@article{Praveen Kumar_Ganapathy_Manikandan_2022, title={Improvement of voltage stability for grid connected solar photovoltaic systems using static synchronous compensator with recurrent neural network}, url={http://eie.khpi.edu.ua/article/view/249177}, DOI={10.20998/2074-272X.2022.2.10}, abstractNote={<p><strong><em>Purpose.</em></strong> <em>This article proposes a new control strategy for static synchronous compensator in utility grid system. The proposed photovoltaic fed static synchronous compensator is utilized along with recurrent neural network based reference voltage generation is presented in grid system network.<strong> The novelty</strong> of the proposed work consists in presenting a Landsman converter enhanced photovoltaic fed static synchronous compensator with recurrent neural network algorithm, to generate voltage and maintain the voltage-gain ratio.<strong> Methods.</strong> The proposed algorithm which provides sophisticated and cost-effective solution for utilization of adaptive neuro-fuzzy inference system as maximum power point tracking assures controlled output and supports the extraction of complete power from the photovoltaic panel. Grid is interconnected with solar power, voltage phase angle mismatch, harmonic and voltage instability may occur in the distribution grid. The proposed control technique strategy is validated using MATLAB/Simulink software and hardware model to analysis the working performances. <strong>Results.</strong> The results obtained show that the power quality issue, the proposed system to overcome through elimination of harmonics, reference current generation is necessary, which is accomplished by recurrent neural network. By recurrent neural network, the reference signal is generated more accurately and accordingly the pulses are generated for controlling the inverter.</em> <strong><em>Originality.</em></strong> <em>Compensation of power quality issues, grid stability and harmonic reduction in distribution network by using photovoltaic fed static synchronous compensator is utilized along with recurrent neural network controller.</em> <strong><em>Practical value</em></strong><em>. The work concerns the comparative study and the application of static synchronous compensator with recurrent neural network controller to achieve a good performance control system of the distribution network system. This article presents a comparative study between the conventional static synchronous compensator, static synchronous compensator with recurrent neural network and hardware implementation with different load. The strategy based on the use of a static synchronous compensator with recurrent neural network algorithm for the control of the continuous voltage stability and harmonic for the distribution network-linear as well as non-linear loads in efficient manner. The study is validated by the simulation results based on MATLAB/Simulink software and hardware model.</em></p>}, number={2}, journal={Electrical Engineering & Electromechanics}, author={Praveen Kumar, T. and Ganapathy, S. and Manikandan, M.}, year={2022}, month={Apr.}, pages={69–77} }