Dynamic performance evaluation of automated QFT robust controller for grid-tied fuel cell under uncertainty conditions
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Date
2020
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Publisher
Elsevier Ltd
Abstract
Power flow control and peak point tracking are significant in grid-tied renewable energy systems to improve power factor and efficient energy extraction. In this paper, the design of robust controllers for the power electronic converters of the grid-connected PEM fuel cell with thermal modeling is deliberated. Further, the transfer function model of the power electronic converters is derived by considering uncertainty in system parameters. A low complexity algorithm is used to design the converter parameters from the uncertainty range. The proposed robust automated power flow controller is designed to minimize the objective function using a genetic algorithm in the quantitative feedback theory framework. The robustness and disturbance rejection with enhanced transient response of the proposed controller is evaluated under heavy and light loading conditions, DC-link voltage and grid voltage distortion uncertainty conditions are investigated. Finally, comprehensive simulations are performed to validate the proposed controller performance with the existing controller under the above-mentioned uncertainty conditions. © 2020 Elsevier Ltd
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Keywords
Computational complexity, Controllers, Disturbance rejection, Electric load flow, Electric power transmission networks, Energy efficiency, Flow control, Genetic algorithms, Power control, Power converters, Power electronics, Proton exchange membrane fuel cells (PEMFC), Renewable energy resources, Transient analysis, Design of robust controllers, Dynamic performance evaluations, Grid-voltage distortion, Low complexity algorithm, Power electronic converters, Quantitative feedback theory, Renewable energy systems, Transfer function model, Electric power system control, control system, design, dynamic analysis, dynamic response, fuel cell, genetic algorithm, modeling, quantitative analysis, transfer function, uncertainty analysis
Citation
Sustainable Energy Technologies and Assessments, 2020, 42, , pp. -
