Nathan C. Drucker, Tongtong Liu, Zhantao Chen, Ryotaro Okabe, Abhijatmedhi Chotrattanapituk, Thanh Nguyen, Yao Wang, Mingda Li
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引用次数: 0
Abstract
Vol. 35, No. 4, 2022, Synchrotron radiation newS Feature article Challenges and Opportunities of Machine Learning on Neutron and X-ray Scattering NathaN C. DruCker,1,2 toNgtoNg Liu,1,3 ZhaNtao CheN,1,4 ryotaro okabe,1,5 abhijatmeDhi ChotrattaNapituk1,6 thaNh NguyeN,1,7 yao WaNg,8 aND miNgDa Li1,7 1Quantum Measurement Group, MIT, Cambridge, Massachusetts, USA 2School of Engineering and Applied Sciences, Harvard University, Cambridge, Massachusetts, USA 3Department of Physics, MIT, Cambridge, Massachusetts, USA 4Department of Mechanical Engineering, MIT, Cambridge, Massachusetts, USA 5Department of Chemistry, MIT, Cambridge, Massachusetts, USA 6Department of Electrical Engineering and Computer Science, MIT, Cambridge, Massachusetts, USA 7Department of Nuclear Science and Engineering, MIT, Cambridge, MA, USA 8Department of Physics and Astronomy, Clemson University, Clemson, South Carolina, USA Introduction Machine learning has been highly successful in boosting the research for neutron and X-ray scattering in the past few years [1, 2]. For diffraction, machine learning has shown great promise in phase mapping [3, 4] and crystallographic information determination [5, 6]. In small-angle scattering, machine learning shows the power in reaching super-resolution [7, 8], reconstructing structures for macromolecules [9], and building structure-property relations [10]. As for absorption spectroscopy, machine learning has enabled the rapid inverse search for optimized structures [11, 12] with improved spectral interpretability [13, 14]. Overall, as a data-driven approach, the success of the machinelearning-based scattering analysis depends on a few criteria, including:
NathaN C. DruCker,1,2刘彤彤,1,3陈占涛,1,4 okabe ryotaro,1,5 abhijatmeDhi chotrattanapituk1,6 NguyeN thaNh,1,7 WaNg yao,8 and limingda 1,7量子测量组,麻省理工学院,剑桥,马萨诸塞州,美国2哈佛大学工程与应用科学学院,剑桥,美国3麻省理工学院,剑桥,物理系美国马萨诸塞州4美国马萨诸塞州剑桥市麻省理工学院机械工程系5美国马萨诸塞州剑桥市麻省理工学院化学系6美国马萨诸塞州剑桥市麻省理工学院电气工程与计算机科学系7美国马萨诸塞州剑桥市麻省理工学院核科学与工程系8南卡罗来纳州克莱姆森大学物理与天文系;在过去的几年中,机器学习在促进中子和x射线散射研究方面取得了很大的成功[1,2]。对于衍射,机器学习在相映射[3,4]和晶体学信息确定[5,6]方面显示出很大的前景。在小角度散射中,机器学习在达到超分辨率[7,8],重建大分子[9]的结构以及建立结构-性质关系[10]方面显示出强大的能力。在吸收光谱方面,机器学习使优化结构的快速逆搜索成为可能[11,12],提高了光谱的可解释性[13,14]。总的来说,作为一种数据驱动的方法,基于机器学习的散射分析的成功取决于几个标准,包括: