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자료유형
학술저널
저자정보
Omar Abdel-Rahim (Aswan University) Hirohito Funato (Utsunomiya University) Haruna Junnosuke (Utsunomiya University)
저널정보
대한전기학회 Journal of Electrical Engineering & Technology Journal of Electrical Engineering & Technology Vol.12 No.4
발행연도
2017.7
수록면
1,484 - 1,494 (11page)

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We present a two-stage inverter with high step-up conversion ratio engaging modified finite-set Model Predictive Control (MPC) for utility-integrated photovoltaic (PV) applications. The anticipated arrangement is fit for low power PV uses, the calculated efficiency at 150 W input power and 19 times boosting ratio was around 94%. The suggested high-gain dc-dc converter based on Cockcroft-Walton multiplier constitutes the first-stage of the offered structure, due to its high step-up ability. It can boost the input voltage up to 20 times. The 3S current-source inverter constitutes the second-stage. The 3S current-source inverter hires three semiconductor switches, in which one is functioning at high-frequency and the others are operating at fundamental-frequency. The highswitching pulses are varied in the procedure of unidirectional sine-wave to engender a current coordinated with the utility-voltage. The unidirectional current is shaped into alternating current by the synchronized push-pull configuration. The MPC process are intended to control the scheme and achieve the subsequent tasks, take out the Maximum Power (MP) from the PV, step-up the PV voltage, and introduces low current with low Total Harmonic Distortion (THD) and with unity power factorwith the grid voltage.

목차

Abstract
1. Introduction
2. Proposed High Gain DC-DC Converter Based on Cockcroft-Walton Multiplier
3. Model Predictive Control for the 3S Inverter
4. Results
5. Conclusions
References

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