A Design Optimization of Organic Rankine Cycle Turbine Blades with Radial Basis Neural Network

Jong Beom Seo, Hosaeng Lee, Sang Jo Han

Research output: Contribution to journalArticlepeer-review

3 Scopus citations

Abstract

In the present study, a 100 kW organic Rankine cycle is suggested to recover heat energy from commercial ships. A radial-type turbine is employed with R1233zd(E) and back-to-back layout. To improve the performance of an organic Rankine power system, the efficiency of the turbine is significant. With the conventional approach, the optimization of a turbine requires a considerable amount of time and involves substantial costs. By combining design of experiments, an artificial neural network, and Latin hypercube sampling, it becomes possible to reduce costs and achieve rapid optimization. A radial basis neural network with machine learning technique, known for its advantages of being fast and easily applicable, has been implemented. Using such an approach, an increase in efficiency greater than 1% was achieved with minimal design changes at the first and second turbines.

Original languageEnglish
Article number26
JournalEnergies
Volume17
Issue number1
DOIs
StatePublished - Jan 2024

Keywords

  • organic Rankine cycle
  • R1233zd(E)
  • radial basis neural network
  • radial turbine

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