Loading…
A new two-axis solar tracker based on the online optimization method: Experimental investigation and neural network modeling
•A new two-axis solar tracker is designed and developed.•Online optimization method can bypass the dynamic mathematical model of the mechatronic system and the movement of the sun.•Particle swarm optimization algorithm has an accurate performance and the fastest optimization algorithm.•Best performa...
Saved in:
Published in: | Energy and AI 2023-10, Vol.14, p.100284, Article 100284 |
---|---|
Main Authors: | , , , |
Format: | Article |
Language: | English |
Subjects: | |
Citations: | Items that this one cites Items that cite this one |
Online Access: | Get full text |
Tags: |
Add Tag
No Tags, Be the first to tag this record!
|
Summary: | •A new two-axis solar tracker is designed and developed.•Online optimization method can bypass the dynamic mathematical model of the mechatronic system and the movement of the sun.•Particle swarm optimization algorithm has an accurate performance and the fastest optimization algorithm.•Best performance of the particle swarm optimization algorithm happens at a population size of 15 and 7 iterations.•Artificial neural network predicts the solar movement in each day and time of a year.
This article presents a new two-axis solar tracker based on an online optimization algorithm so as to track the position of the sun without using its movement model. In this research, four well-known optimization algorithms are employed to find the two unknown parameters named azimuth and zenith angles, which determine the position of the sun. The magnitude of the sunray is considered as the cost function of all algorithms. Then, several experiments are carried out to find the best optimization algorithm with optimal population size, number of iterations, and also the best initialization method. Uniform initialization leads to faster convergence compared to random initialization. The results clearly show that the particle swarm optimization algorithm with a population size of 15 and 7 iterations using uniform initialization method has better performance than the other algorithms, with a convergence time of less than 40 s. The average fitness value or voltage received by the tracker is 2.4 Volts in this method, which is higher than other methods. TLBO also performs well with a population size of 15 and 7 iterations. Afterward, the artificial neural network with one hidden layer and 20 neurons is employed to predict these two parameters in each day and moment in a year in Shiraz city according to the experimental data extracted from PSO. Number of the day from January and the time are inputs and zenith and azimuth angles are considered the output of neural network modeling. The performance of the proposed ANN model is evaluated using regression plots, demonstrating a strong correlation between predicted and target outputs. Finally, the outcomes reveal the feasibility of using online optimization algorithms and neural network modeling in an effort to bypass the complex mathematical model of mechatronic systems and predict the movement of the sun automatically.
[Display omitted] |
---|---|
ISSN: | 2666-5468 2666-5468 |
DOI: | 10.1016/j.egyai.2023.100284 |