The objective of this paper is to show how a completely virtual optimization approach is useful to design new geometries in order to improve the performance of industrial components, like valves. The standard approach for optimization of an industrial component, as a valve, is mainly performed with trials and errors and is based on the experience and knowledge of the engineer involved in the study. Unfortunately, this approach is time consuming and often not affordable for the industrial time-to-market. The introduction of computational fluid dynamic (CFD) tools significantly helped reducing time to market; on the other hand, the process to identify the best configuration still depends on the personal sensitivity of the engineer. Here a more general, faster and reliable approach is described, which uses a CFD code directly linked to an optimization tool. CAESES® associated with SimericsMP+® allows us to easily study many different geometrical variants and work out a design of experiments (DOE) sequence that gives evidence of the most impactful aspects of a design. Moreover, the result can be further optimized to obtain the best possible solution in terms of the constraints defined.

Valve Geometry and Flow Optimization through an Automated DOE Approach / Frosina, Emma; Marinaro, Gianluca; Olivetti, Micaela; Monterosso, Federico. - In: FLUIDS. - ISSN 2311-5521. - 5:1(2020), pp. 1-19. [10.3390/fluids5010017]

Valve Geometry and Flow Optimization through an Automated DOE Approach

Emma Frosina;Gianluca Marinaro;
2020

Abstract

The objective of this paper is to show how a completely virtual optimization approach is useful to design new geometries in order to improve the performance of industrial components, like valves. The standard approach for optimization of an industrial component, as a valve, is mainly performed with trials and errors and is based on the experience and knowledge of the engineer involved in the study. Unfortunately, this approach is time consuming and often not affordable for the industrial time-to-market. The introduction of computational fluid dynamic (CFD) tools significantly helped reducing time to market; on the other hand, the process to identify the best configuration still depends on the personal sensitivity of the engineer. Here a more general, faster and reliable approach is described, which uses a CFD code directly linked to an optimization tool. CAESES® associated with SimericsMP+® allows us to easily study many different geometrical variants and work out a design of experiments (DOE) sequence that gives evidence of the most impactful aspects of a design. Moreover, the result can be further optimized to obtain the best possible solution in terms of the constraints defined.
2020
Valve Geometry and Flow Optimization through an Automated DOE Approach / Frosina, Emma; Marinaro, Gianluca; Olivetti, Micaela; Monterosso, Federico. - In: FLUIDS. - ISSN 2311-5521. - 5:1(2020), pp. 1-19. [10.3390/fluids5010017]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11588/789918
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