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International Research Journal of Scientific Reports and Reviews

Published

AI-ENHANCED ADAPTIVE DROOP CONTROL FOR MULTI-MICROGRID NETWORKS UNDER HIGH RENEWABLE PENETRATION

Published in July-Dec 2025 (Vol. 1, Issue 1, 2025)

AI-ENHANCED ADAPTIVE DROOP CONTROL FOR MULTI-MICROGRID NETWORKS UNDER HIGH RENEWABLE PENETRATION - Issue cover

Abstract

The modern multi-microgrid (MMG) systems with high renewable penetration are subject to voltage instability, inefficiency in power sharing, and long transient recovery, which are drawbacks that the conventional fixed droop controllers cannot tackle. In this context, research presents the AI-Enhanced Adaptive Droop Control (AI-ADC) framework that combines rule-based tuning with a neural-network model that can predict the optimal droop coefficients in real time. The controller is validated through a high-fidelity MATLAB/Simulink model incorporating the dynamics of PV, wind, BESS, and a converter, and subjected to load steps, irradiance fall-off, DER failure, and communication delay situations. The controller's performance with respect to voltage undershoot has been better by over 60%, the voltage steady-state deviation has been under 0.25 V, the power-sharing error has been reduced to below 3%, and the settling time has been almost four times faster than that of the conventional methods. The AI-ADC, by allowing predictive and adaptive droop adjustments, presents a scalable, efficient, and highly resilient control solution for the next-generation MMG networks dominated by renewable energy sources.

Authors (5)

Sanskar Hajela

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Shivani mahura

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Priyanshu Gautam

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Sanskar Hajela

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Shivani mahura

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Article Information

Article ID:
IRJSRR110011
Paper ID:
IRJSRR-01-000011
Pages:
121-138
Published Date:
2026-03-03

Article Impact

Views:2,162
Downloads:2,113

How to Cite

Hajela & mahura & Gautam & Hajela & mahura (2026). AI-ENHANCED ADAPTIVE DROOP CONTROL FOR MULTI-MICROGRID NETWORKS UNDER HIGH RENEWABLE PENETRATION. International Research Journal of Scientific Reports and Reviews, 1(1), 121-138. https://irjsrr.com/articles/9

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