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David W Wanik
University of Connecticut - Storrs / United States
Business & Management / Business Administration
AD Scientific Index ID: 1777319
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David W Wanik's MOST POPULAR ARTICLES
1-)
Machine learning using combined structural and chemical descriptors for prediction of methane adsorption performance of metal organic frameworks (MOFs) ACS Combinatorial Science, 2017
2-)
Storm outage modeling for an electric distribution network in Northeastern USA Natural Hazards 79, 1359-1384, 2015
3-)
Predicting storm outages through new representations of weather and vegetation IEEE Access 7, 29639-29654, 2019
4-)
Nonparametric tree‐based predictive modeling of storm outages on an electric distribution network Risk Analysis 37 (3), 441-458, 2017
5-)
Using vegetation management and LiDAR-derived tree height data to improve outage predictions for electric utilities Electric Power Systems Research 146, 236–245, 2017
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