Driving continuous, low-power artificial intelligence (AI) in the Internet of Things (IoT) requires reliable energy harvesting and storage under indoor or low-light conditions, where batteries face constraints such as finite lifetimes and increased environmental impact. Here, we demonstrate an integrated three-terminal dye-sensitized photocapacitor that unites a dye-sensitized solar cell (DSC) with an asymmetric supercapacitor, leveraging molecularly engineered polyviologen electrodes and bioderived fungal-based membranes. Under 1000 lux ambient illumination, the photocapacitor delivers photocharging voltages of 920 mV, achieving power conversion efficiencies exceeding 30% and photocharging efficiencies up to 18%. Density Functional Theory calculations reveal low reorganization energies (0.1-0.2 eV) for polyviologen radical cations, promoting efficient charge transfer and stable cycling performance over 3000 charge-discharge cycles. The system reliably powers a multilayer IoT network at 500 lux for 72 hours, surpassing commercial amorphous-silicon modules by a factor of 3.5 in inference throughput. Critically, the photocapacitor driven edge microcontroller achieves 93% accuracy on CIFAR-10 classification with an energy requirement of only 0.81 mJ per inference. By eliminating the need for batteries or grid connection, this work offers a proof of concept for high-efficiency, long-lived indoor power solutions that merge advanced materials chemistry with edge AI, demonstrating a practical route toward self-sustaining, data-driven IoT devices.

Unlocking high-performance photocapacitors for edge computing in low-light environments / Flores-Diaz, N., De Rossi, F., Keller, T., Morritt, H., Perez Bassart, Z., Lopez-Rubio, A., Jose Fabra, M., Freitag, R., Gagliardi, A., Fasulo, F., Munoz-Garcia, A.B., Pavone, M., Javanbakht Lomeri, H., Sanchez Alonso, S., Grätzel, M., Brunetti, F., Freitag, M.. - In: ENERGY & ENVIRONMENTAL SCIENCE. - ISSN 1754-5692. - 18:10(2025), pp. 4704-4716. [10.1039/d5ee01052g]

Unlocking high-performance photocapacitors for edge computing in low-light environments

Fasulo, Francesca;Munoz-Garcia, Ana Belen;Pavone, Michele;
2025

Abstract

Driving continuous, low-power artificial intelligence (AI) in the Internet of Things (IoT) requires reliable energy harvesting and storage under indoor or low-light conditions, where batteries face constraints such as finite lifetimes and increased environmental impact. Here, we demonstrate an integrated three-terminal dye-sensitized photocapacitor that unites a dye-sensitized solar cell (DSC) with an asymmetric supercapacitor, leveraging molecularly engineered polyviologen electrodes and bioderived fungal-based membranes. Under 1000 lux ambient illumination, the photocapacitor delivers photocharging voltages of 920 mV, achieving power conversion efficiencies exceeding 30% and photocharging efficiencies up to 18%. Density Functional Theory calculations reveal low reorganization energies (0.1-0.2 eV) for polyviologen radical cations, promoting efficient charge transfer and stable cycling performance over 3000 charge-discharge cycles. The system reliably powers a multilayer IoT network at 500 lux for 72 hours, surpassing commercial amorphous-silicon modules by a factor of 3.5 in inference throughput. Critically, the photocapacitor driven edge microcontroller achieves 93% accuracy on CIFAR-10 classification with an energy requirement of only 0.81 mJ per inference. By eliminating the need for batteries or grid connection, this work offers a proof of concept for high-efficiency, long-lived indoor power solutions that merge advanced materials chemistry with edge AI, demonstrating a practical route toward self-sustaining, data-driven IoT devices.
2025
Unlocking high-performance photocapacitors for edge computing in low-light environments / Flores-Diaz, N., De Rossi, F., Keller, T., Morritt, H., Perez Bassart, Z., Lopez-Rubio, A., Jose Fabra, M., Freitag, R., Gagliardi, A., Fasulo, F., Munoz-Garcia, A.B., Pavone, M., Javanbakht Lomeri, H., Sanchez Alonso, S., Grätzel, M., Brunetti, F., Freitag, M.. - In: ENERGY & ENVIRONMENTAL SCIENCE. - ISSN 1754-5692. - 18:10(2025), pp. 4704-4716. [10.1039/d5ee01052g]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11588/1030235
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