Precise Energy Modeling for the Bluetooth Low Energy Protocol
Bluetooth Low Energy (BLE) is a wireless protocol well suited for ultra-low-power sensors running on small batteries. BLE is described as a new protocol in the official Bluetooth 4.0 specification. To design energy-efficient devices, the protocol provides a number of parameters that need to be optim...
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Zusammenfassung: | Bluetooth Low Energy (BLE) is a wireless protocol well suited for
ultra-low-power sensors running on small batteries. BLE is described as a new
protocol in the official Bluetooth 4.0 specification. To design
energy-efficient devices, the protocol provides a number of parameters that
need to be optimized within an energy, latency and throughput design space. To
minimize power consumption, the protocol parameters have to be optimized for a
given application. Therefore, an energy-model that can predict the energy
consumption of a BLE-based wireless device for different parameter value
settings, is needed. As BLE differs from the original Bluetooth significantly,
models for Bluetooth cannot be easily applied to the BLE protocol. Since the
last one year, there have been a couple of proposals on energy models for BLE.
However, none of them can model all the operating modes of the protocol. This
paper presents a precise energy model of the BLE protocol, that allows the
computation of a device's power consumption in all possible operating modes. To
the best of our knowledge, our proposed model is not only one of the most
accurate ones known so far (because it accounts for all protocol parameters),
but it is also the only one that models all the operating modes of BLE.
Furthermore, we present a sensitivity analysis of the different parameters on
the energy consumption and evaluate the accuracy of the model using both
discrete event simulation and actual measurements. Based on this model,
guidelines for system designers are presented, that help choosing the right
parameters for optimizing the energy consumption for a given application. |
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DOI: | 10.48550/arxiv.1403.2919 |