粉末x射线衍射自主机器人实验系统

IF 6.2 Q1 CHEMISTRY, MULTIDISCIPLINARY
Yuto Yotsumoto, Yusaku Nakajima, Ryusei Takamoto, Yasuo Takeichi and Kanta Ono
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引用次数: 0

摘要

材料研究的自动化对于加速科学发现是必不可少的。粉末x射线衍射(PXRD)在材料科学中分析晶体结构和定量相组成方面起着至关重要的作用。然而,目前的方法在可重复性和效率方面面临挑战。为了解决这些问题,我们为PXRD开发了一个自主机器人实验(ARE)系统,该系统集成了从样品制备到数据分析的整个过程。该系统结合了用于精确样品制备的机械臂和用于自动数据分析的基于机器学习的技术。我们的方法始终如一地产生高质量的样品,降低背景噪声,实现与手工制备技术相当的准确性。我们还研究了样品数量和分析精度之间的关系,证明了系统在显著减少样品数量的情况下获得可靠结果的能力。这项工作提高了实验室自动化能力,有助于自主材料发现和优化过程的发展。通过解决PXRD自动化中的关键挑战,我们的研究实现了更高效和可重复的材料表征方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Autonomous robotic experimentation system for powder X-ray diffraction†

Autonomous robotic experimentation system for powder X-ray diffraction†

The automation of materials research is essential for accelerating scientific discovery. Powder X-ray diffraction (PXRD) plays a crucial role in analyzing crystal structures and quantifying phase compositions in materials science. However, current methods face challenges in reproducibility and efficiency. To address these issues, we developed an autonomous robotic experimentation (ARE) system for PXRD that integrates the entire process from sample preparation to data analysis. This system combines a robotic arm for precise sample preparation with machine learning-based techniques for automated data analysis. Our approach consistently produced high-quality samples with reduced background noise, achieving accuracy comparable to manual preparation techniques. We also investigated the relationship between sample quantity and analysis accuracy, demonstrating the system's ability to obtain reliable results with significantly reduced sample amounts. This work advances laboratory automation capabilities and contributes to the development of autonomous materials discovery and optimization processes. By addressing key challenges in PXRD automation, our research enables more efficient and reproducible materials characterization methodologies.

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CiteScore
2.80
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