Research

I am broadly interested in exploring how machine learning can enhance the monitoring, simulation, and control of manufacturing and other engineering systems. From this intersection, three key research questions emerge that I intend to explore further:

Research Interests Diagram

Multi-fidelity Modeling with Machine Learning

High-fidelity simulations of physical behavior are often required to accurately model the behavior of complicated systems. However, the runtime and computational resources required for these simulations render them difficult to use for bulk analysis. Therefore, I am interested in developing methods to accelerate simulation-based analysis, such as surrogate models and multi-fidelity models that provide physics-informed insight with reduced computational demands.

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    Inexpensive high fidelity melt pool models in additive manufacturing using generative deep diffusion
    Francis Ogoke, Quanliang Liu, Olabode Ajenifujah, and 5 more authors
    Materials & Design, 2024
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    Convolutional neural networks for melt depth prediction and visualization in laser powder bed fusion
    Francis Ogoke, William Lee, Ning-Yu Kao, and 4 more authors
    The International Journal of Advanced Manufacturing Technology, 2023

Deep learning provides a powerful framework for probabilistic modeling, enabling more reliable forecasts of system behavior. In particular, it helps address challenges such as sensor limitations, noisy data, and modeling assumptions, all of which can introduce significant uncertainty into experimental observations and computational simulations. Therefore, I am interested in developing generative deep learning models that can characterize the probability distributions arising from sparse or noisy data, propagate uncertainty through high-dimensional systems, and ultimately enhance confidence in decision-making and control scenarios.

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    Deep-learned generators of porosity distributions produced during metal Additive Manufacturing
    Francis Ogoke, Kyle Johnson, Michael Glinsky, and 3 more authors
    Additive Manufacturing, 2022
  2. super_resolution/preview_image.png
    Inexpensive high fidelity melt pool models in additive manufacturing using generative deep diffusion
    Francis Ogoke, Quanliang Liu, Olabode Ajenifujah, and 5 more authors
    Materials & Design, 2024
  3. Under Review
    experimental_insitu/preview.png
    Deep Learning based Optical Image Super-Resolution via Generative Diffusion Models for Layerwise in-situ LPBF Monitoring
    Francis Ogoke, Sumesh Kalambettu Suresh, Jesse Adamczyk, and 4 more authors
    arXiv preprint arXiv:2409.13171, 2024

Generalizable Machine Learning Models for Engineering Tasks

Machine learning applications in engineering contexts are often constrained by limited amounts of available labeled data, making it difficult to train reliable models at scale. Manual annotation is time-consuming and resource-intensive, restricting the effectiveness of these data-driven methods. The development of self-supervised and pre-trained models mitigates this challenge, by enabling models to learn structure from unlabeled data, that can be fine-tuned for specific applications. This approach also facilitates the development of generalizable foundation models, where a single model can be applied to a range of prediction tasks.

  1. melt_pool_edp/melt_pool_edp.png
    Deep learning for melt pool depth contour prediction from surface thermal images via vision transformers
    Francis Ogoke, Peter Pak, Alexander Myers, and 4 more authors
    Additive Manufacturing Letters, 2024
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    ThermoPore: Predicting part porosity based on thermal images using deep learning
    Peter Pak, Francis Ogoke, Andrew Polonsky, and 11 more authors
    Additive Manufacturing, 2024
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    AMGPT: A large language model for contextual querying in additive manufacturing
    Achuth Chandrasekhar, Jonathan Chan, Francis Ogoke, and 2 more authors
    Additive Manufacturing Letters, 2024
  4. meltpool_net/meltpoolnet_preview.png
    MeltpoolNet: Melt pool characteristic prediction in Metal Additive Manufacturing using machine learning
    Parand Akbari, Francis Ogoke, Ning-Yu Kao, and 4 more authors
    Additive Manufacturing, 2022