A deep learning and IoT-driven framework for real-time adaptive resource allocation and grid optimization in smart energy systems

被引:0
|
作者
Arvind R. Singh [1 ]
M. S. Sujatha [2 ]
Akshay D. Kadu [3 ]
Mohit Bajaj [4 ]
Hailu Kendie Addis [5 ]
Kota Sarada [6 ]
机构
[1] Hanjiang Normal University,Department of Electrical Engineering, School of Physics and Electronic Engineering
[2] Mohan Babu University,Department of EEE, School of Engineering
[3] Yeshwantrao Chavan College of Engineering,Department of Electronics Engineering
[4] Graphic Era (Deemed to be University),Department of Electrical Engineering
[5] Hourani Center for Applied Scientific Research,Department of EEE
[6] Al-Ahliyya Amman University,undefined
[7] Graphic Era Hill University,undefined
[8] Amhara Agricultural Research Institute,undefined
[9] Soil and Water Management Research Directorate,undefined
[10] Koneru Lakshmaiah Education Foundation,undefined
关键词
Adaptive learning; Deep learning; Grid optimization; Internet of things; Multi-agent systems; Real-time analytics; Resource allocation; Smart grids;
D O I
10.1038/s41598-025-02649-w
中图分类号
学科分类号
摘要
The rapid evolution of smart grids, driven by rising global energy demand and renewable energy integration, calls for intelligent, adaptive, and energy-efficient resource allocation strategies. Traditional energy management methods, based on static models or heuristic algorithms, often fail to handle real-time grid dynamics, leading to suboptimal energy distribution, high operational costs, and significant energy wastage. To overcome these challenges, this paper presents ORA-DL (Optimized Resource Allocation using Deep Learning) an advanced framework that integrates deep learning, Internet of Things (IoT)-based sensing, and real-time adaptive control to optimize smart grid energy management. ORA-DL employs deep neural networks, reinforcement learning, and multi-agent decision-making to accurately predict energy demand, allocate resources efficiently, and enhance grid stability. The framework leverages both historical and real-time data for proactive power flow management, while IoT-enabled sensors ensure continuous monitoring and low-latency response through edge and cloud computing infrastructure. Experimental results validate the effectiveness of ORA-DL, achieving 93.38% energy demand prediction accuracy, improving grid stability to 96.25%, and reducing energy wastage to 12.96%. Furthermore, ORA-DL enhances resource distribution efficiency by 15.22% and reduces operational costs by 22.96%, significantly outperforming conventional techniques. These performance gains are driven by real-time analytics, predictive modelling, and adaptive resource modulation. By combining AI-driven decision-making, IoT sensing, and adaptive learning, ORA-DL establishes a scalable, resilient, and sustainable energy management solution. The framework also provides a foundation for future advancements, including integration with edge computing, cybersecurity measures, and reinforcement learning enhancements, marking a significant step forward in smart grid optimization.
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