An asynchronous wireless network for capturing event-driven data from large populations of autonomous sensors

Networks of spatially distributed radiofrequency identification sensors could be used to collect data in wearable or implantable biomedical applications. However, the development of scalable networks remains challenging. Here we report a wireless radiofrequency network approach that can capture spar...

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Veröffentlicht in:Nature electronics 2024, Vol.7 (4), p.313-324
Hauptverfasser: Lee, Jihun, Lee, Ah-Hyoung, Leung, Vincent, Laiwalla, Farah, Lopez-Gordo, Miguel Angel, Larson, Lawrence, Nurmikko, Arto
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Sprache:eng
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Zusammenfassung:Networks of spatially distributed radiofrequency identification sensors could be used to collect data in wearable or implantable biomedical applications. However, the development of scalable networks remains challenging. Here we report a wireless radiofrequency network approach that can capture sparse event-driven data from large populations of spatially distributed autonomous microsensors. We use a spectrally efficient, low-error-rate asynchronous networking concept based on a code-division multiple-access method. We experimentally demonstrate the network performance of several dozen submillimetre-sized silicon microchips and complement this with large-scale in silico simulations. To test the notion that spike-based wireless communication can be matched with downstream sensor population analysis by neuromorphic computing techniques, we use a spiking neural network machine learning model to decode prerecorded open source data from eight thousand spiking neurons in the primate cortex for accurate prediction of hand movement in a cursor control task. A scalable communications protocol for transmitting spike-train data generated from multiple microchip sensors can be used with spiking neural network models for brain–machine interface and biosensing applications.
ISSN:2520-1131
2520-1131
DOI:10.1038/s41928-024-01134-y