A self-supervised robotic system for autonomous contact-based spatial mapping of semiconductor properties

IF 11.7 1区 综合性期刊 Q1 MULTIDISCIPLINARY SCIENCES
Alexander E. Siemenn, Basita Das, Kangyu Ji, Fang Sheng, Tonio Buonassisi
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Abstract

Integrating robotically driven contact-based material characterization techniques into self-driving laboratories can enhance measurement quality, reliability, and throughput. While deep learning models support robust autonomy, current methods lack reliable pixel-precision positioning and require extensive labeled data. To overcome these challenges, we propose an approach for building self-supervised autonomy into contact-based robotic systems that teach the robot to follow domain expert measurement principles at high throughputs. We demonstrate the performance of this approach by autonomously driving a 4-DOF robotic probe for 24 hours to characterize semiconductor photoconductivity at 3025 uniquely predicted poses across a gradient of drop-casted perovskite film compositions, achieving throughputs of more than 125 measurements per hour. Spatially mapping photoconductivity onto each drop-casted film reveals compositional trends and regions of inhomogeneity, valuable for identifying manufacturing defects. With this self-supervised neural network–driven robotic system, we enable high-precision and reliable automation of contact-based characterization techniques at high throughputs, thereby allowing measurement of previously inaccessible yet important semiconductor properties for self-driving laboratories.

Abstract Image

一种用于半导体特性自主接触空间映射的自监督机器人系统
将机器人驱动的基于接触的材料表征技术集成到自动驾驶实验室中可以提高测量质量、可靠性和吞吐量。虽然深度学习模型支持强大的自主性,但目前的方法缺乏可靠的像素精度定位,并且需要大量的标记数据。为了克服这些挑战,我们提出了一种方法,将自我监督的自主性构建到基于接触的机器人系统中,教机器人在高吞吐量下遵循领域专家测量原则。我们通过自动驾驶一个4自由度机器人探针24小时来表征3025个独特预测姿态的半导体光电性,实现了每小时超过125次测量的吞吐量。空间映射光电导率到每个滴铸膜揭示成分趋势和不均匀的区域,有价值的识别制造缺陷。通过这种自监督神经网络驱动的机器人系统,我们可以在高吞吐量下实现基于接触的表征技术的高精度和可靠的自动化,从而可以测量以前无法获得但重要的半导体特性,用于自动驾驶实验室。
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来源期刊
Science Advances
Science Advances 综合性期刊-综合性期刊
CiteScore
21.40
自引率
1.50%
发文量
1937
审稿时长
29 weeks
期刊介绍: Science Advances, an open-access journal by AAAS, publishes impactful research in diverse scientific areas. It aims for fair, fast, and expert peer review, providing freely accessible research to readers. Led by distinguished scientists, the journal supports AAAS's mission by extending Science magazine's capacity to identify and promote significant advances. Evolving digital publishing technologies play a crucial role in advancing AAAS's global mission for science communication and benefitting humankind.
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