Cargando…

Dye-sensitized solar cells under ambient light powering machine learning: towards autonomous smart sensors for the internet of things

The field of photovoltaics gives the opportunity to make our buildings ‘‘smart’’ and our portable devices “independent”, provided effective energy sources can be developed for use in ambient indoor conditions. To address this important issue, ambient light photovoltaic cells were developed to power...

Descripción completa

Detalles Bibliográficos
Autores principales: Michaels, Hannes, Rinderle, Michael, Freitag, Richard, Benesperi, Iacopo, Edvinsson, Tomas, Socher, Richard, Gagliardi, Alessio, Freitag, Marina
Formato: Online Artículo Texto
Lenguaje:English
Publicado: The Royal Society of Chemistry 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8157489/
https://www.ncbi.nlm.nih.gov/pubmed/34122790
http://dx.doi.org/10.1039/c9sc06145b
_version_ 1783699693031653376
author Michaels, Hannes
Rinderle, Michael
Freitag, Richard
Benesperi, Iacopo
Edvinsson, Tomas
Socher, Richard
Gagliardi, Alessio
Freitag, Marina
author_facet Michaels, Hannes
Rinderle, Michael
Freitag, Richard
Benesperi, Iacopo
Edvinsson, Tomas
Socher, Richard
Gagliardi, Alessio
Freitag, Marina
author_sort Michaels, Hannes
collection PubMed
description The field of photovoltaics gives the opportunity to make our buildings ‘‘smart’’ and our portable devices “independent”, provided effective energy sources can be developed for use in ambient indoor conditions. To address this important issue, ambient light photovoltaic cells were developed to power autonomous Internet of Things (IoT) devices, capable of machine learning, allowing the on-device implementation of artificial intelligence. Through a novel co-sensitization strategy, we tailored dye-sensitized photovoltaic cells based on a copper(ii/i) electrolyte for the generation of power under ambient lighting with an unprecedented conversion efficiency (34%, 103 μW cm(−2) at 1000 lux; 32.7%, 50 μW cm(−2) at 500 lux and 31.4%, 19 μW cm(−2) at 200 lux from a fluorescent lamp). A small array of DSCs with a joint active area of 16 cm(2) was then used to power machine learning on wireless nodes. The collection of 0.947 mJ or 2.72 × 10(15) photons is needed to compute one inference of a pre-trained artificial neural network for MNIST image classification in the employed set up. The inference accuracy of the network exceeded 90% for standard test images and 80% using camera-acquired printed MNIST-digits. Quantization of the neural network significantly reduced memory requirements with a less than 0.1% loss in accuracy compared to a full-precision network, making machine learning inferences on low-power microcontrollers possible. 152 J or 4.41 × 10(20) photons required for training and verification of an artificial neural network were harvested with 64 cm(2) photovoltaic area in less than 24 hours under 1000 lux illumination. Ambient light harvesters provide a new generation of self-powered and “smart” IoT devices powered through an energy source that is largely untapped.
format Online
Article
Text
id pubmed-8157489
institution National Center for Biotechnology Information
language English
publishDate 2020
publisher The Royal Society of Chemistry
record_format MEDLINE/PubMed
spelling pubmed-81574892021-06-11 Dye-sensitized solar cells under ambient light powering machine learning: towards autonomous smart sensors for the internet of things Michaels, Hannes Rinderle, Michael Freitag, Richard Benesperi, Iacopo Edvinsson, Tomas Socher, Richard Gagliardi, Alessio Freitag, Marina Chem Sci Chemistry The field of photovoltaics gives the opportunity to make our buildings ‘‘smart’’ and our portable devices “independent”, provided effective energy sources can be developed for use in ambient indoor conditions. To address this important issue, ambient light photovoltaic cells were developed to power autonomous Internet of Things (IoT) devices, capable of machine learning, allowing the on-device implementation of