한국생산제조학회 학술지 영문 홈페이지
[ Best Paper of This Month ]
Journal of the Korean Society of Manufacturing Technology Engineers - Vol. 29, No. 2, pp.83-88
ISSN: 2508-5107 (Online)
Print publication date 15 Apr 2020
Received 16 Mar 2020 Revised 26 Mar 2020 Accepted 27 Mar 2020
DOI: https://doi.org/10.7735/ksmte.2020.29.2.83

Random Forest 방법을 적용한 초저유량 하이드로싸이클론 설계 및 성능예측

김창원a ; 서영진b, *
Design and Performance Prediction of Ultra-low Flow Hydrocyclone Using the Random Forest Method
Changwon Kima ; Youngjin Seob, *
aDepartment of Medical Assistant Robot, Korea Institute of Machinery and Materials
bDepartment of Mechanical Engineering, Kumoh National Institute of Technology

Correspondence to: *Tel.: +82-54-478-7302 E-mail address: yjseo@kumoh.ac.kr (Youngjin Seo).

Abstract

A hydrocyclone is a particle separation device. Due to their simple shapes and real-time particle separation functions, hydrocyclones are used in several industrial sites. However, the design of a hydrocyclone through numerical analysis takes prolonged time. In this study, a machine learning method is utilized to reduce the hydrocyclone design time. By using a random forest-based learning algorithm, the following three tasks were accomplished: particle separation efficiency was predicted under given design parameters; design parameters were extracted for a given bid size and the corresponding separation efficiency; finally, an extrapolation-based separation efficiency was investigated. The performance of the proposed learning algorithm-based prediction is demonstrated by comparing the results with numerical analysis data.

Keywords:

Hydro cyclone, Numerical analysis, Machine learning, Random forest, Design parameter prediction

Acknowledgments

본 연구는 금오공과대학교 교수연구년제에 의하여 연구된 실적물입니다.

References

  • Khalde, C. M., Samad, A., Sangwai, J. S., 2019, Computational and Experimental Study of Sand Entrapment in a Hydrocyclone During Desanding Operations in Oil Fields: Consequences for Leakage and Separation Efficiency, SPE Production & Operations, 34 520-535. [https://doi.org/10.2118/195693-PA]
  • Medronho, R. A., Schuetze, J., Deckwer, W. D., 2005, Numerical Simulation of Hydrocyclones for Cell Separation, Latin American Applied Research, 35 1-8.
  • Zhang, C., Wei, D., Cui, B., Li, T., Luo, N., 2017, Effects of Curvature Radius on Separation Behaviors of the Hydrocyclone with a Tangent-circle Inlet, Powder Technology, 305 156-165. [https://doi.org/10.1016/j.powtec.2016.10.002]
  • Vega-Garcia, D., Brito-Parada, P. R., Cilliers, J. J., 2018, Optimising Small Hydrocyclone Design Using 3D Printing and CFD Simulations, Chemical Engineering Journal, 350 653-659. [https://doi.org/10.1016/j.cej.2018.06.016]
  • Rokach, L., Maimon, O., 2005, Decision Trees, In Data Mining and Knowledge Discovery Handbook Springer, Boston, MA.
  • Müller, A. C., Guido, S., 2016, Introduction to Machine Learning with Python: A Guide for Data Scientists, O’Reilly Media, Inc., Sebastopol, CA.