Data-driven agent-based modeling, with application to rooftop solar adoption
Authored by Kiran Lakkaraju, Haifeng Zhang, Yevgeniy Vorobeychik, Joshua Letchford
Date Published: 2016
DOI: 10.1007/s10458-016-9326-8
Sponsors:
United States Department of Energy (DOE)
Platforms:
Repast
Model Documentation:
Other Narrative
Mathematical description
Model Code URLs:
Model code not found
Abstract
Agent-based modeling is commonly used for studying complex system
properties emergent from interactions among agents. However, agent-based
models are often not developed explicitly for prediction, and are
generally not validated as such. We therefore present a novel
data-driven agent-based modeling framework, in which individual behavior
model is learned by machine learning techniques, deployed in multi-agent
systems and validated using a holdout sequence of collective adoption
decisions. We apply the framework to forecasting individual and
aggregate residential rooftop solar adoption in San Diego county and
demonstrate that the resulting agent-based model successfully forecasts
solar adoption trends and provides a meaningful quantification of
uncertainty about its predictions. Meanwhile, we construct a second
agent-based model, with its parameters calibrated based on mean square
error of its fitted aggregate adoption to the ground truth. Our result
suggests that our data-driven agent-based approach based on maximum
likelihood estimation substantially outperforms the calibrated
agent-based model. Seeing advantage over the state-of-the-art modeling
methodology, we utilize our agent-based model to aid search for
potentially better incentive structures aimed at spurring more solar
adoption. Although the impact of solar subsidies is rather limited in
our case, our study still reveals that a simple heuristic search
algorithm can lead to more effective incentive plans than the current
solar subsidies in San Diego County and a previously explored structure.
Finally, we examine an exclusive class of policies that gives away free
systems to low-income households, which are shown significantly more
efficacious than any incentive-based policies we have analyzed to date.
Tags
behavior
Technology diffusion
Policy
systems
preferences
Energy technologies
Samples