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Genetic algorithm-based optimisation of load-balanced routing for AMI with wireless mesh networks
Affiliation:1. Department of ECE and Coordinated Science Lab, University of Illinois at Urbana-Champaign, USA;2. Dept. of Information and Communications Engineering, Computer Science Faculty, University of Murcia, 30100 Murcia, Spain;1. College of Communication Engineering, Jilin University, PR China;2. School of Information Engineering, Northeast Electric Power University, PR China;1. Network Research Laboratory University of Montreal, Montréal, Canada;2. CIRRELT and MAGI, École Polytechnique of Montreal, Montréal, Canada
Abstract:The advanced metering infrastructure (AMI) in a smart grid contains hardware, software, and other electronic components connected through a communication infrastructure. AMI transfers meter-reading data between a group of smart meters and a utility centre. Herein, a wireless mesh network (WMN) with a random mesh topology is used to deploy the AMI communication network. In a WMN, paths are identified using a hybrid wireless mesh routing protocol (HWMP) with a load balancing feature called load aware-HWMP (LA-HWMP). These paths reduce the demand on links with a minimal air time metric; however, the delay in the data transmission of certain smart meters is high, given the large number of retransmissions caused by packet drop. To avert this problem and enhance the end-to-end delay, a genetic algorithm is applied on the LA-HWMP to obtain the optimal path. The optimisation process will result in the selection of paths with minimal delay. The genetic algorithm is developed with a rank-based selection, a two-point crossover, and a random reset mutation with a repair function to eliminate duplicate entries. The proposed method is compared with the HWMP, the LA-HWMP, and a state-of-the-art method that uses a combination of the ant colony algorithm and simulated annealing (ACA-SA) for AMI networks of different sizes. The obtained results show that the path identified by the proposed method yields a shorter delay and higher throughput than paths identified using the other methods.
Keywords:AMI  LA-HWMP  WMN  GA  Integer encoding  Rank-based selection  Random reset mutation  Optimisation
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