Hybrid Optimization Approaches for Impeller Design in Turbomachinery: Methods, Metrics, and Design Strategies
Abstract
1. Introduction
2. Materials and Methods
3. Results and Discussion
3.1. Comparative Visual Analysis of Optimization Strategies
3.2. CFD-Based Simulation Models
3.3. Interpolation Algorithms
3.4. Evolutive Algorithms
3.5. Machine Learning and AI
3.6. Hybrid Methods
3.7. Advanced and Hybrid Optimization Models
3.8. Framework Proposal
4. Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
AI | Artificial Intelligence |
AMGA | Adaptive Multi-Objective Genetic Algorithm |
ANN | Artificial Neural Network |
ASHOA | Adaptive Sampling Hybrid Optimization Algorithm |
BBD | Box–Behnken Design |
BPNN | Backpropagation Neural Network |
CFD | Computational Fluid Dynamics |
CNN | Convolutional Neural Network |
DADO | Deterministic Adaptive Design Optimization |
DEM | Discrete Element Method |
DGNN | Dual Graph Neural Network |
DoE | Design of Experiments |
DPM | Discrete Phase Model |
FEM | Finite Element Method |
GA | Genetic Algorithm |
GRA | Grey Relational Analysis |
GWO | Grey Wolf Optimizer |
IDM | Inverse Design Method |
IGWO | Improved Grey Wolf Optimizer |
ISSA-BPNN | Improved Sparrow Search Algorithm + BPNN |
KRG | Kriging |
LBM | Lattice Boltzmann Method |
LES | Large Eddy Simulation |
LHS | Latin Hypercube Sampling |
LMN | Local Model Network |
MDO | Multidisciplinary Design Optimization |
MC | Monte Carlo |
MIGA | Modified Island Genetic Algorithm |
ML | Machine Learning |
MLP | Multi-Layer Perceptron |
MOGA | Multi-Objective Genetic Algorithm |
NSGA-II | Non-Dominated Sorting Genetic Algorithm II |
NUMECA | Software Suite for CFD (NUMERICAL MECHANICS Applications) |
PSO | Particle Swarm Optimization |
RANS | Reynolds-Averaged Navier–Stokes |
RBF | Radial Basis Function |
RBFNN | Radial Basis Function Neural Network |
RF | Random Forest |
RMS | Root Mean Square |
RSA | Response Surface Approximation |
RSM | Surface Methodology |
SAGB | Surrogate-Assisted Gradient-Based |
SGSC | Stochastic Global Sensitivity-based Calibration |
SIS | Subset Simulation |
SOM | Self-Organizing Map |
SST | Shear Stress Transport |
SVM | Support Vector Machine |
TO | Topology Optimization |
URANS | Unsteady Reynolds-Averaged Navier–Stokes |
WOA | Whale Optimization Algorithm |
XGBoost | Extreme Gradient Boosting |
ZGB | Zwart–Gerber–Belamri (Cavitation Model) |
Appendix A
Research | Results | Reference |
A Study on the Multi-Objective Optimization of Impeller for High-Power Centrifugal Compressor | Structural and aerodynamic optimization of the impeller. | [11] |
Optimization of a Centrifugal Compressor Using the Design of Experiment Technique | Efficiency and pressure-ratio optimization: +3% and +11%. | [14] |
Optimization of Energy Recovery Turbine in Demineralized Water Treatment System of Power Station by Box–Behnken Design Method | The optimized model’s efficiency is 1.8% higher. | [53] |
Multi-Objective Optimization of a Regenerative Pump with S-Shaped Impeller Using Response Surface Methodology | Pump efficiency +2.85% under single-objective optimization and +1.67% under double-objective optimization. | [54] |
The Optimization of a First-Stage Liquid-Sealing Impeller Structure for a Turbopump Based on Response Surface Methodology | Pressurization coefficient +2.5%. | [23] |
Multiobjective Optimization for the Impeller of Centrifugal Fan Based on Response Surface Methodology with Grey Relational Analysis Method | Head increased by 2.5845 m and efficiency improved by 2.88%. | [56] |
Impeller Optimization in Crossflow Hydraulic Turbines | Reduced manufacturing costs using new impeller technology compared to conventional methods. | [124] |
Multi-Disciplinary Optimization Design of Axial-Flow Pump Impellers Based on the Approximation model | Single-blade mass −10.47%, while efficiency +0.61%. | [6] |
