Energies, Vol. 19, Pages 748: Optimized Elbow Design for Hydrogen Pipeline Using Multi-Objective Genetic Algorithm

Energies, Vol. 19, Pages 748: Optimized Elbow Design for Hydrogen Pipeline Using Multi-Objective Genetic Algorithm

Energies doi: 10.3390/en19030748

Authors:
Ho-Jin Choi
Younjea Kim

In 90° elbows, abrupt turning induces strong secondary flow, separation, and turbulence, increasing pressure loss and degrading velocity uniformity. A hydrogen pipeline elbow is optimized by combining a nature-inspired cross-section with a guide vane, while tuning vane position/angle and geometric radii/offsets using a multi-objective genetic algorithm (MOGA). Three-dimensional CFD is performed for compressible gaseous hydrogen using the Peng–Robinson equation of state and the SST k–ω turbulence model. Design points are generated by Latin hypercube sampling, and response surface models based on non-parametric regression (NPR) and genetic aggregation (GA) guide the search. Relative to the reference elbow, the GA-based optimum improves velocity uniformity by 5.825% and reduces the total pressure-drop coefficient by 0.470%; the NPR-based optimum yields 4.021% and 0.229%, respectively. Flow-field analysis shows reduced separation area, axial vorticity, turbulent kinetic energy, and dissipation, indicating suppressed secondary flow and smoother turning. These gains translate to lower pumping power and enhanced energy efficiency, supporting cost-effective deployment of carbon-neutral hydrogen infrastructure.

More From Author

Energies, Vol. 19, Pages 739: Hybrid Offshore Wind and Wave Energy Systems: A Review

Energies, Vol. 19, Pages 747: A Two-Stage Optimization Design of Jacket Structures for Offshore Wind Turbines with Integrated Parallel System Verification

Leave a Reply

Your email address will not be published. Required fields are marked *