A multi strategy optimization framework using AI digital twins for smart grid carbon emission reduction
S. Sakthivel, M. Arivukarasi, G. Charulatha, J. Nithisha, B. Abirami, A. K. Jaithunbi, V. Suresh Kumar

TL;DR
This paper introduces an AI-based digital twin framework that optimizes energy storage in smart grids to reduce carbon emissions and improve renewable energy usage.
Contribution
The novel contribution is a multi-strategy AI framework integrating various energy storage systems to achieve carbon neutrality in smart grids.
Findings
AI-optimized multi-energy storage integration reduces carbon emissions by approximately 30% compared to conventional methods.
Model Predictive Control (MPC) achieves a 29.9% reduction in carbon footprint with 30% operational cost savings.
MPC is identified as a balanced method for real-world application due to its optimization performance and practical implementability.
Abstract
This research presents an AI-enabled digital twin framework to achieve carbon neutrality in smart grids through optimal management of heterogeneous energy storage systems. The proposed structure integrates battery, thermal, and hydrogen storage technologies with AI-driven forecasting models to address the challenge of renewable integration, while maintaining grid stability and economic viability. This paper presents a comparative analysis of three distinct optimization methodologies, like a rule-based (RB) heuristic approach, Model Predictive Control (MPC) with look-ahead capability, and a multi-objective Genetic Algorithm (GA). Simulation results that demonstrate the AI-optimized multi-energy storage (MES) integration significantly enhance the renewable utilization and reduce carbon emissions by approximately 30% compared to conventional approaches. Specifically, the MPC achieves a…
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Taxonomy
TopicsIntegrated Energy Systems Optimization · Hybrid Renewable Energy Systems · Microgrid Control and Optimization
