Minimizing the power consumption of always-on sensors is crucial for extending the lifetime of battery-operated devices that are required to monitor events continuously and for long periods. This paper proposes a novel programmable μW event-driven acoustic detector featuring 'always-on' audio pattern recognition. The event-driven detector detects up to eight programmable spectral-temporal features extracted with a low-power single-channel analog circuit and classifies the features by an onboard microcontroller. The event-driven detector is combined with novel microbial fuel cells (MFCs) to achieve self-sustainability in an underwater scenario. Experimental results demonstrate that the power consumption of the detector is only 26.89μW during always-on mode, achieving up to 59-dB sound pressure level of sensitivity. High detection accuracy of up to 95.89% in recognizing acoustic patterns has been experimentally verified. Accurate measurements with commercial MFCs demonstrate the capability to achieve self-sustainability in always-on monitoring.

Mayer P., Magno M., Benini L. (2019). Self-Sustaining Acoustic Sensor with Programmable Pattern Recognition for Underwater Monitoring. IEEE TRANSACTIONS ON INSTRUMENTATION AND MEASUREMENT, 68(7), 2346-2355 [10.1109/TIM.2018.2890187].

Self-Sustaining Acoustic Sensor with Programmable Pattern Recognition for Underwater Monitoring

Benini L.
2019

Abstract

Minimizing the power consumption of always-on sensors is crucial for extending the lifetime of battery-operated devices that are required to monitor events continuously and for long periods. This paper proposes a novel programmable μW event-driven acoustic detector featuring 'always-on' audio pattern recognition. The event-driven detector detects up to eight programmable spectral-temporal features extracted with a low-power single-channel analog circuit and classifies the features by an onboard microcontroller. The event-driven detector is combined with novel microbial fuel cells (MFCs) to achieve self-sustainability in an underwater scenario. Experimental results demonstrate that the power consumption of the detector is only 26.89μW during always-on mode, achieving up to 59-dB sound pressure level of sensitivity. High detection accuracy of up to 95.89% in recognizing acoustic patterns has been experimentally verified. Accurate measurements with commercial MFCs demonstrate the capability to achieve self-sustainability in always-on monitoring.
2019
Mayer P., Magno M., Benini L. (2019). Self-Sustaining Acoustic Sensor with Programmable Pattern Recognition for Underwater Monitoring. IEEE TRANSACTIONS ON INSTRUMENTATION AND MEASUREMENT, 68(7), 2346-2355 [10.1109/TIM.2018.2890187].
Mayer P.; Magno M.; Benini L.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11585/724587
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