| Authors | Seyed-Hamid Zahiri, |
| Journal | Iranian Journal of Electrical and Electronic Engineering |
| Page number | 1-12 |
| Serial number | 18 |
| Volume number | 1 |
| Paper Type | Full Paper |
| Published At | 2022 |
| Journal Grade | Scientific - research |
| Journal Type | Typographic |
| Journal Country | Iran, Islamic Republic Of |
| Journal Index | isc،Scopus |
Abstract
In this paper, multilayer perceptron neural network (MLP-NN) training is used
by the grasshopper optimization algorithm with the tuning of control parameters using a
fuzzy system for the big data sonar classification problem. With proper tuning of these
parameters, the two stages of exploration and exploitation are balanced, and the boundary
between them is determined correctly. Therefore, the algorithm does not get stuck in the
local optimization, and the degree of convergence increases. So the main aim is to get a set
of real sonar data and then classify real sonar targets from unrealistic targets, including
noise, clutter, and reverberation, using GOA-trained MLP-NN developed by the fuzzy
system. To have accurate comparisons and prove the GOA performance developed with
fuzzy logic (called FGOA), nine benchmark algorithms GOA, GA, PSO, GSA, GWO,
BBO, PBIL, ES, ACO, and the standard backpropagation (BP) algorithm were used. The
measured criteria are concurrency speed, ability to avoid local optimization, and accuracy.
The results show that FGOA has the best performance for training datasets and generalized
datasets with 96.43% and 92.03% accuracy, respectively.
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