Energy-Efficient Wake-Up Signalling for Machine-Type Devices Based on
Traffic-Aware Long-Short Term Memory Prediction
- URL: http://arxiv.org/abs/2206.06058v1
- Date: Mon, 13 Jun 2022 11:42:22 GMT
- Title: Energy-Efficient Wake-Up Signalling for Machine-Type Devices Based on
Traffic-Aware Long-Short Term Memory Prediction
- Authors: David E. Ru\'iz-Guirola, Carlos A. Rodr\'iguez-L\'opez, Samuel
Montejo-S\'anchez, Richard Demo Souza, Onel L. A. L\'opez and Hirley Alves
- Abstract summary: Wake-up Signal (WuS) technology aims to minimize the energy consumed by the radio interface of machine-type devices (MTDs)
We design a simple but efficient neural network to predict MTC traffic patterns and configure WuS accordingly.
In terms of energy consumption reduction, FWuS can outperform the best benchmark mechanism in up to 32%.
- Score: 10.51090547010728
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Reducing energy consumption is a pressing issue in low-power machine-type
communication (MTC) networks. In this regard, the Wake-up Signal (WuS)
technology, which aims to minimize the energy consumed by the radio interface
of the machine-type devices (MTDs), stands as a promising solution. However,
state-of-the-art WuS mechanisms use static operational parameters, so they
cannot efficiently adapt to the system dynamics. To overcome this, we design a
simple but efficient neural network to predict MTC traffic patterns and
configure WuS accordingly. Our proposed forecasting WuS (FWuS) leverages an
accurate long-short term memory (LSTM)- based traffic prediction that allows
extending the sleep time of MTDs by avoiding frequent page monitoring occasions
in idle state. Simulation results show the effectiveness of our approach. The
traffic prediction errors are shown to be below 4%, being false alarm and
miss-detection probabilities respectively below 8.8% and 1.3%. In terms of
energy consumption reduction, FWuS can outperform the best benchmark mechanism
in up to 32%. Finally, we certify the ability of FWuS to dynamically adapt to
traffic density changes, promoting low-power MTC scalability
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