Design and Optimization of Meridional Profiles for the Impeller of Centrifugal Compressors | Elliptical curves showed acceptable performance vs. circular curves, with +2.6% at low flow rates and +3% at high flow rates. | [12] |
Instabilities Identification Based on a New Centrifugal 3D Impeller Outflow Model | URANS simulation can reproduce the main features of rotational stall in the diffuser at 30% of the total cost. | [50] |
Comprehensive Improvement of Mixed-Flow Pump Impeller Based on Multi-Objective Optimization | Pump efficiency +0.63%, +3.39%, and +3.77% at 0.8QDES, 1. QDES, and 1.2 QDES, respectively. | [72] |
A General Framework for Designing 3D Impellers Using Topology Optimization and Additive Manufacturing | Total impeller mass decreased by nearly 30%. | [29] |
Additive Manufacturing and Topology Optimization Applied to Impeller to Enhance Mechanical Performance | Stress levels reduced by 25%, impeller mass decreased by 20%, leading to higher allowable speed and better overall performance. | [30] |
Topology Optimization Design with Addictive Manufacturing Constraints for Centrifugal Impeller | Impeller weight reduced by up to 18.5%. | [31] |
Aerodynamic Analysis and Design Optimization of a Centrifugal Compressor Impeller Considering Realistic Manufacturing Uncertainties | Decreasing blade angles counteracts the detrimental effects of positive blade-thickness errors. | [108] |
Robust Optimization and Uncertainty Quantification of a Micro Axial Compressor for Unmanned Aerial Vehicles | Isentropic efficiency and pressure ratio increase by 0.6% and 0.5%, while reducing their standard deviations and that of mass flow rate by 32.4%, 41.2%, and 25.1% | [117] |
Novel Multidisciplinary Design and Multi-Objective Optimization of Centrifugal Compressor used for Hydrogen Fuel Cells | Power consumption reduced by 2.99%, with a maximum isentropic-efficiency increase of 2.16%. | [24] |
Cavitation Performance Enhancement of a Centrifugal Pump Impeller Based on Taguchi’s Orthogonal Optimization | Cavitation performance improved by 19.3% at the best efficiency point. | [32] |
Optimization of centrifugal pump impeller for pumping viscous fluids using direct design optimization technique | Operational stability and overall performance enhanced. | [134] |
The Fan Design Optimization for Totally Enclosed Type Induction Motor with Experimentally Verified CFD-Based MOGA Simulations | Efficiency increased by 8%, volumetric flow rate by 18%, and winding temperature decreased by 8 °C. | [25] |
Aerodynamic Robustness Optimization and Design Exploration of Centrifugal Compressor Impeller under Uncertainties | The average pressure ratio increased by 9.3% and average isentropic efficiency by 6.7%. Their standard deviations decreased by 7.5% and 15.4%, respectively, and the acoustic power level dropped by 11 dB. | [21] |
Impeller Shape-Optimization of Stirred-Tank Reactor: CFD and Fluid Structure Interaction Analyses | Energy consumption decreased by 26.71%, while equivalent stress rose by 6.09%. | [26] |
A Study on Suction Pump Impeller Form Optimization for Ballast Water Treatment System | Efficiency exceeded 12%. | [68] |
Research on Cooperative Optimization of Multiphase Pump Impeller and Diffuser Based on Adaptive Refined Response Surface Method | Pressure increment increased by 38 kPa in the optimized model. | [63] |
Energy-Saving Oriented Optimization Design of the Impeller and Volute of a Multi-Stage Double-Suction Centrifugal Pump using Artificial Neural Network | Efficiency increased by 2.05%, 3.56%, and 5.36% at 0.6Qd, 1.0Qd, and 1.2Qd, respectively, compared to the reference design | [8] |
Centrifugal Pump Impeller and Volute Shape Optimization via Combined NUMECA, Genetic Algorithm, and Back Propagation Neural Network | Head and efficiency at the design flow increased by 7.69% and 4.74%. Further optimization raised head by 2.69 m and efficiency by 4.32%. | [36] |
