Author
Listed:
- ANWER ZEB
(Institute of Computer Sciences and IT, (ICS/IT), The University of Agriculture, Peshawar, Pakistan)
- SAIMA ANWAR LASHARI
(��College of Computing and Informatics, Saudi Electronic University, Riyadh, Kingdom of Saudi Arabia)
- ARSHAD KHAN
(Institute of Computer Sciences and IT, (ICS/IT), The University of Agriculture, Peshawar, Pakistan)
- ABDULLAH KHAN
(Institute of Computer Sciences and IT, (ICS/IT), The University of Agriculture, Peshawar, Pakistan)
- KASHIF NAZAR
(��Department of Mathematics, Comsat University, Islamabad, Lahore Campus, Lahore, Pakistan)
- MUHAMMAD ISHAQ
(Institute of Computer Sciences and IT, (ICS/IT), The University of Agriculture, Peshawar, Pakistan)
Abstract
Artificial Neural Network (ANN) is a supervised learning nonlinear complex model. This characteristic enables ANN to be used in nonlinear system modeling and classification applications. This research work proposed a technique called Wavelet Neural Network (WNN), and in the hidden layers of WNN, Morlet and Mexican are used as an activation function. During the processing, the WNN gets stuck in the local minimum causing slow convergence. For evaluating such kinds of problems, numerous algorithms have been tried and used. Consequently, this proposed research work used a novel meta-heuristic search technique called Accelerated Particle Swarm Optimization (APSO) algorithm combined with the WNN. Due to the effective convergence and fast searching toward an optimal solution, the APSO algorithm is used. In the proposed APSOWNN algorithm, APSO searches for the best sub-search solution. In conclusion, this model is assessed on the basis of total of three different datasets like the 4-bit OR, 7-bit Parity and IRIS benchmark classification problems, and its efficiency is equated with criterion methods such like Wavelet Back Propagation Neural Network (WBPNN), Artificial Bee Colony Wavelet Neural Network (ABCWNN) and WNN. Finally, from the results of simulation, it has been concluded that the proposed algorithm’s performance is much better, as compared to the state-of-the-art algorithms in terms of mean square error.(MSE) and accuracy.
Suggested Citation
Anwer Zeb & Saima Anwar Lashari & Arshad Khan & Abdullah Khan & Kashif Nazar & Muhammad Ishaq, 2023.
"Numerical Solution Of Wavelet Neural Network Learning Weights Using Accelerated Particle Swarm Optimization Algorithm,"
FRACTALS (fractals), World Scientific Publishing Co. Pte. Ltd., vol. 31(02), pages 1-14.
Handle:
RePEc:wsi:fracta:v:31:y:2023:i:02:n:s0218348x23400261
DOI: 10.1142/S0218348X23400261
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