Microscale optoelectronic reservoir networks of halide perovskite for in-sensor computing
Microscale optoelectronic reservoir networks of halide perovskite for in-sensor computing
Physical reservoir computing is a promising framework for efficient neuromorphic in and near-sensor computing applications. Here, we demonstrate a multimodal optoelectronic reservoir network based on halide perovskite semiconductor devices, capable of processing both voltage and light inputs. The devices consist of micrometer-sized, asymmetric crossbars covered with a MAPbI3 perovskite film. In a network, we simulate the performance by transforming MNIST images and videos based on the NMNIST dataset using 4-bit inputs and training linear readout layers for classification. We demonstrate multimodal networks capable of processing both voltage and light inputs, reaching mean accuracies up to 95.3 p/m 0.1% and 87.8 p/m 0.1% for image and video classification, respectively. We observed only minor deterioration due to measurement noise. The networks significantly outperformed linear classifier references, by 3.1% for images and 14.6% for video. We show that longer retention times benefit classification accuracy for single-mode networks, and give guidelines for choosing optimal experimental parameters. Moreover, the microscale device architecture lends itself well to further downscaling in high-density sensor arrays, making the devices ideal for efficient in-sensor computing.
Jeroen J. de Boer、Agustin O. Alvarez、Moritz C. Schmidt、Bruno Ehrler
光电子技术半导体技术微电子学、集成电路计算技术、计算机技术
Jeroen J. de Boer,Agustin O. Alvarez,Moritz C. Schmidt,Bruno Ehrler.Microscale optoelectronic reservoir networks of halide perovskite for in-sensor computing[EB/OL].(2025-08-27)[2025-09-02].https://arxiv.org/abs/2508.19916.点此复制
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