Impeller Optimization using a Machine Learning-Based Algorithm with Dynamic Sampling Method and Flow Analysis for an Axial Flow Pump | Optimized axial flow pump exhibits a 2% efficiency increase. | [125] |
Machine Learning Based Design Optimization of Centrifugal Impellers | A single impeller-performance prediction with the machine-learning approach requires under 1 s. | [15] |
Multi-Objective Optimization for Impeller Structure Parameters of Fuel Cell Air Compressor using Linear-Based Boosting Model and Reference Vector Guided Evolutionary Algorithm | For the Maxσ solution, the isentropic efficiency and pressure ratio increased by 18.7% and 70.1%, respectively. For the Maxηc solution, improved by 23.0% and 48.9%, respectively. | [34] |
Fatigue Reliability Evaluation for Impellers with Consideration of Multi-Source Uncertainties using a WOA-XGBoost Surrogate Model | XGBoost model achieves an R2 above 0.93 in fatigue-life prediction. | [27] |
Optimized Design of Solid–Liquid Dual-Impeller Mixing Systems for Enhanced Efficiency | Cloud height increased by 8.7%, and energy consumption decreased by 15.6%. | [58] |
Automatic Detection of Surface Defects of Submersible Pump Impellers by Machine Learning Algorithm | High surface defect detection efficiency, high accuracy, high automation, and low cost. | [28] |
Satellite Thermal Management Pump Impeller Design and Optimization | Efficiency rose by 3.55%, and head increased by 7.9%. | [44] |
Modal Analysis and Structural Optimization of Integrated Bladed Disks and Centrifugal Compressor Impellers | Mass was reduced by 23%, explosion margin increased by 4.31%, and critical resonance conditions were eliminated. | [35] |
An Improved Grey Wolf Optimizer (IGWO) Algorithm for Optimization of Centrifugal Pump With Guide Vane | Efficiency is 1.2% higher than the original pump, and the anti-cavitation performance is improved. | [96] |
Novel Designs of Blade Mixer Impellers from the Discrete Element Method and Topology Optimization | Impeller shape can be modified to enhance mixing or reduce energy consumption. | [116] |
Matching Optimization of a Mixed Flow Pump Impeller and Diffuser Based on the Inverse Design Method | Optimized pump’s efficiency at 1.2QDES, 1.0Q QDES, and 0.8Q QDES increased by 6.47%, 3.68%, and 0.82%, respectively. | [22] |
Improving Centrifugal Compressor Performance by Optimizing the Design of Impellers Using Genetic Algorithm and Computational Fluid Dynamics Methods | Operational stability and overall performance enhanced. | [41] |
Hydrodynamic Optimization of the Impeller and Diffuser Vane of an Axial-Flow Pump | Total efficiency and total head were 0.974% and 21.028% higher. After diffuser-blade optimization, total efficiency and total head increased by 3.097% and 10.205%. | [33] |
Hydrodynamic Optimization of the Impeller and Diffuser Vane of an Axial-Flow Pump | Overall efficiency improved by 2.05%, and loss margin improved by 8.89%. | [79] |
Optimization of Impeller Blades of an Electric Water Pump via Computational Fluid Dynamics | Q = Qd increased from 20.5 m to 21.9 m, while pump efficiency rose from 66.7% to 72.3%. | [51] |
Optimization Design of Energy-Saving Mixed Flow Pump Based on MIGA-RBF Algorithm | Experimental results show a maximum pump-efficiency increase of 4.3%. | [42] |
Introducing Non-Hierarchical RSM and MIGA for Performance Prediction and Optimization of a Centrifugal Pump under the Nominal Condition | Efficiency improved by 3.717% post-optimization. | [74] |
Optimization of the Impeller for Hydraulic Performance Improvement of a High-Speed Magnetic Drive Pump | Hydraulic efficiency of the optimal impeller was 6.23% higher. | [76] |
