TY - JOUR
T1 - Nonparametric Tree-Based Predictive Modeling of Storm Outages on an Electric Distribution Network
AU - He, Jichao
AU - Wanik, David W.
AU - Hartman, Brian M.
AU - Anagnostou, Emmanouil N.
AU - Astitha, Marina
AU - Frediani, Maria E.B.
N1 - Publisher Copyright:
© 2016 Society for Risk Analysis
PY - 2017/3
Y1 - 2017/3
N2 - This article compares two nonparametric tree-based models, quantile regression forests (QRF) and Bayesian additive regression trees (BART), for predicting storm outages on an electric distribution network in Connecticut, USA. We evaluated point estimates and prediction intervals of outage predictions for both models using high-resolution weather, infrastructure, and land use data for 89 storm events (including hurricanes, blizzards, and thunderstorms). We found that spatially BART predicted more accurate point estimates than QRF. However, QRF produced better prediction intervals for high spatial resolutions (2-km grid cells and towns), while BART predictions aggregated to coarser resolutions (divisions and service territory) more effectively. We also found that the predictive accuracy was dependent on the season (e.g., tree-leaf condition, storm characteristics), and that the predictions were most accurate for winter storms. Given the merits of each individual model, we suggest that BART and QRF be implemented together to show the complete picture of a storm's potential impact on the electric distribution network, which would allow for a utility to make better decisions about allocating prestorm resources.
AB - This article compares two nonparametric tree-based models, quantile regression forests (QRF) and Bayesian additive regression trees (BART), for predicting storm outages on an electric distribution network in Connecticut, USA. We evaluated point estimates and prediction intervals of outage predictions for both models using high-resolution weather, infrastructure, and land use data for 89 storm events (including hurricanes, blizzards, and thunderstorms). We found that spatially BART predicted more accurate point estimates than QRF. However, QRF produced better prediction intervals for high spatial resolutions (2-km grid cells and towns), while BART predictions aggregated to coarser resolutions (divisions and service territory) more effectively. We also found that the predictive accuracy was dependent on the season (e.g., tree-leaf condition, storm characteristics), and that the predictions were most accurate for winter storms. Given the merits of each individual model, we suggest that BART and QRF be implemented together to show the complete picture of a storm's potential impact on the electric distribution network, which would allow for a utility to make better decisions about allocating prestorm resources.
KW - Bayesian additive regression trees
KW - critical infrastructure outage modeling
KW - electric distribution network
KW - quantile regression forests
KW - weather hazards
UR - https://www.scopus.com/pages/publications/84978245793
U2 - 10.1111/risa.12652
DO - 10.1111/risa.12652
M3 - Article
C2 - 28418593
AN - SCOPUS:84978245793
SN - 0272-4332
VL - 37
SP - 441
EP - 458
JO - Risk Analysis
JF - Risk Analysis
IS - 3
ER -