# Neural Network Predictive Controller for Grid-Connected Virtual   Synchronous Generator

**Authors:** Sepehr Saadatmand, Mohammad Saleh Sanjarinia, Pourya Shamsi, Mehdi, Ferdowsi, and Donald C. Wunsch

arXiv: 1908.05199 · 2019-08-15

## TL;DR

This paper introduces a neural network predictive controller for grid-connected virtual synchronous generators, enabling better power regulation in various grid conditions compared to traditional PI controllers.

## Contribution

It proposes a neural network predictive control method that replaces conventional VSGs, allowing inverters to operate effectively in both inductive and non-inductive grids.

## Key findings

- Neural network controller adapts to any grid impedance angle.
- Outperforms traditional PI-based VSGs in non-inductive grids.
- Simulation confirms improved power regulation.

## Abstract

In this paper, a neural network predictive controller is proposed to regulate the active and the reactive power delivered to the grid generated by a three-phase virtual inertia-based inverter. The concept of the conventional virtual synchronous generator (VSG) is discussed, and it is shown that when the inverter is connected to non-inductive grids, the conventional PI-based VSGs are unable to perform acceptable tracking. The concept of the neural network predictive controller is also discussed to replace the traditional VSGs. This replacement enables inverters to perform in both inductive and non-inductive grids. The simulation results confirm that a well-trained neural network predictive controller illustrates can adapt to any grid impedance angle, compared to the traditional PI-based virtual inertia controllers.

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Source: https://tomesphere.com/paper/1908.05199