Uncertainty Quantification and Aerodynamic Robust Optimization of Turbomachinery Based on Graph Learning Methods | Reduced losses and improved efficiency. | [104] |
Uncertainty Quantification-Based Optimization of Centrifugal Compressor Impeller for Aerodynamic Robustness under Stochastic Operational Conditions | Mean pressure increased by 2.3%, mean efficiency by 2.9%, and the variance of the pressure ratio decreased by 14.3%. | [21] |
A Gradient-Based Method Assisted by Surrogate Model for Robust Optimization of Turbomachinery Blades | Blade optimization is under robust design. | [110] |
Topology Optimization of Static Turbomachinery Components | Final weight 65% lower than the original component. | [13] |
Liquid-Vapor Two-Phase Flow in Centrifugal Pump: Cavitation, Mass Transfer, and Impeller Structure Optimization | Enhanced cavitation performance. | [120] |
Mixing Optimization with Inward Flow Configuration Contra-Rotating Impeller, Baffle-Free Tank | High mixing efficiency and low torque at pilot scale. | [107] |
Optimal Design and Performance Improvement of an Electric Submersible Pump Impeller Based on Taguchi Approach | Head increased by 3.5%, and efficiency rose by 6.1%. | [45] |
Computational Prediction of the Just-Suspended Speed, Njs, in Stirred Vessels using the Lattice Boltzmann Method (LBM) Coupled with a Novel Mathematical Approach | Efficiency increased by 2.4%. | [37] |
Analysis of Erosion Minimization for a Slurry Pump Using Discrete Phase Model Simulations | Erosion-rate density was reduced. | [43] |
Multi-Condition Optimization and Experimental Verification of Impeller for a Marine Centrifugal Pump | Maximum vibration intensity decreased, and efficiency improved. | [40] |
CFD Simulation of Impeller Shape Effect on Quality of Mixing in Two-Phase Gas–Liquid Agitated Vessel | Axial gas-phase distribution for the 30° impeller is about 55% better than others. | [38] |
Validating Impeller Geometry Optimization for Sound Quality Based on Psychoacoustics Metrics | Noise intensity reduced, while energy performance increased by 4.3%. | [39] |
Integrated Energy-Efficient Machining of Rotary Impellers and Multi-Objective Optimization | Improved machining with respect to materials. | [127] |
Surrogate-Based Design Optimization of a Centrifugal Pump Impeller | The optimum pump-impeller design shows >10% improvement in pump efficiency. | [69] |
Surrogate-Based Design Optimization of a Centrifugal Pump Impeller | Isentropic efficiency and total pressure ratio improved by 1.61% and 4.13%, respectively, while maximum stress decreased by 9.68%. | [111] |
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Category | Study | Metric Improvement (%) | Optimization Approach | Reference |
---|---|---|---|---|
Centrifugal Compressor Optimization | Multi-objective optimization of impellers | Structural and aerodynamic optimization | CFD & RSM | [11] |
Design of experiment (doe) technique | Efficiency +3%, pressure ratio +11% | Experimental & Statistical | [14] | |
Meridional profile optimization | Up to +3% efficiency at high flow rates | Geometry-Based Optimization | [12] | |
Robust optimization under uncertainties | Pressure ratio +9.3%, efficiency +6.7% | Uncertainty Quantification | [21] | |
Axial & Mixed Flow Pumps | Multi-disciplinary axial-flow impeller design | Blade mass −10.47%, efficiency +0.61% | Approximation Model | [6] |
Mixed-flow pump optimization | Efficiency +6.47% (1.2QDES), +3.68% (QDES) | Inverse Design Method | [22] | |
Turbopump impeller structure | Pressurization coefficient +2.5% | Response Surface Method (RSM) | [23] | |
Energy Efficiency & Performance Enhancement | Optimization in hydrogen fuel cell compressors | Power consumption −2.99%, isentropic efficiency +2.16% | Multi-Objective Genetic Algorithm | [24] |
Motor cooling fan optimization | Efficiency +8%, flow rate +18% | CFD & MOGA | [25] | |
