Research Article

Power Transmission Network Optimization Strategy Based on Random Fractal Beetle Antenna Algorithm

Table 1

Parameter settings.

AlgorithmDetail

FPAPopulation size: 50
Iterations: 1000
Search range/limits: [−5, 5] for each variable
Fitness function: mean squared error
Mutation rate: 0.2
Termination criterion: 6000

GWOPopulation size: 30
Iterations: 500
Search range/limits: [−10, 10] for each variable
Fitness function: Rosenbrock function
Mutation rate: 0.1
Termination criterion: 5000

WOAPopulation size: 50
Iterations: 1000
Search range/limits: [−100, 100] for each variable
Fitness function: sphere function
Mutation rate: 0.5
Termination criterion: 6000

KHPopulation size: 100
Iterations: 2000
Search range/limits: [−50, 50] for each variable
Fitness function: Ackley function
Mutation rate: 0.2
Termination criterion: 7000

PSO-TVACPopulation size: 40
Iterations: 800
Search range/limits: [−1, 1] for each variable
Fitness function: Rastrigin function
Termination criterion: 6000

BASPopulation size: 50
Iterations: 1000
Search range/limits: [−5, 5] for each variable
Fitness function: Griewank function
Mutation rate: 0.2
Termination criterion: 8000

BAS-RDEOMutation rate: 0.3
Radius: 0.1
Encircling rate: 0.5
Termination criterion: 6000