Multi-Agent Actor-Critic Method For Joint Duty-Cycle And Transmission Power Control

PROCEEDINGS OF THE 2020 DESIGN, AUTOMATION & TEST IN EUROPE CONFERENCE & EXHIBITION (DATE 2020)(2020)

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摘要
In energy-harvesting Internet of Things (EH-IoT) wireless networks, maintaining energy neutral operation (ENO) is crucial for their perpetual operation and maintenance-free property. Guaranteeing this ENO condition and optimal power-performance trade-off under transient harvested energy and wireless channel quality is particularly challenging. This paper proposes a multi-agent actor-critic reinforcement learning for modulating both the transmitter duty-cycle and output power based on the state-of-buffer (SoB) and the state-of-charge (SoC) information as a state. Thanks to these buffers, differently from the state-of-the-art, our solution does not require any model of the wireless transceiver nor any direct measurement of both harvested energy and wireless channel quality for adapting to these uncertainties. Simulation results of a solar powered EHIoT node using real-life outdoor solar irradiance data show that the proposed method achieves better performance without system failures throughout a year compared to the state-of-the-art that suffers some system downtime. Our approach also predicts almost no system fails during five years of operation.
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关键词
multiagent actor-critic method,joint duty-cycle,transmission power control,energy neutral operation,ENO,perpetual operation,maintenance-free property,optimal power-performance trade,transient harvested energy,wireless channel quality,multiagent actor-critic reinforcement,transmitter duty-cycle,output power,state-of-buffer,state-of-charge information,wireless transceiver,solar powered EH-IoT node,real-life outdoor solar irradiance data
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