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A Kriging-Based Approach to Autonomous Experimentation with Applications to X-Ray Scattering

机译:一种基于Kriging的自主实验方法与X射线散射的应用

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Modern scientific instruments are acquiring data at ever-increasing rates, leading to an exponential increase in the size of data sets. Taking full advantage of these acquisition rates will require corresponding advancements in the speed and efficiency of data analytics and experimental control. A significant step forward would come from automatic decision-making methods that enable scientific instruments to autonomously explore scientific problems-that is, to intelligently explore parameter spaces without human intervention, selecting high-value measurements to perform based on the continually growing experimental data set. Here, we develop such an autonomous decision-making algorithm that is physics-agnostic, generalizable, and operates in an abstract multi-dimensional parameter space. Our approach relies on constructing a surrogate model that fits and interpolates the available experimental data, and is continuously refined as more data is gathered. The distribution and correlation of the data is used to generate a corresponding uncertainty across the surrogate model. By suggesting follow-up measurements in regions of greatest uncertainty, the algorithm maximally increases knowledge with each added measurement. This procedure is applied repeatedly, with the algorithm iteratively reducing model error and thus efficiently sampling the parameter space with each new measurement that it requests. We validate the method using synthetic data, demonstrating that it converges to faithful replica of test functions more rapidly than competing methods, and demonstrate the viability of the approach in an experimental context by using it to direct autonomous small-angle (SAXS) and grazing-incidence small-angle (GISAXS) x-ray scattering experiments.
机译:现代科学仪器正在以不断增加的速率获取数据,导致数据集大小的指数增加。充分利用这些收购率将需要数据分析和实验控制的速度和效率的相应进步。向前迈出的重要阶梯将来自自动决策方法,使科学仪器能够自主地探索科学问题 - 即在没有人为干预的情况下智能地探索参数空间,选择高值测量以基于不断发展的实验数据集执行。在这里,我们开发了这种自主决策算法,它是物理 - 无人,更广泛的,并且在抽象的多维参数空间中运行。我们的方法依赖于构建适​​合和翻译可用实验数据的代理模型,并在收集更多数据时连续精制。数据的分布和相关性用于在替代模型中生成相应的不确定性。通过建议在最大不确定性区域中的后续测量,算法最大地增加了每个增加的测量的知识。重复应用此过程,算法迭代地减少模型误差,从而有效地对参数空间采样它请求的每个新测量。我们使用合成数据验证该方法,表明它比竞争方法更快地收敛到忠实的测试功能,并通过使用它来指示采用自动小角(萨克斯)和放牧的方法在实验环境中的活力。发病小角度(吉即)X射线散射实验。

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