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Energy Theft Detection in Smart Grids Using Graph Neural Networks (GNNs)

Energy Theft Detection in Smart Grids Using Graph Neural Networks (GNNs)/strong>
Authors:-Assistant Professor Dr. Pankaj Malik, Himisha Gupta, Anoushka Anand, Siddhesh Bhatt, Devansh Gupta

Abstract-Energy theft poses significant challenges to smart grid operations, leading to substantial financial losses and grid instability. Traditional machine learning approaches often fall short in detecting energy theft due to the complex and interconnected nature of smart grid systems. This paper proposes a novel approach to energy theft detection using Graph Neural Networks (GNNs), leveraging the inherent graph structure of smart grids. By representing the grid as a graph, where nodes correspond to smart meters and transformers, and edges represent electrical connections, GNNs capture both the local consumption patterns and the relationships between grid components. The proposed model aggregates node and edge features to identify anomalous consumption behaviors indicative of energy theft. We apply both Graph Convolutional Networks (GCN) and Graph Attention Networks (GAT) to enhance detection accuracy by considering both the structural and consumption-related features of the grid. The model is trained and evaluated on real-world and simulated smart grid datasets, showing improved performance over traditional classification models such as support vector machines and random forests. Evaluation metrics including precision, recall, and F1-score demonstrate the model’s robustness, even in the presence of noisy data and imbalanced class distributions. This research highlights the potential of GNNs to enhance energy theft detection in smart grids, providing a scalable and interpretable solution that can adapt to evolving grid conditions. Future work includes expanding the model to incorporate temporal data for real-time detection and exploring reinforcement learning for adaptive theft prevention strategies.

DOI: 10.61137/ijsret.vol.10.issue5.319
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Dietary Interventions for Speech Delay and Hyperactivity in a Child with Machine Learning and AI Applications

Dietary Interventions for Speech Delay and Hyperactivity in a Child with Machine Learning and AI Applications/strong>
Authors:-Sujatha Mudadla

Abstract-This study investigates the role of specific dietary changes in addressing speech delay and hyperactivity symptoms in my son. Recognizing nutrition and maternal health as influential factors in child development, I explored how targeted dietary adjustments might enhance speech clarity, attention, concentration, and behavior. The study also explores maternal influences, including anemia and stress during conception, and their potential impacts on gut health and speech development. Additionally, I examined the effectiveness of repeated oral teaching methods, such as memorizing rhymes and vocabulary, for reinforcing neural pathways. To extend the research, I explore how machine learning (ML), deep learning (DL), computer vision, and generative AI can be applied to monitor, predict, and enhance the intervention’s effectiveness.

DOI: 10.61137/ijsret.vol.10.issue5.318
55

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