Comparing Performance of Pid and Fuzzy Controllers in the Present of Noise for a Photovoltaic System
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Authors
Amir Gheibi
- Department of Electrical Engineering, Shahid Bahonar University of Kerman.
S. Mohammad Ali Mohammadi
- Department of Electrical Engineering, Shahid Bahonar University of Kerman.
Malihe M. Farsangi
- Department of Electrical Engineering, Shahid Bahonar University of Kerman.
Abstract
The main advantage of using fuzzy controller for a hard nonlinear system, for instance solar cell, is the reduction of effect of uncertainty in system control. In this paper, this prominent quality has been tried to represent more with comparing fuzzy and PID controllers. Although PID controller is a linear controller but it can control many nonlinear and industrial systems with a much better performance. Howbeit it has less robustness against uncertainty. We have indicated that if an uncertainty for example a noise or a changing in the parameter of system, enters during the operation of system, fuzzy controller will decrease the effect of it better than PID controller.
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ISRP Style
Amir Gheibi, S. Mohammad Ali Mohammadi, Malihe M. Farsangi, Comparing Performance of Pid and Fuzzy Controllers in the Present of Noise for a Photovoltaic System, Journal of Mathematics and Computer Science, 9 (2014), no. 1, 69-76
AMA Style
Gheibi Amir, Mohammadi S. Mohammad Ali, Farsangi Malihe M., Comparing Performance of Pid and Fuzzy Controllers in the Present of Noise for a Photovoltaic System. J Math Comput SCI-JM. (2014); 9(1): 69-76
Chicago/Turabian Style
Gheibi, Amir, Mohammadi, S. Mohammad Ali, Farsangi, Malihe M.. "Comparing Performance of Pid and Fuzzy Controllers in the Present of Noise for a Photovoltaic System." Journal of Mathematics and Computer Science, 9, no. 1 (2014): 69-76
Keywords
- fuzzy logic control
- Boost converter
- PID controller
- Maximum power point tracking
- Solar cell
MSC
- 68T05
- 92B20
- 94A08
- 93C42
- 93A30
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