Title :
Social Networking Reduces Peak Power Consumption in Smart Grid
Author :
Qiuyuan Huang ; Xin Li ; Jing Zhao ; Dapeng Wu ; Xiang-Yang Li
Author_Institution :
Dept. of Electr. & Comput. Eng., Univ. of Florida, Gainesville, FL, USA
Abstract :
Minimizing the peak power consumption of electrical appliances under delay requirements is shown to be NP-hard. To address this, we propose a “family plan” approach that partitions users into groups and schedules users´ appliances to minimize the peak power consumption of each group. Our scheme leverages the social network topology and statistical energy usage patterns of users. To partition users into groups with the potential of reducing peak power consumption, our distributed clustering scheme seeks such a partition of users into groups that the total power consumption in each group of users achieves minimum variance. Then, given a set of jobs of users´ appliances to be scheduled in the next scheduling period, we use a distributed scheduling algorithm to minimize the peak power consumption of each group of users. Our simulation results demonstrate that our scheme achieves a significant reduction in user payments, peak power consumption, and fuel cost.
Keywords :
domestic appliances; electrical products; power consumption; scheduling; smart power grids; social networking (online); NP-hard; delay requirements; distributed clustering scheme; distributed scheduling algorithm; electrical appliances; family plan approach; fuel cost; next scheduling period; peak power consumption reduction; smart grid; social network topology; social networking; statistical energy usage patterns; total power consumption; user appliance scheduling; user payments; Approximation algorithms; Clustering algorithms; Companies; Partitioning algorithms; Power demand; Schedules; Scheduling; Distributed clustering; family plan; power grid; social network; trace-driven simulator;
Journal_Title :
Smart Grid, IEEE Transactions on
DOI :
10.1109/TSG.2014.2379618