Pyramid Quantum Neural Network Based Resource Allocation with IoT: A Deep Learning Method

Authors

  • Khushwant Singh Department of Computer Science and Engineering, Maharshi Dayanand University, Rohtak, India, India
  • Mohit Yadav Department of Mathematics, University Institute of Sciences, Chandigarh University, Punjab,India, India https://orcid.org/0000-0002-9332-8480
  • Kirti Department of Computer Science and Engineering, Maharshi Dayanand University, Rohtak, India, India
  • Sunil Kumar Department of Vocational Studies and Skill Development, Central University of Haryana, India, India
  • Bobur Sobirov Department of Economics, Samarkand Branch of Tashkent State University of Economics, Uzbekistan, Uzbekistan

DOI:

https://doi.org/10.15575/join.v10i1.1578

Keywords:

Deep Learning, Internet of Things, Pyramid Quantum Neural Network, Quantum Computing, Resource Allocation

Abstract

As more smart devices are connected and collecting massive quantities of data, the Internet of Things is growing rapidly. Resource management is another crucial issue since IoT networks are very diverse and often built and rebuilt dynamically. This study introduces a new kind of deep learning model known as the Pyramid Quantum Neural Network (PY-QNN) to solve the problem of resource allocation in Internet of Things systems. PY-QNN builds on quantum computing to improve the accuracy, scalability, and computation performance of Deep Learning. Because of superposition and entanglement, which increase generalization and provide faster convergence, QNNs enhance learning capabilities. The pyramid structure also helps manage the hierarchy of IoT networks. In order to forecast efficient resource assignment and implement this as soon as feasible to lower latency and boost efficiency, PY-QNN uses simulated resource and network requirements. Experimental findings demonstrate that PY-QNN outperforms baseline common deep learning techniques by reducing resource waste and offering online solutions, especially in large and complex IoT networks.

Author Biographies

Khushwant Singh, Department of Computer Science and Engineering, Maharshi Dayanand University, Rohtak, India

Ph.D.

Mohit Yadav, Department of Mathematics, University Institute of Sciences, Chandigarh University, Punjab,India

Assistant Professor

Kirti, Department of Computer Science and Engineering, Maharshi Dayanand University, Rohtak, India

Assistant Professor

Sunil Kumar, Department of Vocational Studies and Skill Development, Central University of Haryana, India

Assistant Professor

Bobur Sobirov, Department of Economics, Samarkand Branch of Tashkent State University of Economics, Uzbekistan

Associate Professor

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2025-04-01

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