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Low-overhead communications in IoT networks : structured signal processing approaches / by Yuanming Shi [and two others]

By: Contributor(s): Material type: Computer fileComputer fileLanguage: English Publication details: Singapore : Springer, 2020Description: 1 online resource (164, pages) : color illustrationsContent type:
  • text
Media type:
  • computer
Carrier type:
  • online resource
ISBN:
  • 9789811538698 (e-book)
Subject(s): LOC classification:
  • TK5102.9  Sh6 2020
Online resources:
Contents:
1. Introduction -- 2. Sparse linear model -- 3. Blind demixing -- 4. Sparse blind demixing -- 5. Shuffled linear regression -- 6. Learning augmented methods -- 7. conclusions and discussions
Summary: The recent developments in wireless communications, networking, and embedded systems have driven various innovative Internet of Things (IoT) applications, e.g., smart cities, mobile healthcare, autonomous driving and drones. A common feature of these applications is the stringent requirements for low-latency communications. Considering the typical small payload size of IoT applications, it is of critical importance to reduce the size of the overhead message, e.g., identification information, pilot symbols for channel estimation, and control data. Such low-overhead communications also help to improve the energy efficiency of IoT devices. Recently, structured signal processing techniques have been introduced and developed to reduce the overheads for key design problems in IoT networks, such as channel estimation, device identification, and message decoding. By utilizing underlying system structures, including sparsity and low rank, these methods can achieve significant performance gains. This book provides an overview of four general structured signal processing models: a sparse linear model, a blind demixing model, a sparse blind demixing model, and a shuffled linear model, and discusses their applications in enabling low-overhead communications in IoT networks. Further, it presents practical algorithms based on both convex and nonconvex optimization approaches, as well as theoretical analyses that use various mathematical tools.
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Holdings
Item type Current library Collection Call number Materials specified Status Notes Date due Barcode
Online E-Books Online E-Books Ladislao N. Diwa Memorial Library Multimedia Section Non-fiction OEBP TK5102.9 Sh6 2020 (Browse shelf(Opens below)) Available PAV OEBP000335
Compact Discs Compact Discs Ladislao N. Diwa Memorial Library Multimedia Section Non-fiction EB TK5102.9 Sh6 2020 (Browse shelf(Opens below)) Room use only PAV EB000335

https://portal.igpublish.com/iglibrary/ is required to read this e-book.

Includes bibliographical references

1. Introduction -- 2. Sparse linear model -- 3. Blind demixing -- 4. Sparse blind demixing -- 5. Shuffled linear regression -- 6. Learning augmented methods -- 7. conclusions and discussions

The recent developments in wireless communications, networking, and embedded systems have driven various innovative Internet of Things (IoT) applications, e.g., smart cities, mobile healthcare, autonomous driving and drones. A common feature of these applications is the stringent requirements for low-latency communications. Considering the typical small payload size of IoT applications, it is of critical importance to reduce the size of the overhead message, e.g., identification information, pilot symbols for channel estimation, and control data. Such low-overhead communications also help to improve the energy efficiency of IoT devices. Recently, structured signal processing techniques have been introduced and developed to reduce the overheads for key design problems in IoT networks, such as channel estimation, device identification, and message decoding. By utilizing underlying system structures, including sparsity and low rank, these methods can achieve significant performance gains. This book provides an overview of four general structured signal processing models: a sparse linear model, a blind demixing model, a sparse blind demixing model, and a shuffled linear model, and discusses their applications in enabling low-overhead communications in IoT networks. Further, it presents practical algorithms based on both convex and nonconvex optimization approaches, as well as theoretical analyses that use various mathematical tools.

Fund 164 CE-Logic Purchased April 14, 2022 OEBP000335 Carmona Campus PHP No Price 0000 0000

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