Image-based multiresolution-ANN approach for online particle size characterization
Document Type
Article
Publication Date
4-30-2014
Abstract
In this work an image-based multiresolution sensor for online prediction of crystal size distribution (CSD) is proposed. The mean and standard deviation of log-normal probability density function as the CSD can be predicted through the online sensor. In the proposed approach, texture analysis of fractal dimension (FD) and energy signatures as characteristic parameters to follow the crystal growth is utilized. The methodology consists of a combination of thresholding and wavelet-texture algorithms. The thresholding method is used to identify crystal clusters and substrate empty backgrounds. Wavelet-fractal and energy signatures are performed afterward to estimate texture on crystal clusters. Following the texture information extraction, a nonlinear mapping consisting of an artificial neural network (ANN) is incorporated using as inputs the texture information in conjunction with the available online process conditions (flow rate and temperature). A software framework developed in MATLAB enables the configuration of the image acquisition parameters as well as the processing of the online images. Validations against experimental data are presented for the NaCl-water-ethanol anti-solvent crystallization system. © 2014 American Chemical Society.
Publication Source (Journal or Book title)
Industrial and Engineering Chemistry Research
First Page
7008
Last Page
7018
Recommended Citation
Zhang, B., Willis, R., Romagnoli, J., Fois, C., Tronci, S., & Baratti, R. (2014). Image-based multiresolution-ANN approach for online particle size characterization. Industrial and Engineering Chemistry Research, 53 (17), 7008-7018. https://doi.org/10.1021/ie4019098