Title :
A Framework for Exploring Social Network and Personality-Based Predictors of Smart Grid Diffusion
Author :
Cassidy, Alex ; Strube, Michael ; Nehorai, Arye
Author_Institution :
Dept. of Electr. & Syst. Eng., Washington Univ., St. Louis, MO, USA
Abstract :
So-called smart technologies are at the forefront of modern energy research. Many existing works focus on the effects of smart technologies, with scales ranging from a single household to an entire city. One area that is less studied is the adoption of these technologies. In this paper, we extend our prior work to develop a more robust framework for exploring the diffusion of basic smart grid technologies using a social-network-based model to study demand response adoption. This network is based around considering an end-user as a node, and any relationship where mutual trust and communication exists as an edge. In addition, we have incorporated mathematical representations of user personality traits in the decision-making progress to better simulate real-world actions. We observe greater usage of demand response when conventional electricity is high, when conscientiousness is high, and when the network is densely connected; all of these are reasonable results given logical behavior of the individual agents. Our model includes many tunable parameters in the update stages, of which the effects of only a few are included in this paper. This quantity of potential parameters, as well as the broad nature of the model and algorithm, makes our model a candidate for future improvement and development based on including different parameters.
Keywords :
demand side management; power engineering computing; smart power grids; social networking (online); basic smart grid technologies; decision-making progress; demand response adoption; end-user; individual agents; mathematical representations; modern energy research; mutual trust; personality-based predictors; smart grid diffusion; smart technologies; social-network-based model; tunable parameters; user personality traits; Electricity; Load management; Mathematical model; Pricing; Smart grids; Social network services; Technological innovation; Network theory; power grids; smart grids; social network services;
Journal_Title :
Smart Grid, IEEE Transactions on
DOI :
10.1109/TSG.2014.2366729