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Simulating user learning in authoritative technology adoption: An agent based model for council-led smart meter deployment planning in the UK

journal contribution
posted on 17.06.2019, 10:47 by Tao ZhangTao Zhang, Peer-Olaf Siebers, Uwe Aickelin
How do technology users effectively transit from having zero knowledge about a technology to making the best use of it after an authoritative technology adoption? This post-adoption user learning has received little research attention in technology management literature. In this paper we investigate user learning in authoritative technology adoption by developing an agent-based model using the case of council-led smart meter deployment in the UK City of Leeds. Energy consumers gain experience of using smart meters based on the learning curve in behavioural learning. With the agent-based model we carry out experiments to validate the model and test different energy interventions that local authorities can use to facilitate energy consumers' learning and maintain their continuous use of the technology. Our results show that the easier energy consumers become experienced, the more energy-efficient they are and the more energy saving they can achieve; encouraging energy consumers' contacts via various informational means can facilitate their learning; and developing and maintaining their positive attitude toward smart metering can enable them to use the technology continuously. Contributions and energy policy/intervention implications are discussed in this paper.

Funding

UK Engineering and Physical Sciences Research Council (Grant Ref: EP/G05956X/1).

History

School

  • Loughborough University London

Published in

Technological Forecasting and Social Change

Volume

106

Pages

74 - 84

Citation

ZHANG, T., SIEBERS, P-O. and AICKELIN, U., 2016. Simulating user learning in authoritative technology adoption: An agent based model for council-led smart meter deployment planning in the UK. Technological Forecasting and Social Change, 106, pp.74-84.

Publisher

© Elsevier

Version

VoR (Version of Record)

Publisher statement

This work is made available according to the conditions of the Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International (CC BY-NC-ND 4.0) licence. Full details of this licence are available at: https://creativecommons.org/licenses/by-nc-nd/4.0/

Acceptance date

17/02/2016

Publication date

2016-03-04

Notes

This paper is closed access.

ISSN

0040-1625

Language

en