Advances in uncertainty quantificati...
International Conference on Uncertainty Quantification and Optimization ((2020 :)

Linked to FindBook      Google Book      Amazon      博客來     
  • Advances in uncertainty quantification and optimization under uncertainty with aerospace applications = proceedings of the 2020 UQOP International Conference /
  • Record Type: Electronic resources : Monograph/item
    Title/Author: Advances in uncertainty quantification and optimization under uncertainty with aerospace applications/ edited by Massimiliano Vasile, Domenico Quagliarella.
    Reminder of title: proceedings of the 2020 UQOP International Conference /
    other author: Vasile, Massimiliano.
    corporate name: International Conference on Uncertainty Quantification and Optimization
    Published: Cham :Springer International Publishing : : 2021.,
    Description: 1 online resource (ix, 457 p.) :ill., digital ;24 cm.
    [NT 15003449]: Chapter 1. Cloud Uncertainty Quantification for Runback Ice Formations in Anti-Ice Electro-Thermal Ice Protection Systems -- Chapter 2. Multi-fidelity Surrogate Assisted Design Optimisation of an Airfoil under Uncertainty using Far-Field Drag Approximation -- Chapter 3. Scalable dynamic asynchronous Monte Carlo framework applied to wind engineering problems -- Chapter 4. Multi-Objective Optimal Design and Maintenance for Systems Based on Calendar Times Using MOEA/D-DE -- Chapter 5. From Uncertainty Quanti cation to Shape Optimization: Cross-Fertilization of Methods for Dimensionality Reduction -- Chapter 6. Multi-Objective Robustness Analysis of the Polymer Extrusion Process -- Chapter 7. Quantification of operational and geometrical uncertainties of a 1.5 stage axial compressor with cavity leakage flows -- Chapter 8. Can Uncertainty Propagation Solve the Mysterious Case of Snoopy ? -- Chapter 9. Robust Particle Filter for Space Navigation under Epistemic Uncertainty -- Chapter 10. Computing bounds for imprecise continuous-time Markov chains using normal cones -- Chapter 11. Simultaneous Sampling for Robust Markov Chain Monte Carlo Inference -- Chapter 12. Computing Expected Hitting Times for Imprecise Markov Chains -- Chapter 13. Multi-Objective Robust Trajectory Optimization of Multi Asteroid Fly-By Under Epistemic Uncertainty -- Chapter 14. Reliability-based Robust Design Optimization of a Jet Engine Nacelle -- Chapter 15. Bayesian Optimization for Robust Solutions under Uncertain Input -- Chapter 16. Optimization under Uncertainty of Shock Control Bumps for Transonic Wings -- Chapter 17. Multi-objective design optimisation of an airfoil with geometrical uncertainties leveraging multi- delity Gaussian process regression -- Chapter 18. High-Lift Devices Topology Robust Optimisation using Machine Learning Assisted Optimisation -- Chapter 19. Network Resilience Optimisation of Complex Systems -- Chapter 20. Gaussian Processes for CVaR approximation in Robust Aerodynamic Shape Design -- Chapter 21. Inference methods for gas/surface interaction models: from deterministic approaches to Bayesian techniques -- Chapter 22. Bayesian Adaptive Selection Under Prior Ignorance -- Chapter 23. A Machine-Learning Framework for Plasma-Assisted Combustion using Principal Component Analysis and Gaussian Process Regression -- Chapter 24. Estimating exposure fraction from radiation biomarkers: a comparison of frequentist and Bayesian approaches -- Chapter 25. A Review of some recent advancements in Non-Ideal Compressible Fluid Dynamics -- Chapter 26. Dealing with high dimensional inconsistent measurements in inverse problems using surrogate modeling: an approach based on sets and intervals -- Chapter 27. Stochastic Preconditioners for Domain Decomposition Methods -- Index.
    Contained By: Springer Nature eBook
    Subject: Aeronautics - Congresses. - Statistical methods -
    Online resource: https://doi.org/10.1007/978-3-030-80542-5
    ISBN: 9783030805425
Location:  Year:  Volume Number: 
Items
  • 1 records • Pages 1 •
  • 1 records • Pages 1 •
Multimedia
Reviews
Export
pickup library
 
 
Change password
Login