Advanced Ultrasound techniques and Machine learning algorithms for particle size distribution analyses
ORAL
Abstract
Abstract:
This study focuses on the development and application of ultrasound attenuation spectroscopy combined with machine learning algorithms, specifically Random Forest, for measuring particle size distribution in solid-liquid flows. The research utilized the ultrasound attenuation coefficient technique to analyze particle size distribution in a solid-liquid suspension containing ballotini glass beads with a density of 2500 kg/m^3 in a stirred vessel. The experimental setup, ultrasound signal measurement, and data post-processing were thoroughly discussed. By employing machine learning algorithms like Random Forest, the study successfully predicted particle size distribution with an impressive accuracy of 98% based on input from ultrasound measurements. Validation of the ultrasound results was conducted using microscope imaging, demonstrating excellent agreement between the two techniques.
This study focuses on the development and application of ultrasound attenuation spectroscopy combined with machine learning algorithms, specifically Random Forest, for measuring particle size distribution in solid-liquid flows. The research utilized the ultrasound attenuation coefficient technique to analyze particle size distribution in a solid-liquid suspension containing ballotini glass beads with a density of 2500 kg/m^3 in a stirred vessel. The experimental setup, ultrasound signal measurement, and data post-processing were thoroughly discussed. By employing machine learning algorithms like Random Forest, the study successfully predicted particle size distribution with an impressive accuracy of 98% based on input from ultrasound measurements. Validation of the ultrasound results was conducted using microscope imaging, demonstrating excellent agreement between the two techniques.
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Presenters
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Fria A Hossein
University College London
Authors
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Fria A Hossein
University College London
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Panagiota Angeli
University College London