Review of modeling schemes and machine learning algorithms for fluid rheological behavior analysis

Author:

Bahiuddin Irfan1,Mazlan Saiful Amri2,Imaduddin Fitrian34,Shapiai Mohd. Ibrahim2,Ubaidillah 43,Sugeng Dhani Avianto5

Affiliation:

1. Department of Mechanical Engineering, Vocational College, Universitas Gadjah Mada, Jl. Yacaranda Sekip Unit IV , Yogyakarta 55281, Daerah Istimewa Yogyakarta , Indonesia

2. Malaysia-Japan International Institute of Technology, Universiti Teknologi Malaysia, Jalan Sultan Yahya Petra , 54100 Kuala Lumpur , Wilayah Persekutuan Kuala Lumpur , Malaysia

3. Mechanical Engineering Department, Faculty of Engineering, Universitas Sebelas Maret, Jl. Ir. Sutami 36 A, Kentingan , Surakarta , 57126, Central Java , Indonesia

4. Mechanical Engineering Department, Faculty of Engineering, Islamic University of Madinah , Medina 42351 , Saudi Arabia

5. National Research and Innovation Agency, Kawasan PUSPIPTEK , Tangerang Selatan 153314 , Indonesia

Abstract

Abstract Machine learning’s prowess in extracting insights from data has significantly advanced fluid rheological behavior prediction. This machine-learning-based approach, adaptable and precise, is effective when the strategy is appropriately selected. However, a comprehensive review of machine learning applications for predicting fluid rheology across various fields is rare. This article aims to identify and overview effective machine learning strategies for analyzing and predicting fluid rheology. Covering flow curve identification, yield stress characterization, and viscosity prediction, it compares machine learning techniques in these areas. The study finds common objectives across fluid models: flow curve correlation, rheological behavior dependency on variables, soft sensor applications, and spatial–temporal analysis. It is noted that models for one type can often adapt to similar behaviors in other fluids, especially in the first two categories. Simpler algorithms, such as feedforward neural networks and support vector regression, are usually sufficient for cases with narrow range variability and small datasets. Advanced methods, like hybrid approaches combining metaheuristic optimization with machine learning, are suitable for complex scenarios with multiple variables and large datasets. The article also proposes a reproducibility checklist, ensuring consistent research outcomes. This review serves as a guide for future exploration in machine learning for fluid rheology prediction.

Publisher

Walter de Gruyter GmbH

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