DESIGN AND SIMULATION OF SEPIC CONVERTER WITH SOFT SWITCHING BY USING MATLAB SIMULINK

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Apeksha S. Sonone

Abstract

Electrical consumers like residents, industries are using more and more electronic devices. And at the same time new concepts like DC micro grid, electronic WARFARE systems, mainly solar and wind renewable energy generations etc requires sophisticated and well regulated power supply. A major factor that affects performance and life of above new concepts is, “EFFICIENCY OF Power Supply”. The term efficiency means how much input power is provided to the system and how much power is obtained at the output of the system. If there is any loss dominating the system, it will draw more power eventually increasing Burdon on supply side. In huge power grid system like in India, inefficiency means considerable loss of resources. So to reduce the losses in the system engineers are looking towards Power Electronic devices like converters, inverters. Here in this research report, researcher is comparing as well as analysing five DC to DC converters. some of these converters provide high efficiency ,low ripple ,maximum output voltage etc. In these converters, static switching devices are used at high frequency like 25KHz.Though these switching devices are fairly efficient but they also exhibit some inherent losses like switching loss. To reduce this loss there are few concepts which are getting ground in the field of power conversion. one concept is SOFT switching of the switch where it does not allow voltage or current to be present at time of switching. This technique requires comparative study of converters to get an fair idea about which topology (which is going to be employed in soft switching) will full-fill requirements of modern challenges in front of power engineers

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How to Cite
[1]
Apeksha S. Sonone, “DESIGN AND SIMULATION OF SEPIC CONVERTER WITH SOFT SWITCHING BY USING MATLAB SIMULINK”, IEJRD - International Multidisciplinary Journal, vol. 6, no. ICMRD21, p. 11, Apr. 2021.

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