Abstract: A service inputs wind data and utility data corresponding to a utility component into a first machine learning model to determine an outage risk prediction representing a probability that the utility component will have an outage. The service determines a probability of ignition at a vicinity of the utility component, and determines a set of wildfire impact measurements by simulating a wildfire in the vicinity of the utility component. The service inputs the outage risk prediction, the probability of ignition, and the set of wildfire impact measurements into a second machine learning model, and receives as output from the second machine learning model, a catastrophic wildfire risk score corresponding to the utility component. The service outputs a graphical representation on a dashboard representing the catastrophic wildfire risk score.
Type:
Grant
Filed:
August 22, 2024
Date of Patent:
May 19, 2026
Assignee:
Technosylva, Inc.
Inventors:
Pavel Aleksandrovich Grechanuk, Adrián Cardil Forradellas, Steven Craig Vanderburg, Santiago Daniel Monedero Timón, Joaquin Ramirez Cisneros