Determinants of spatio-temporal patterns of energy technology adoption: An agent-based modeling approach
Authored by Scott A Robinson, Varun Rai
Date Published: 2015
DOI: 10.1016/j.apenergy.2015.04.071
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Platforms:
Python
R
Model Documentation:
Other Narrative
Mathematical description
Model Code URLs:
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Abstract
Energy technology adoption is a complex process, involving social, behavioral, and economic factors that impact individual decision-making.
This paper uses an empirical, geographic information system
(GIS)-integrated agent-based model of residential solar photovoltaic
(PV) adoption to explore the importance of using empirical
household-level data and of incorporating economic as well as social and
behavioral factors on model outcomes. Our goal is to identify features
of the model that are most critical to successful prediction of the
temporal, spatial, and demographic patterns that characterize the
technology adoption process for solar PV. Agent variables, topology, and
environment are derived from detailed and comprehensive real-world data
between 2004 and 2013 in Austin (Texas, USA). Four variations of the
model are developed, each with a different level of complexity and
empirical characterization. We find that while an explicit focus only on
the financial aspects of the solar PV adoption decision performs well in
predicting the rate and scale of adoption, accounting for agent-level
attitude and social interactions are critical for predicting spatial and
demographic patterns of adoption with high accuracy. (C) 2015 Elsevier
Ltd. All rights reserved.
Tags
Simulation
Dynamics
Demand response
Innovation Diffusion
Decision-Making
Planned behavior
Solar-radiation model
Bounded
rationality
Subsidies
Storage