Extracting particle size distribution from laser speckle with a physics-enhanced autocorrelation-based estimator (PEACE)

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作者
Qihang Zhang
Janaka C. Gamekkanda
Ajinkya Pandit
Wenlong Tang
Charles Papageorgiou
Chris Mitchell
Yihui Yang
Michael Schwaerzler
Tolutola Oyetunde
Richard D. Braatz
Allan S. Myerson
George Barbastathis
机构
[1] Massachusetts Institute of Technology,Department of Electrical Engineering and Computer Science
[2] Massachusetts Institute of Technology,Department of Chemical Engineering
[3] Takeda Pharmaceuticals International Co,Data Sciences Institutes
[4] Takeda Pharmaceuticals International Co,Process Chemistry Development
[5] Takeda Pharmaceutical Company Limited,Innovation and Technology Sciences
[6] Massachusetts Institute of Technology,Department of Mechanical Engineering
[7] Singapore-MIT Alliance for Research and Technology (SMART) Centre,undefined
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摘要
Extracting quantitative information about highly scattering surfaces from an imaging system is challenging because the phase of the scattered light undergoes multiple folds upon propagation, resulting in complex speckle patterns. One specific application is the drying of wet powders in the pharmaceutical industry, where quantifying the particle size distribution (PSD) is of particular interest. A non-invasive and real-time monitoring probe in the drying process is required, but there is no suitable candidate for this purpose. In this report, we develop a theoretical relationship from the PSD to the speckle image and describe a physics-enhanced autocorrelation-based estimator (PEACE) machine learning algorithm for speckle analysis to measure the PSD of a powder surface. This method solves both the forward and inverse problems together and enjoys increased interpretability, since the machine learning approximator is regularized by the physical law.
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  • [1] Extracting particle size distribution from laser speckle with a physics-enhanced autocorrelation-based estimator (PEACE)
    Zhang, Qihang
    Gamekkanda, Janaka C.
    Pandit, Ajinkya
    Tang, Wenlong
    Papageorgiou, Charles
    Mitchell, Chris
    Yang, Yihui
    Schwaerzler, Michael
    Oyetunde, Tolutola
    Braatz, Richard D.
    Myerson, Allan S.
    Barbastathis, George
    NATURE COMMUNICATIONS, 2023, 14 (01)