Litcius/Paper detail

Control for Grid-Connected VSC With Improved Damping Based on Physics-Informed Neural Network

Prabhat Ranjan Bana, Mohammad Amin

2023IEEE Journal of Emerging and Selected Topics in Industrial Electronics10 citationsDOI

Abstract

The rapid penetration of renewable energy sources into the power system makes the grid-connected voltage source converter (VSC) highly dynamic and uncertain. This necessitates designing new adaptive control for VSCs to ensure satisfactory system performance, reliability, and stability. This article introduces a physics-informed artificial neural network (ANN) controller for the grid-connected VSC to improve the system performance and dampen the voltage oscillation due to the sudden change in power demand. The employed ANN structure is a feed-forward multilayer neural network trained offline by the Levenberg–Marquardt-based backpropagation algorithm. Results are presented for different dynamic scenarios to show the satisfactory operation of the proposed controller. The small-signal stability analysis is presented to validate the system's stability. Further, the performance of the proposed ANN controller is compared with the widely-used PI controller and model predictive controller. The results prove that the proposed controller has a better dynamic performance in damping the voltage oscillation.

Topics & Concepts

Control theory (sociology)Controller (irrigation)Artificial neural networkElectric power systemVoltage sourceControl engineeringGridBackpropagationComputer scienceEngineeringVoltagePower (physics)Control (management)Artificial intelligenceMathematicsAgronomyGeometryPhysicsQuantum mechanicsElectrical engineeringBiologyMicrogrid Control and OptimizationPower System Optimization and StabilityPower Systems and Renewable Energy