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

机译:环境光线动力机下的染料敏化太阳能电池朝向自主智能传感器进行事物

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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.
机译:Photovoltaics领域赋予机会使我们的建筑物“智能”和我们的便携式设备“独立”,提供了有效的能源,可以在环境室内条件下使用。为了解决这个重要问题,开发了环境光光伏电池,可以为能够进行机器学习的电源自动互联网(物联网)设备,从而实现人工智能的设备。通过一种新颖的共鸣策略,我们基于铜(II / i)电解质来定制染料敏化的光伏电池,用于在环境照明下产生功率,具有前所未有的转化效率(34%,103μWcm〜(?2)在200勒克斯的500勒克斯,500勒克斯,31.4%,在200勒克斯到200勒克斯,在500勒克斯,500勒克斯,500勒克斯,31.4%,19μw厘米〜(?2)。然后将具有16cm〜(2)的接合有源区域的一小阵列DSC用于在无线节点上发电机学习。需要收集0.947 MJ或2.72×10〜(15)光子,以计算所用建立中的MNIST图像分类的预训练人工神经网络的一次推断。使用相机获取的印刷MNIST数字,网络的推理精度超过了标准测试图像的90%和80%。与全精密网络相比,神经网络的量化显着降低了损耗小于0.1%的损耗,使机器学习在低功耗微控制器上的推断。 152 J或4.41×10〜(20)培训和验证人工神经网络所需的光子,在少于24小时的1 000勒克斯照明中,在不到24小时的时间内收获。环境光收割机提供了新一代的自动和“智能”IOT设备,该设备通过主要尚未开发的能量源供电。

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