Feed-in tariffs for solar microgeneration: Policy evaluation and capacity projections using a realistic agent-based model
Authored by Phoebe Pearce, Raphael Slade
Date Published: 2018
DOI: 10.1016/j.enpol.2018.01.060
Sponsors:
United Kingdom Engineering and Physical Sciences Research Council (EPSRC)
Platforms:
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Model Documentation:
Other Narrative
Mathematical description
Model Code URLs:
Model code not found
Abstract
Since 2010, over 700,000 small-scale solar photovoltaic (PV) systems
have been installed by households in Great Britain and registered under
the feed-in tariff (FiT) scheme. This paper introduces a new agent-based
model which simulates this adoption by considering decision-making of
individual households based on household income, social network, total
capital cost of the PV system, and the payback period of the investment,
where the final factor takes into account the economic effect of FiTs.
After calibration using Approximate Bayesian Computation, the model
successfully simulates observed cumulative and average capacity
installed over the period 2010-2016 using historically accurate FiTs;
setting different tariffs allows investigation of alternative policy
scenarios. Model results show that using simple cost control measures,
more installation by October 2016 could have been achieved at lower
subsidy cost. The total cost of supporting capacity installed during the
period 2010-2016, totalling 2.4 GW, is predicted to be (sic)14 billion,
and costs to consumers significantly exceed predictions. The model is
further used to project capacity installed up to 2022 for several PV
cost, electricity price, and FiT policy scenarios, showing that current
tariffs are too low to significantly impact adoption, and falling PV
costs are the most important driver of installation.
Tags
Agent-based model
Simulation
networks
diffusion
systems
Energy
Solar photovoltaics
Microgeneration
Feed-in
tariffs
Incentive policies