doi: 10.17586/2226-1494-2023-23-3-635-645


Comparative performance analysis of DVR & DSTATCOM for distributed generation with gravitational search algorithm

K. Bhavya, P. Rama Rao, L. Ravi Srinivas


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Bhavya K., Rama Rao P.V.V., Ravi Srinivas L. Comparative performance analysis of DVR & DSTATCOM for distributed generation with gravitational search algorithm. Scientific and Technical Journal of Information Technologies, Mechanics and Optics, 2023, vol. 23, no. 3, pp. 635–645. doi: 10.17586/2226-1494-2023-23-3-635-645


Abstract
The progress in the stream of the power electronic converters has led to the expansion of various protection devices for the distribution system. This also has led to an assortment of flexible transmission devices aiming to enhance the stability of the system throughout a variety of power quality issues and, furthermore, for enabling flexible uninterrupted power transmission during turbulences. This paper augments the employment of two Custom Power Devices, namely, Dynamic Voltage Restorer and Distribution Static Compensator for dealing with various power quality issues associated with distributed generation systems. This paper also involves analysis of performance of proposed Custom Power Devices with various algorithms, like gravitational search algorithm, BAT algorithm and ANT colony optimization algorithm for improving the stability of the power system. The proposed system has been tested with various distributed systems, fault conditions, and assessment has been performed among different algorithms in terms of supply voltage, supply current, active power, reactive power, and power factor. The design and analysis of entire system has been executed using MATLAB/Simulink.

Keywords: Dynamic Voltage Restorer, Distribution Static Compensator, Gravitational Search Algorithm

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