International Journal of Rotating Machinery (Jan 2011)

Assessment of a Neural-Network-Based Optimization Tool: A Low Specific-Speed Impeller Application

  • Matteo Checcucci,
  • Federica Sazzini,
  • Michele Marconcini,
  • Andrea Arnone,
  • Mario Coneri,
  • Luigi De Franco,
  • Matteo Toselli

DOI
https://doi.org/10.1155/2011/817547
Journal volume & issue
Vol. 2011

Abstract

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This work provides a detailed description of the fluid dynamic design of a low specific-speed industrial pump centrifugal impeller. The main goal is to guarantee a certain value of the specific-speed number at the design flow rate, while satisfying geometrical constraints and industrial feasibility. The design procedure relies on a modern optimization technique such as an Artificial-Neural-Network-based approach (ANN). The impeller geometry is parameterized in order to allow geometrical variations over a large design space. The computational framework suitable for pump optimization is based on a fully viscous three-dimensional numerical solver, used for the impeller analysis. The performance prediction of the pump has been obtained by coupling the CFD analysis with a 1D correlation tool, which accounts for the losses due to the other components not included in the CFD domain. Due to both manufacturing and geometrical constraints, two different optimized impellers with 3 and 5 blades have been developed, with the performance required in terms of efficiency and suction capability. The predicted performance of both configurations were compared with the measured head and efficiency characteristics.