Centrifugal pumps are challenging components in several applications, including automotive cooling systems, where compact design, high efficiency and cavitation resistance are essential. This study develops and validates a predictive 3D-CFD methodology for the estimation of both performance and cavitation in complex-geometry centrifugal pumps adopted in high-performance vehicles. Two single-stage, single-suction pumps with comparable dimensions but distinct designs are investigated through a combination of experiments and CFD analyses. Experimental results are analysed using dimensionless coefficients, introducing a novel Performance Factor (PF) based on turbomachinery similitude to correlate cavitation onset with flow coefficient (φ) and cavitation number (σ). Pump X starts to exhibit cavitation for σ<0.5 at φ=0.20 and for σ<1.2 at φ=0.34. Pump Y shows cavitation at higher fluid temperature for σ<0.8 and 0.21<φ<0.24. As for the simulations, they compare three turbulence models (Realizable k-ε, k-ω SST, and Elliptic Blending Reynolds Stress Transport) and three rotational modelling approaches (frozen rotor, mixing plane, and sliding mesh), combined with the Schnerr-Sauer cavitation model. Quantitative comparison with the experimental data demonstrates that the k-ω SST turbulence model provides the best trade-off between accuracy and computational cost, with an average deviation of 4.3 % for pump X and 3.0 % for pump Y in predicting performance. The Elliptic Blending RST model reduces the deviation to 2.9 % but increases computational time by 70 %, limiting its practical use. Among the rotational models, the sliding mesh approach achieves the highest accuracy (4.3 % and 3.0 % deviation for pumps X and Y, respectively), while steady approaches (frozen rotor and mixing plane) show deviations up to 12.2 %, especially in off-design conditions. In cavitating regimes, sliding mesh and k-ω SST accurately capture the head losses, whereas alternative combinations significantly underestimate them. Additionally, mesh sensitivity analyses reveal that cavitating conditions require finer meshes than non-cavitating ones to accurately predict vapor formation. The adopted CFD framework thus provides a validated, computationally efficient, and predictive tool for the design and optimization of compact centrifugal pumps in automotive and other high-performance thermal management applications.

Performance and cavitation in automotive centrifugal pumps: experimental analysis and 3D-CFD modelling assessment / Cordisco, I.; Berni, F.; Paini, G.; Tonelli, R.; Fontanesi, S.. - In: APPLIED THERMAL ENGINEERING. - ISSN 1359-4311. - 284:(2026), pp. 1-22. [10.1016/j.applthermaleng.2025.129130]

Performance and cavitation in automotive centrifugal pumps: experimental analysis and 3D-CFD modelling assessment

Cordisco I.;Berni F.;Paini G.;Tonelli R.;Fontanesi S.
2026

Abstract

Centrifugal pumps are challenging components in several applications, including automotive cooling systems, where compact design, high efficiency and cavitation resistance are essential. This study develops and validates a predictive 3D-CFD methodology for the estimation of both performance and cavitation in complex-geometry centrifugal pumps adopted in high-performance vehicles. Two single-stage, single-suction pumps with comparable dimensions but distinct designs are investigated through a combination of experiments and CFD analyses. Experimental results are analysed using dimensionless coefficients, introducing a novel Performance Factor (PF) based on turbomachinery similitude to correlate cavitation onset with flow coefficient (φ) and cavitation number (σ). Pump X starts to exhibit cavitation for σ<0.5 at φ=0.20 and for σ<1.2 at φ=0.34. Pump Y shows cavitation at higher fluid temperature for σ<0.8 and 0.21<φ<0.24. As for the simulations, they compare three turbulence models (Realizable k-ε, k-ω SST, and Elliptic Blending Reynolds Stress Transport) and three rotational modelling approaches (frozen rotor, mixing plane, and sliding mesh), combined with the Schnerr-Sauer cavitation model. Quantitative comparison with the experimental data demonstrates that the k-ω SST turbulence model provides the best trade-off between accuracy and computational cost, with an average deviation of 4.3 % for pump X and 3.0 % for pump Y in predicting performance. The Elliptic Blending RST model reduces the deviation to 2.9 % but increases computational time by 70 %, limiting its practical use. Among the rotational models, the sliding mesh approach achieves the highest accuracy (4.3 % and 3.0 % deviation for pumps X and Y, respectively), while steady approaches (frozen rotor and mixing plane) show deviations up to 12.2 %, especially in off-design conditions. In cavitating regimes, sliding mesh and k-ω SST accurately capture the head losses, whereas alternative combinations significantly underestimate them. Additionally, mesh sensitivity analyses reveal that cavitating conditions require finer meshes than non-cavitating ones to accurately predict vapor formation. The adopted CFD framework thus provides a validated, computationally efficient, and predictive tool for the design and optimization of compact centrifugal pumps in automotive and other high-performance thermal management applications.
2026
284
1
22
Performance and cavitation in automotive centrifugal pumps: experimental analysis and 3D-CFD modelling assessment / Cordisco, I.; Berni, F.; Paini, G.; Tonelli, R.; Fontanesi, S.. - In: APPLIED THERMAL ENGINEERING. - ISSN 1359-4311. - 284:(2026), pp. 1-22. [10.1016/j.applthermaleng.2025.129130]
Cordisco, I.; Berni, F.; Paini, G.; Tonelli, R.; Fontanesi, S.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11380/1391253
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