could ultimately aid operational forecasting during the North American Monsoon (NAM).

This research, funded through an NSF EAGER grant, seeks to improve forecast accuracy of monsoon thunderstorm activity and precipitation amounts in the Southwest. The project creates an innovative machine learning tool trained using regional numerical weather model output and satellite remote sensing data (the predictors) with respect to known thunderstorm cell locations and intensities detected by radar (the targets). The tool will be designed to extract important fundamental relationships between the predictors and targets that help explain the development and evolution of thunderstorms. After an intense training, validation and testing phase, the relationships will then be leveraged to generate better forecasts of the timing, severity and location of future thunderstorm events in the Southwest. The tool will be shared with the National Weather Service tto help forecasters predict thunderstorm-related hazards such as large hail, flash flooding or wildfire ignition. This innovative approach will also provide a framework for improving operational meteorological and geophysical prediction systems and for guiding scientific field studies.

The project develops a probabilistic model to predict convective initiation, rain rates, and convective cell tracks during the wet phase of the North American Monsoon (NAM). Predictors of convection (e.g., relative humidity, convective available potential energy, precipitable water) will be collected from dynamic mesoscale model (High Resolution Rapid Refresh, University of Arizona-Weather Research Forecast model) analyses and forecasts and combined with new satellite-derived observations of soil moisture and surface temperature to produce a unique prediction tool. A novel machine learning approach – causality informed learning – will be applied to identify the most suitable predictors for further training in a neural network and to gain insight into the processes governing convective initiation and evolution. Hourly forecasts of precipitation occurrence, nature, and categorical rain rates will be produced operationally to guide forecasters and field research. 

Research Dates

05/01/2023 to 04/30/2024

Researchers

  • No Photo
    Department
    Mathematics Department
    Degrees
    Ph.D., M.S., Clarkson University
  • Curtis Neal James
    Department
    Applied Aviation Sciences Department
    Degrees
    Ph.D., University of Washington-Seattle Campus
    B.S., University of Arizona
  • Ronny Schroeder
    Department
    Applied Aviation Sciences Department
    Degrees
    Ph.D., Universitat Hohenheim
    M.A., B.A., Friedrich Schiller Universitat Jena

Tags: thunderstorms monsoon machine learning forecasting tool

Categories: Faculty-Staff