Numerical Analysis of Gas Hold-Up of Two-Phase Ebullated Bed Reactor

Author:

Almukhtar Riyadh S.1,Yahya Ali Amer1ORCID,Mahdy Omar S.1,Majdi Hasan Shakir2,Mahdi Gaidaa S.1,Alwasiti Asawer A.1ORCID,Shnain Zainab Y.1,Mohammadi Majid3,AbdulRazak Adnan A.1ORCID,Philib Peter4,Ali Jamal M.1,Aljaafari Haydar A. S.1ORCID,Alsaedi Sajda S.5

Affiliation:

1. Department of Chemical Engineering, University of Technology-Iraq, Baghdad 10066, Iraq

2. Department of Chemical Engineering and Petroleum Industries, Al-Mustaqbal University College, Babylon 51001, Iraq

3. Department of Energy Engineering, Qom University of Technology, Qom 1519-37195, Iran

4. Mechanical Engineering and Energy Processes, Southern Illinois University, Carbondale, IL 62901, USA

5. Department of Mechanical Engineering, University of Technology-Iraq, Baghdad 10066, Iraq

Abstract

Due to the significant increase in heavy feedstocks being transported to refineries and the hydrocracking process, the significance of adopting an ebullated bed reactor has been reemphasized in recent years. The predictive modelling of gas hold-up in an ebullated two-phase reactor was performed using 10 machine learning methods based on support vector machine (SVM) and Gaussian process regression (GPR) in this study. In an ebullated bed reactor, the impacts of three features, namely liquid velocity, gas velocity, and recycling ratio, on the gas hold-up were examined. The liquid velocity has the most impact on the predicted gas hold-up, according to the feature significance analysis. The rotational-quadratic, squared-exponential, Matern 5/2, and exponential kernel functions integrated with the GPR models and the linear, quadratic, cubic, fine, medium, and coarse kernel functions integrated with the SVM model performed well during training and testing, with the exception of the fine SVM model, whose R2 is very low. According to the R2 > 0.9 and low RMSE and MAE values, the rotational-quadratic, squared-exponential, and Matern 5/2 GPR models performed the best.

Publisher

MDPI AG

Subject

General Energy,General Engineering,General Chemical Engineering

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