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Employing machine learning for theory validation and identification of experimental conditions in laser-plasma physics

机译:利用机器学习进行激光等离子体物理学的理论验证和实验条件的识别

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The validation of a theory is commonly based on appealing to clearly distinguishable and describable features in properly reduced experimental data, while the use of ab-initio simulation for interpreting experimental data typically requires complete knowledge about initial conditions and parameters. We here apply the methodology of using machine learning for overcoming these natural limitations. We outline some basic universal ideas and show how we can use them to resolve long-standing theoretical and experimental difficulties in the problem of high-intensity laser-plasma interactions. In particular we show how an artificial neural network can "read" features imprinted in laser-plasma harmonic spectra that are currently analysed with spectral interferometry.
机译:理论的验证通常基于吸引适当缩减的实验数据中明显可区分和可描述的特征,而使用从头开始模拟来解释实验数据通常需要完全了解初始条件和参数。我们在这里应用使用机器学习的方法来克服这些自然的局限性。我们概述了一些基本的通用概念,并说明了如何使用它们解决高强度激光-等离子体相互作用问题中长期存在的理论和实验难题。特别是,我们展示了人工神经网络如何“读取”刻在激光等离子谐波光谱中的特征,这些特征目前已通过光谱干涉仪进行了分析。

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