Understanding Fundamental Phenomena Affecting the Water Conservation Technology Adoption of Residential Consumers Using Agent-Based Modeling
Authored by Kambiz Rasoulkhani, Brianne Logasa, Maria Presa Reyes, Ali Mostafavi
Date Published: 2018
DOI: 10.3390/w10080993
Sponsors:
United States National Science Foundation (NSF)
Platforms:
AnyLogic
Model Documentation:
Other Narrative
Flow charts
Model Code URLs:
Model code not found
Abstract
More than one billion people will face water scarcity within the next
ten years due to climate change and unsustainable water usage, and this
number is only expected to grow exponentially in the future. At current
water use rates, supply-side demand management is no longer an effective
way to combat water scarcity. Instead, many municipalities and water
agencies are looking to demand-side solutions to prevent major water
loss. While changing conservation behavior is one demand-based strategy,
there is a growing movement toward the adoption of water conservation
technology as a way to solve water resource depletion. Installing
technology into one's household requires additional costs and
motivation, creating a gap between the overall potential households that
could adopt this technology, and how many actually do. This study
identified and modeled a variety of demographic and household
characteristics, social network influence, and external factors such as
water price and rebate policy to see their effect on residential water
conservation technology adoption. Using Agent-based Modeling and data
obtained from the City of Miami Beach, the coupled effects of these
factors were evaluated to examine the effectiveness of different
pathways towards the adoption of more water conservation technologies.
The results showed that income growth and water pricing structure, more
so than any of the demographic or building characteristics, impacted
household adoption of water conservation technologies. The results also
revealed that the effectiveness of rebate programs depends on
conservation technology cost and the affluence of the community. Rebate
allocation did influence expensive technology adoption, with the
potential to increase the adoption rate by 50\%. Additionally, social
network connections were shown to have an impact on the rate of adoption
independent of price strategy or rebate status. These findings will lead
the way for municipalities and other water agencies to more
strategically implement interventions to encourage household technology
adoption based on the characteristics of their communities.
Tags
Social networks
Agent-based modeling
behavior
Technology diffusion
diffusion
systems
Demand-side management
Water conservation
classification
Australia
Price elasticity
Framework
Policies
Social
networks