Journal of Control Science and Engineering (Jan 2022)

Deep Learning Techniques for Peer-to-Peer Physical Systems Based on Communication Networks

  • Ajay. P,
  • Nagaraj. B,
  • Ruihang Huang

DOI
https://doi.org/10.1155/2022/8013640
Journal volume & issue
Vol. 2022

Abstract

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Existing communication networks have inherent limitations in translation theory and adapt to address the complexity of repairing new remote applications at the highest possible level. For further investigation, you are more likely to pass this test using a data-driven program and increasing the exposure of your wireless network with limited distance resources. This study focuses on various deep learning strategies used in peer-to-peer communication networks. It discusses autoencoders, productive enemy networks, deep emotional networks, common neural networks, and long-term memory, all of which show promise in all aspects of a wireless communication network. In social networks, all of these strategies provide significant reliability, robustness, and cost-effective solutions. In-depth learning enhances test-based performance that helps design, develop, and adapt wireless communication networks.