Mixing impeller optimization | Energy consumption −26.71% | Fluid-Structure Interaction | [26] | |
Machine Learning & AI-Driven Optimization | Ml-based impeller performance prediction | Prediction in <1 s | Machine Learning | [15] |
Fatigue reliability modeling | XGBoost model achieves R2 > 0.93 | AI & Surrogate Modeling | [27] | |
Automated defect detection in impellers | High accuracy & efficiency | Deep Learning | [28] | |
Additive Manufacturing & Topology Optimization | Impeller mass reduction | Mass −30% | Topology Optimization | [29] |
Structural enhancement for stress reduction | Stress −25%, mass −20% | Topology & Additive Manufacturing | [30] | |
Hybrid manufacturing constraints | Weight −18.5% | Additive & Design Constraints | [31] | |
Hydraulic & Cavitation Performance | Cavitation-resistant impeller design | Performance +19.3% | Taguchi Optimization | [32] |
Hydrodynamic optimization of axial-flow pumps | Head +21.03%, efficiency +3.097% | CFD & Diffuser Blade Design | [33] | |
Aerodynamic & Structural Robustness | Aerodynamic robustness in compressors | Pressure ratio +70.1%, efficiency +18.7% (Maxσ) | Response Surface & Evolutionary Algorithms | [34] |
Aeroelastic analysis of impeller blades | Explosion margin +4.31%, mass −23% | Modal Analysis | [35] | |
Computational Fluid Dynamics (CFD) & Genetic Algorithms | Cfd-assisted impeller shape optimization | Efficiency +4.74%, head +7.69% | NUMECA & GA | [36] |
Computational prediction of mixing efficiency | Efficiency +2.4% | Lattice Boltzmann Method | [37] | |
Impeller shape impact on gas-liquid mixing | Axial gas distribution improved by 55% | Two-Phase CFD Simulation | [38] | |
Noise & Vibration Reduction | Psychoacoustic-based impeller noise reduction | Noise intensity reduced, efficiency +4.3% | Sound Quality Optimization | [39] |
Vibration intensity reduction in marine pumps | Lower vibration, efficiency improved | Multi-Condition Optimization | [40] | |
Multi-Objective & Genetic Algorithm-Based Optimization | Optimization of centrifugal impellers using ga | Improved efficiency & operational stability | GA & CFD | [41] |
Energy-saving impeller design | Efficiency +4.3% | MIGA-RBF Algorithm | [42] | |
Structural & Manufacturing Advances | Integrated blade-disk optimization | Weight −65% | Structural Optimization | [13] |
Erosion-resistant slurry pump design | Erosion rate density reduced | Discrete Phase Modeling | [43] | |
Miscellaneous & Novel Approaches | Satellite pump impeller optimization | Efficiency +3.55%, head +7.9% | Space Application-Specific Design | [44] |
High-efficiency submersible pump design | Efficiency +6.1%, head +3.5% | Taguchi Method | [40,45] | |
Cfd-based centrifugal compressor optimization | Improved performance & stability | Computational Optimization | [41] |
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Remache, A.; Pérez-Sánchez, M.; Hidalgo, V.H.; Ramos, H.M. Hybrid Optimization Approaches for Impeller Design in Turbomachinery: Methods, Metrics, and Design Strategies. Water 2025, 17, 1976. https://doi.org/10.3390/w17131976
Remache A, Pérez-Sánchez M, Hidalgo VH, Ramos HM. Hybrid Optimization Approaches for Impeller Design in Turbomachinery: Methods, Metrics, and Design Strategies. Water. 2025; 17(13):1976. https://doi.org/10.3390/w17131976
Chicago/Turabian StyleRemache, Abel, Modesto Pérez-Sánchez, Víctor Hugo Hidalgo, and Helena M. Ramos. 2025. "Hybrid Optimization Approaches for Impeller Design in Turbomachinery: Methods, Metrics, and Design Strategies" Water 17, no. 13: 1976. https://doi.org/10.3390/w17131976
APA StyleRemache, A., Pérez-Sánchez, M., Hidalgo, V. H., & Ramos, H. M. (2025). Hybrid Optimization Approaches for Impeller Design in Turbomachinery: Methods, Metrics, and Design Strategies. Water, 17(13), 1976. https://doi.org/10.3390/w17131976