Abstract

The membrane processes include the complex frameworks, typically integrating various physio-chemical aspects, and the biological activities, based on the systems researched. In that regard, the process modeling is essential to predict and simulate the process and the performance of membranes, to infer concerning the optimum process aspects, meant to analyze fouling developments, and principally, the controls and monitoring of processes. Irrespective of the real terminological dissemination such as Machine Learning (ML), the application of computing instruments to the processes of model membrane was considered in the past are insignificant from the scholarly perspective, not contributing to our knowledge of the aspects included. Irrespective of the controversies, in the past two decades, non-mechanistic and data-driven modeling is applicable to illustrate various membrane process, and in the establishment of novel tracking and modeling approaches. In that regard, this paper concentrates on the provision of a custom aspect regarding the use of Non-Mechanistic Modeling (NMM) in membrane processing, assessing the transformations endorsed by our experience, accomplished as a research segment operational in the membrane process segment. Furthermore, the guidelines are the problems for the application of the state-of-the-art computational instruments Membrane Computing (MC).

Highlights

  • In the sector of computer science, Membrane Computing (MC) [1] concentrates on the discovery of novel computational frameworks from the research of biological cells, certainly of the cell membrane

  • This paper concentrates on the provision of a custom aspect regarding the use of Non-Mechanistic Modeling (NMM) in membrane processing, assessing the transformations endorsed by our experience, accomplished as a research segment operational in the membrane process segment

  • Option membrane and solvent attributes were chosen for that study, which were used as input in the model’s framework using Projection to Latent Structures (PLS) analysis, Artificial Neural Networks (ANNs), and Principal Components Analysis (PCA) mixed with ANNs (Fig. 4)

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Summary

Analysis of Membrane Process Model from Black Box to Machine Learning

Agnar Alfons Ramel Faculty of Physical Sciences Mathematics, University of Iceland, Reykjavík, Iceland. Abstract – The membrane processes include the complex frameworks, typically integrating various physio-chemical aspects, and the biological activities, based on the systems researched. Irrespective of the real terminological dissemination such as Machine Learning (ML), the application of computing instruments to the processes of model membrane was considered in the past are insignificant from the scholarly perspective, not contributing to our knowledge of the aspects included. Irrespective of the controversies, in the past two decades, non-mechanistic and data-driven modeling is applicable to illustrate various membrane process, and in the establishment of novel tracking and modeling approaches. Keywords – Membrane Computing (MC), Machine Learning (ML), Non-Mechanistic Modeling (NMM), Projection to Latent Structures (PLS), Artificial Neural Networks (ANNs)

INTRODUCTION
Parameters for process performance
Externalized validations with test datasets
Output x y
Solution Diffusion framework
CONCLUSION AND FUTURE DIRECTIONS

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