Search alternatives:
based optimization » whale optimization (Expand Search)
wolf optimization » whale optimization (Expand Search), swarm optimization (Expand Search), _ optimization (Expand Search)
sample based » samples based (Expand Search), scale based (Expand Search)
binary data » primary data (Expand Search), dietary data (Expand Search)
based optimization » whale optimization (Expand Search)
wolf optimization » whale optimization (Expand Search), swarm optimization (Expand Search), _ optimization (Expand Search)
sample based » samples based (Expand Search), scale based (Expand Search)
binary data » primary data (Expand Search), dietary data (Expand Search)
-
1
-
2
-
3
-
4
Plots of steady-state frequency control.
Published 2023“…The optimization problem was formulated based on the network power flow and the discrete-time sampling of the constrained control parameters. …”
-
5
Plots of steady-state voltage control.
Published 2023“…The optimization problem was formulated based on the network power flow and the discrete-time sampling of the constrained control parameters. …”
-
6
Plots of steady-state input trajectory.
Published 2023“…The optimization problem was formulated based on the network power flow and the discrete-time sampling of the constrained control parameters. …”
-
7
Two-dimensional benchmark test-functions.
Published 2023“…The optimization problem was formulated based on the network power flow and the discrete-time sampling of the constrained control parameters. …”
-
8
Block diagram of autonomous microgrid.
Published 2023“…The optimization problem was formulated based on the network power flow and the discrete-time sampling of the constrained control parameters. …”
-
9
Thirty-dimensional benchmark test-functions.
Published 2023“…The optimization problem was formulated based on the network power flow and the discrete-time sampling of the constrained control parameters. …”
-
10
-
11
Iteration diagram of genetic algorithm.
Published 2023“…The results show that: (1) The applied SMOTEENN is more effective than SMOTE and ADASYN in dealing with the imbalance of banking data. (2) The F1 and AUC values of the model improved and optimized by XGBoost using genetic algorithm can reach 90% and 99%, respectively, which are optimal compared to other six machine learning models. …”
-
12
Genetic algorithm flow chart.
Published 2023“…The results show that: (1) The applied SMOTEENN is more effective than SMOTE and ADASYN in dealing with the imbalance of banking data. (2) The F1 and AUC values of the model improved and optimized by XGBoost using genetic algorithm can reach 90% and 99%, respectively, which are optimal compared to other six machine learning models. …”
-
13
-
14
Results of genetic algorithm tuning parameters.
Published 2023“…The results show that: (1) The applied SMOTEENN is more effective than SMOTE and ADASYN in dealing with the imbalance of banking data. (2) The F1 and AUC values of the model improved and optimized by XGBoost using genetic algorithm can reach 90% and 99%, respectively, which are optimal compared to other six machine learning models. …”
-
15
The flowchart of the proposed algorithm.
Published 2024“…To overcome this limitation, recent advancements have introduced multi-objective evolutionary algorithms for ATS. This study proposes an enhancement to the performance of ATS through the utilization of an improved version of the Binary Multi-Objective Grey Wolf Optimizer (BMOGWO), incorporating mutation. …”
-
16
-
17
-
18
-
19
-
20
Algorithm for MFISTA-VA [30].
Published 2025“…GRASP uses Temporal Total Variation (TV) norm as a sparsity transform to promote sparsity among multi-coil MRI data and Nonlinear Conjugate Gradient (NL-CG) algorithm to obtain an optimal solution. …”