Agent-based modeling of the adoption of high-efficiency lighting in the residential sector
Authored by Jinjian Cao, Chul Hun Choi, Fu Zhao
Date Published: 2017
DOI: 10.1016/j.seta.2016.12.003
Sponsors:
United States National Science Foundation (NSF)
Platforms:
No platforms listed
Model Documentation:
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Abstract
Due to the wide use of incandescent lighting, residential sector has
much lower energy efficiency comparing to commercial sector. However,
adoption of compact fluorescent (CFL) and light-emitting diode (LED)
technology in residential sector has been slow because of several
obstacles such as high price tag, poor public information, and
additional cost to achieve favorable lighting features. A deep
understanding on consumer's behavior is needed to support policy
development in order to speed up the penetration of CFL and LED in the
residential sector. Agent-based modeling (ABM) has been used to capture
the dynamics of complex socio-technical systems, and represent a
suitable tool. Previous work on ABM of consumer adoption of CFL and LED
rely heavily on multi-criteria decision making of the agents. Since
light bulbs are not a significant purchase for most households, it is
highly possible that customers will not go through complex decision
making mechanics. This research establishes an ABM of residential
lighting purchase and usage within a hypothetical community and tries to
illustrate possible adoption paths under different scenarios. Agents are
divided into three groups with different simple decision heuristics when
making purchase. Energy consumption and greenhouse gas (GHG) emission
from each scenario are calculated and compared. Results of the
simulation show that incandescent lamps will eventually fade out of the
market even with no policy implemented. After 25 years, annual energy
consumption can be reduced by roughly 30\% compared to Year 2010. Under
best case where incandescent bulbs are banned, the energy consumption
reduction can be up to 70\%. Among scenarios, incandescent ban and
energy saving campaign yield best energy consumption and GHG emission
reduction results. LED technology advancement can improve market
penetration of LED lighting but has little effect on incandescent fade
out. It is also shown that lighting technology retrofitting can achieve
higher reduction on electricity consumption and GHG emission than
electricity grid improvement. (C) 2016 Elsevier Ltd. All rights
reserved.
Tags
Agent Based Modeling
High efficiency lighting
Simple decision
heuristics