Hybrid Energy Sources using Current Fed Inverter for High Gain in Single Phase to AC Loads

S. K, Jayaprakash S, H. M, R. R.
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Abstract

This article presents the hybrid Renewable Energy Sources (RES) like wind and Fuel Cell (FC) stack used for more efficiency and utilized the current fed inverter. The proposed system has two sources: a current-fed inverter (CFI) and a Proportional Integral (PI) controller controlling the switch. The main objective of the suggested inverter is to provide high voltage gain by two renewable energy sources and produce high voltage for AC loads. Two essential characteristics can achieve this CFI: switching boost inverter and impedance source. Further, the harmonics of the proposed system can be controlled by an LC filter employed nearer to the AC loads. The proposed method is validated by using MATLAB/Simulink software and analyzed through the Simulink waveforms. This THD indicates that the system is executing correctly, and IEEE standards limit THD to 5%. The method with enhanced performance analysis within the range is designed.
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采用电流型逆变器实现单相交流负载高增益的混合能源
本文介绍了混合可再生能源(RES),如风能和燃料电池(FC)堆栈,用于提高效率,并利用电流馈电逆变器。所提出的系统有两个源:一个电流馈电逆变器(CFI)和一个比例积分(PI)控制器控制开关。所建议的逆变器的主要目标是通过两种可再生能源提供高电压增益,并为交流负载产生高电压。可以实现这种CFI的两个基本特性:开关升压逆变器和阻抗源。此外,该系统的谐波可以通过靠近交流负载的LC滤波器来控制。利用MATLAB/Simulink软件对该方法进行了验证,并对Simulink波形进行了分析。该THD表示系统运行正常,IEEE标准将THD限制在5%以内。设计了在范围内增强性能分析的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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