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Journal ArticleDOI

Hibernets: Energy-Efficient Sensor Networks Using Analog Signal Processing

TLDR
This paper describes how ultra-low-power analog circuitry can be integrated with sensor nodes to create energy-efficient sensor networks and presents a custom analog front-end which performs spectral analysis at a fraction of the power used by a digital counterpart.
Abstract
Preprocessing of data before transmission is recommended for many sensor network applications to reduce communication and improve energy efficiency. However, constraints on memory, speed, and energy currently limit the processing capabilities within a sensor network. In this paper, we describe how ultra-low-power analog circuitry can be integrated with sensor nodes to create energy-efficient sensor networks. To demonstrate this concept, we present a custom analog front-end which performs spectral analysis at a fraction of the power used by a digital counterpart. Furthermore, we show that the front-end can be combined with existing sensor nodes to 1) selectively wake up the mote based upon spectral content of the signal, thus increasing battery life without missing interesting events, and to 2) achieve low-power signal analysis using an analog spectral decomposition block, freeing up digital computation resources for higher-level analysis. Experiments in the context of vehicle classification show improved performance for our ASP-interfaced mote over an all-digital implementation.

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Citations
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Journal ArticleDOI

A 90 nm CMOS, $6\ {\upmu {\text{W}}}$ Power-Proportional Acoustic Sensing Frontend for Voice Activity Detection

TL;DR: In this article, the authors presented a new power-proportional sensing paradigm and the use of machine-learning-assisted moderate-precision analog analytics for classification of speech and non-speech.
Journal ArticleDOI

A 0.5 V 55 $\mu \text{W}$ 64 $\times $ 2 Channel Binaural Silicon Cochlea for Event-Driven Stereo-Audio Sensing

TL;DR: A 0.5V 55μW 64×2-channel binaural silicon cochlea aiming for ultra-low-power IoE applications like event-driven VAD, sound source localization, speaker identification and primitive speech recognition is presented.
Proceedings ArticleDOI

24.2 Context-aware hierarchical information-sensing in a 6μW 90nm CMOS voice activity detector

TL;DR: This paper reports on a μW 90nm CMOS VAD, that dynamically adapts sensing resources to signal information content and context, thus only spending energy on relevant information extraction, enabling novel applications in area of acoustic sensing.
Journal ArticleDOI

Embedding engineers in elderly care homes when researching new technologies for care

TL;DR: The proposed VAD system reduces the power consumption by 10× as compared to state-of-the-art (SotA) systems and yet achieves an 89% average hit rate (HR) for a 12 dB signal-to-acoustic-noise ratio (SANR) in babble context, which is at par with softwarebased VAD systems.
References
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Journal ArticleDOI

Energy-aware wireless microsensor networks

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Journal ArticleDOI

A low-power low-noise CMOS amplifier for neural recording applications

TL;DR: In this article, a low-noise low-power biosignal amplifiers capable of amplifying signals in the millihertz-to-kilohertz range while rejecting large dc offsets generated at the electrode-tissue interface is presented.
Proceedings ArticleDOI

A wireless sensor network For structural monitoring

TL;DR: Wisden incorporates two novel mechanisms, reliable data transport using a hybrid of end-to-end and hop-by-hop recovery, and low-overhead data time-stamping that does not require global clock synchronization.
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