High-Resolution Data Acquisition and Joint Source-Channel Coding in Underwater IoT

IEEE Internet of Things Journal(2023)

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摘要
Reliable and persistent water monitoring is a challenging problem in smart underwater Internet of Things (UW IoT) due to its harsh, unexplored, and unpredictable nature. Given the need for high-resolution spatio–temporal sensing in such environments, traditional digital sensors are not suitable due to their high-cost, high-power consumption, and nonbiodegradable nature. Further, reliable and low-latency communication techniques that avoid data packet retransmissions, if the feedback is available, are crucial for reconstructing the phenomenon being monitored in a timely manner at the fusion center, such as a drone. To address the above challenges, we propose a novel architecture consisting of a substrate of densely deployed underwater all-analog biodegradable sensors that enable persistent sensing and continually transmitting data to the surface digital buoys. The analog nodes are designed to be energy efficient by implementing analog joint source-channel coding (JSCC), a low-complexity compression-communication technique, using biodegradable field effect transistors (FETs). We, then, propose a correlation-aware hybrid automatic repeat request (HARQ) technique to transmit data from the surface buoys to the fusion center. Such HARQ technique leverages JSCC and the redundancy in the buoy data (arising from the correlation of the phenomenon at the analog nodes) to avoid retransmissions, thus, saving energy and time.
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关键词
underwater iot,data acquisition,high-resolution,source-channel
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