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Machine learning enhanced in situ electron beam lithography of photonic nanostructures

机译:机器学习增强光子纳米结构的原位电子束光刻

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We report on the deterministic fabrication of quantum devices aided by machine-learning-based image processing. The goal of the work is to demonstrate that pattern recognition based on specifically trained machine learning (ML) algorithms and applying it to luminescence maps can strongly enhance the capabilities of modern fabrication technologies that rely on a precise determination of the positions of quantum emitters like, for instance, in situ lithography techniques. In the present case, we apply in situ electron beam lithography (EBL) to deterministically integrate single InGaAs quantum dots (QDs) into circular Bragg grating resonators with increased photon extraction efficiency (PEE). In this nanotechnology platform, suitable QDs are selected by 2D cathodoluminescence maps before EBL of the nanoresonators aligned to the selected emitters is performed. Varying the electron beam dose of cathodoluminescence (CL) mapping, we intentionally change the signal-to-noise ratio of the CL maps to mimic different brightness of the emitters and to train the ML algorithm. ML-based image processing is then used to denoise the images for reliable and accurate QD position retrieval. This way, we achieve a significant enhancement in the PEE and position accuracy, leading to more than one order increase of sensitivity in ML-enhanced in situ EBL. Overall, this demonstrates the high potential of ML-based image processing in deterministic nanofabrication which can be very attractive for the fabrication of bright quantum light sources based on emitters with low luminescence yield in the future.
机译:我们报告的确定性制造得益于machine-learning-based量子设备图像处理。证明了模式识别的基础上专门训练机器学习(毫升)算法和应用发光地图大力加强现代的功能吗依赖于精确的制造技术量子的位置的确定发射器,例如,原位光刻技术。电子束光刻技术(EBL)确定性单InGaAs量子集成点(量子点)为圆形的布喇格光栅谐振器与光子增加萃取效率(尿尿)。量子点是由2 d阴极发光地图在EBL nanoresonators对齐的执行选定的发射器。电子束剂量的阴极发光(CL)映射,我们故意改变信噪比的CL映射到模仿不同亮度的发射器和训练ML算法。然后使用可靠和降噪图像准确的QD位置检索。尿和实现一个重要的改进位置精度,导致多个订单在原位ML-enhanced增加灵敏度电子提单。潜在的ML-based图像处理的确定的奈米制造可以非常有吸引力的制造明亮的量子光源基于较低的排放发光收益率在未来。

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