Multi-Objective Optimization of Cyclone Separators Based on Geometrical Parameters for Performance Enhancement

Author:

Pandey Satyanand1,Wasilewski Marek2ORCID,Mukhopadhyay Arkadeb1ORCID,Prakash Om1,Ahmad Asim3ORCID,Brar Lakhbir Singh1ORCID

Affiliation:

1. Department of Mechanical Engineering, Birla Institute of Technology, Mesra, Ranchi 835215, India

2. Faculty of Production Engineering and Logistics, Opole University of Technology, 76 Proszkowska St., 45-758 Opole, Poland

3. Faculty of Engineering and Applied Sciences, Usha Martin University, Ranchi 835103, India

Abstract

The present study focuses on performing multi-objective optimization of the cyclone separator geometry to lower the pressure losses and enhance the collection efficiency. For this, six geometrical entities, such as the main body diameter of the cyclone, the vortex finder diameter and its insertion length, the cone tip diameter, and the height of the cylindrical and conical segment, have been accounted for optimization, and the Muschelknautz method of modeling has been used as an objective function for genetic algorithms. To date, this is one of the most popular mathematical models that accurately predicts the cyclone performance, such as the pressure drop and cut-off particle size. Three cases have been selected from the Pareto fronts, and the cyclone performance is calculated using advanced closure large-eddy simulation—the results are then compared to the baseline model to evaluate the relative improvement. It has been observed that in one of the models, with merely a 2% reduction in the collection efficiency and an increase of 12% in the cut-off particle size, more than a 43% reduction in pressure drop value was obtained (an energy-efficient model). In another model, a nearly 25% increment in the collection efficiency and a reduction of 42% in the cut-off particle size with a nearly 36% increase in pressure drop value were observed (a high-efficiency model).

Publisher

MDPI AG

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