TY - GEN
T1 - Predicting rooftop solar adoption using agent-based modeling
AU - Zhang, Haifeng
AU - Vorobeychik, Yevgeniy
AU - Letchford, Joshua
AU - Lakkaraju, Kiran
N1 - Publisher Copyright:
Copyright © 2014, Association for the Advancement of Artificial Intelligence (www.aaai.org). All rights reserved.
PY - 2014
Y1 - 2014
N2 - In this paper we present a novel agent-based modeling methodology to predict rooftop solar adoptions in the residential energy market. We first applied several linear regression models to estimate missing variables for non-adopters, so that attributes of non-adopters and adopters could be used to train a logistic regression model. Then, we integrated the logistic regression model along with other predictive models into a multi-agent simulation platform and validated our models by comparing the forecast of aggregate adoptions in a typical zip code area with its ground truth. This result shows that the agent-based model can reliably predict future adoptions. Finally, based on the validated agent-based model, we compared the outcome of a hypothesized seeding policy with the original incentive plan, and investigated other alternative seeding policies which could lead to more adopters.
AB - In this paper we present a novel agent-based modeling methodology to predict rooftop solar adoptions in the residential energy market. We first applied several linear regression models to estimate missing variables for non-adopters, so that attributes of non-adopters and adopters could be used to train a logistic regression model. Then, we integrated the logistic regression model along with other predictive models into a multi-agent simulation platform and validated our models by comparing the forecast of aggregate adoptions in a typical zip code area with its ground truth. This result shows that the agent-based model can reliably predict future adoptions. Finally, based on the validated agent-based model, we compared the outcome of a hypothesized seeding policy with the original incentive plan, and investigated other alternative seeding policies which could lead to more adopters.
UR - https://www.scopus.com/pages/publications/84940368352
M3 - Conference contribution
AN - SCOPUS:84940368352
T3 - AAAI Fall Symposium - Technical Report
SP - 44
EP - 51
BT - Energy Market Prediction - Papers from the AAAI Fall Symposium, Technical Report
PB - AI Access Foundation
T2 - 2014 AAAI Fall Symposium
Y2 - 13 November 2014 through 15 November 2014
ER -