Analysis of power loss in forward converter transformer using a novel machine learning-based optimization framework

被引:0
作者
Pavankumar R. Patil
Satish Tanavade
M. N. Dinesh
机构
[1] Sharad Institute of Technology College of Engineering,Department of Electrical Engineering
[2] National University of Science and Technology,Department of Electrical and Communication Engineering, College of Engineering
[3] R V College of Engineering,Department of Electrical and Electronics Engineering
来源
Soft Computing | 2023年 / 27卷
关键词
Forward converter; Machine learning; Optimization; Power loss; Transformer; Wind system;
D O I
暂无
中图分类号
学科分类号
摘要
In wind energy systems, high voltage gain and high power-based forward converters are mainly used for switched-mode power supplies. However, due to the wide range of load usage in grid systems, the reliability and power loss in forward converter-based system performance became crucial. Many earlier researches are conducted to validate the performance of forward converters in renewable resources. But, effective improvement is not achieved for wind applications. Thus, in this paper, the novel grey wolf-based boosting intelligent frame (GWbBIF) control algorithm is proposed in forward converter switching controls. The gain of the controller and duty cycle of the converter is tuned by the proposed control approach. Consequently, the power loss from the wind transformer is optimized by the proposed grey wolf fitness function. The implementation of this research has been done on the MATLAB/Simulink platform. The simulation outcomes of the proposed system are compared with various conventional techniques in terms of total harmonic distortion (THD), power loss, stability, error, driving circuit, etc. While compared with the other methods, the proposed methods effectively show the optimal performance of forward converter in wind system by reduced power loss and improved reliability that is considered as the significant aspects while estimating the entire system.
引用
收藏
页码:3733 / 3749
页数:16
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