artificial intelligence. Through a novel co-sensitization strategy, we tailored dye-sensitized photovoltaic cells based on a copper(ii/i) electrolyte for the generation of power under ambient lighting with an unprecedented conversion efficiency (34%, 103 μW cm(−2) at 1000 lux; 32.7%, 50 μW cm(−2) at 500 lux and 31.4%, 19 μW cm(−2) at 200 lux from a fluorescent lamp). A small array of DSCs with a joint active area of 16 cm(2) was then used to power machine learning on wireless nodes. The collection of 0.947 mJ or 2.72 × 10(15) photons is needed to compute one inference of a pre-trained artificial neural network for MNIST image classification in the employed set up. The inference accuracy of the network exceeded 90% for standard test images and 80% using camera-acquired printed MNIST-digits. Quantization of the neural network significantly reduced memory requirements with a less than 0.1% loss in accuracy compared to a full-precision network, making machine learning inferences on low-power microcontrollers possible. 152 J or 4.41 × 10(20) photons required for training and verification of an artificial neural network were harvested with 64 cm(2) photovoltaic area in less than 24 hours under 1000 lux illumination. Ambient light harvesters provide a new generation of self-powered and “smart” IoT devices powered through an energy source that is largely untapped. The Royal Society of Chemistry 2020-02-13 /pmc/articles/PMC8157489/ /pubmed/34122790 http://dx.doi.org/10.1039/c9sc06145b Text en This journal is © The Royal Society of Chemistry https://creativecommons.org/licenses/by/3.0/
spellingShingle Chemistry
Michaels, Hannes
Rinderle, Michael
Freitag, Richard
Benesperi, Iacopo
Edvinsson, Tomas
Socher, Richard
Gagliardi, Alessio
Freitag, Marina
Dye-sensitized solar cells under ambient light powering machine learning: towards autonomous smart sensors for the internet of things
title Dye-sensitized solar cells under ambient light powering machine learning: towards autonomous smart sensors for the internet of things
title_full Dye-sensitized solar cells under ambient light powering machine learning: towards autonomous smart sensors for the internet of things
title_fullStr Dye-sensitized solar cells under ambient light powering machine learning: towards autonomous smart sensors for the internet of things
title_full_unstemmed Dye-sensitized solar cells under ambient light powering machine learning: towards autonomous smart sensors for the internet of things
title_short Dye-sensitized solar cells under ambient light powering machine learning: towards autonomous smart sensors for the internet of things
title_sort dye-sensitized solar cells under ambient light powering machine learning: towards autonomous smart sensors for the internet of things
topic Chemistry
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8157489/
https://www.ncbi.nlm.nih.gov/pubmed/34122790
http://dx.doi.org/10.1039/c9sc06145b
work_keys_str_mv AT michaelshannes dyesensitizedsolarcellsunderambientlightpoweringmachinelearningtowardsautonomoussmartsensorsfortheinternetofthings
AT rinderlemichael dyesensitizedsolarcellsunderambientlightpoweringmachinelearningtowardsautonomoussmartsensorsfortheinternetofthings
AT freitagrichard dyesensitizedsolarcellsunderambientlightpoweringmachinelearningtowardsautonomoussmartsensorsfortheinternetofthings
AT benesperiiacopo dyesensitizedsolarcellsunderambientlightpoweringmachinelearningtowardsautonomoussmartsensorsfortheinternetofthings
AT edvinssontomas dyesensitizedsolarcellsunderambientlightpoweringmachinelearningtowardsautonomoussmartsensorsfortheinternetofthings
AT socherrichard dyesensitizedsolarcellsunderambientlightpoweringmachinelearningtowardsautonomoussmartsensorsfortheinternetofthings
AT gagliardialessio dyesensitizedsolarcellsunderambientlightpoweringmachinelearningtowardsautonomoussmartsensorsfortheinternetofthings
AT freitagmarina dyesensitizedsolarcellsunderambientlightpoweringmachinelearningtowardsautonomoussmartsensorsfortheinternetofthings