Wireless sensor networks (WSNs) face inherent constraints in
resources, such as power supply, processing speed, memory requirements, and
bandwidth for communication. Given their limited power supply, energy
consumption is a critical challenge in the development of protocols and
algorithms for WSNs. Various operations in WSNs, including data sensing,
computation, node switching, and transmission, necessitate a focus on energy
efficiency. Extensive literature reveals that a substantial portion of energy
in WSNs is consumed during radio communications. To address this issue,
reducing the number of transmitted data bits has been identified as an
effective strategy to minimize energy consumption.
Therefore, employing data compression techniques becomes imperative in order to
reduce the overall number of bits transmitted. Although researchers have
explored numerous energy-efficient lightweight compression algorithms [4]
tailored for WSN data, there remains a need for more efficient compression
techniques that not only compress data but also minimize the mean square error
(MSE) of the received data. In this paper, we propose a novel approach using
differential encoding-based compressed sensing (CS) to achieve this goal.
Simulation results demonstrate a notable improvement in the compression ratio
compared to the standard compressed sensing technique, highlighting the
efficacy of the suggested protocol in enhancing the existing WSN system.
Author(s) Details:
Parnasree Chakraborty,
Department of Electronics and Communication Engineering, BSA
Crescent Institute of Science & Technology, Chennai, India.
C.
Tharini,
Department
of Electronics and Communication Engineering, BSA Crescent Institute of Science
& Technology, Chennai, India.
Please see the link here: https://stm.bookpi.org/CPSTR-V6/article/view/13567
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