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1. How well can multi-fidelity surrogate models be integrated and provide improvements to both accuracy and efficiency in high-dimensional uncertainty quantification problems?
2. What are the challenges and resolutions to integrating high-fidelity and low-fidelity models in the uncertainty quantification process?
3. Compared to single-fidelity surrogate models, what are the differences in performance and costs when using multi-fidelity models?
1. How can PINNs be applied in uncertainty quantification to improve the accuracy and efficiency of surrogate models?
2. How does the proposal to incorporate those unknown physical constraints with PINNs to surrogate model allow for generalisation on uncertainty quantification?
3. In general, how do PINNs learn from both the known and unknown in engineering systems, as compared to traditional machine-learning methods for handling uncertainty in high-dimensional problems?
1. What effects do the different dimensionality reduction techniques have on surrogate models for high-dimensional uncertainty quantification?
2. What are the biases between accuracy and computational burden for different occupations of dimensionality reduction techniques?
3. What are ways to combine dimensionality reduction techniques with multi-fidelity surrogate models to improve uncertainty quantification?
1. How can synthetic data generation approaches add value to the abundantly sparse data sets that exist in high-dimensional uncertainty quantification and engineering systems?
2. What are the possible benefits and drawbacks of generative models like GANs to leverage synthetic data for surrogate modelling?
3. How will the integration of synthetic data alter the accuracy and stability of uncertainty propagation in the target engineering systems?
1. How can multi-fidelity surrogate models/uncertainty quantification be employed and implemented for high-dimensional problems such that accuracy and efficiency are improved?
2. What hurdles are present and what options exist for overcoming them in the integration of high-fidelity and low-fidelity models for uncertainty quantification?
3. How does the performance and computational cost of multi-fidelity models compare to using a single-fidelity surrogate model?
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PhDAssistance. (n.d.). Mechanical Engineering Dissertation Topics. Retrieved July 29th, 2025, from http://bxb.2d6.mytemp.website/topic/mechanical-engineering-dissertation-topics/
Jalolova, M., and Musawwir, M. “Mechanical Engineering Dissertation Topics for PhD Scholars.” PhDAssistance, http://bxb.2d6.mytemp.website/topic/mechanical-engineering-dissertation-topics/ . Accessed 29th July 2025.
Jalolova, M., and Musawwir, M., n.d. Mechanical Engineering Dissertation Topics for PhD scholars. [online] Available at: http://bxb.2d6.mytemp.website/topic/mechanical-engineering-dissertation-topics/ [Accessed 29th July 2025].
Jalolova M., Musawwir M. Mechanical Engineering Dissertation Topics for PhD scholars [Internet]. PhDAssistance; [cited 2025 Jul 29]. Available from: http://bxb.2d6.mytemp.website/topic/mechanical-engineering-dissertation-topics/
Jalolova, M., and Musawwir, M. (n.d.). Mechanical Engineering Dissertation Topics for PhD scholars. Retrieved 29th July 2025, from http://bxb.2d6.mytemp.website/topic/mechanical-engineering-dissertation-topics/
Jalolova, M., and Musawwir, M., Mechanical Engineering Dissertation Topics for PhD scholars (PhDAssistance, n.d.) http://bxb.2d6.mytemp.website/topic/mechanical-engineering-dissertation-topics/ accessed 29th July 2025.
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