Publication | Closed Access
A mixed neural-genetic algorithm for the broadcast scheduling problem
117
Citations
16
References
2003
Year
Network Routing AlgorithmFrame StructureEngineeringCross-layer OptimizationScheduling ProblemEdge ComputingNetwork PlanningIntelligent OptimizationComputer EngineeringGenetic AlgorithmSystems EngineeringComputer ScienceFrame DesignBroadcast Scheduling ProblemCombinatorial OptimizationDelay-tolerant NetworkingNetwork OptimizationOperations Research
The broadcast scheduling problem (BSP) arises in frame design for packet radio networks (PRNs). The frame structure determines the main communication parameters: communication delay and throughput. The BSP is a combinatorial optimization problem which is known to be NP-hard. To solve it, we propose an algorithm with two main steps which naturally arise from the problem structure: the first one tackles the hardest contraints and the second one carries out the throughput optimization. This algorithm combines a Hopfield neural network for the constraints satisfaction and a genetic algorithm for achieving a maximal throughput. The algorithm performance is compared with that of existing algorithms in several benchmark cases; in all of them, our algorithm finds the optimum frame length and outperforms previous algorithms in the resulting throughput.
| Year | Citations | |
|---|---|---|
Page 1
Page 1