Predicting Electricity Infrastructure Induced Wildfire Risk in California

06/06/2022
by   Mengqi Yao, et al.
9

This paper examines the use of risk models to predict the timing and location of wildfires caused by electricity infrastructure. Our data include historical ignition and wire-down points triggered by grid infrastructure collected between 2015 to 2019 in Pacific Gas Electricity territory along with various weather, vegetation, and very high resolution data on grid infrastructure including location, age, materials. With these data we explore a range of machine learning methods and strategies to manage training data imbalance. The best area under the receiver operating characteristic we obtain is 0.776 for distribution feeder ignitions and 0.824 for transmission line wire-down events, both using the histogram-based gradient boosting tree algorithm (HGB) with under-sampling. We then use these models to identify which information provides the most predictive value. After line length, we find that weather and vegetation features dominate the list of top important features for ignition or wire-down risk. Distribution ignition models show more dependence on slow-varying vegetation variables such as burn index, energy release content, and tree height, whereas transmission wire-down models rely more on primary weather variables such as wind speed and precipitation. These results point to the importance of improved vegetation modeling for feeder ignition risk models, and improved weather forecasting for transmission wire-down models. We observe that infrastructure features make small but meaningful improvements to risk model predictive power.

READ FULL TEXT

page 1

page 3

page 4

page 5

page 6

page 7

page 8

page 9

research
05/21/2018

Predicting Electricity Outages Caused by Convective Storms

We consider the problem of predicting power outages in an electrical pow...
research
01/19/2021

Critical Risk Indicators (CRIs) for the electric power grid: A survey and discussion of interconnected effects

The electric power grid is a critical societal resource connecting multi...
research
09/27/2017

Introducing machine learning for power system operation support

We address the problem of assisting human dispatchers in operating power...
research
09/07/2022

Forecasting overhead distribution line failures using weather data and gradient-boosted location, scale, and shape models

Overhead distribution lines play a vital role in distributing electricit...
research
09/23/2022

Leveraging the Potential of Novel Data in Power Line Communication of Electricity Grids

Electricity grids have become an essential part of daily life, even if t...
research
10/11/2021

Quantifying the Risk of Wildfire Ignition by Power Lines under Extreme Weather Conditions

This paper presents a surrogate model to quantify the risk of wildfire i...
research
12/04/2020

Investigation of the Impacts of COVID-19 on the Electricity Consumption of a University Dormitory Using Weather Normalization

This study investigated the impacts of the COVID-19 pandemic on the elec...

Please sign up or login with your details

Forgot password? Click here to reset