Combining Thermodynamics-based Model of the Centrifugal Compressors and Active Machine Learning for Enhanced Industrial Design Optimization

Published: 28 Jul 2023, Last Modified: 28 Jul 2023SynS & ML @ ICML2023EveryoneRevisionsBibTeX
Keywords: Active Learning, Industrial Machine Learning, Surrogate Modeling, Design Optimization, Gaussian Process, Uncertainty Quantification
TL;DR: We combine thermodynamics-based models of centrifugal compressors and active machine learning to propose a production-ready active machine learning enhanced design optimization framework.
Abstract: The design process of centrifugal compressors requires applying an optimization process which is computationally expensive due to complex analytical equations underlying the compressor’s dynamical equations. Although the regression surrogate models could drastically reduce the computational cost of such a process, the major challenge is the scarcity of data for training the surrogate model. Aiming to strategically exploit the labeled samples, we propose the ActiveCompDesign framework in which we combine a thermodynamics-based compressor model (i.e., our internal software for compressor design) and Gaussian Process-based surrogate model within a deployable Active Learning (AL) setting. We first conduct experiments in an offline setting and further, extend it to an online AL framework where a real-time interaction with the thermodynamics-based compressor’s model allows the deployment in production. ActiveCompDesign shows a significant performance improvement in surrogate modeling by leveraging on uncertainty-based query function of samples within the AL framework with respect to the random selection of data points. Moreover, our framework in production has reduced the total computational time of compressor’s design optimization to around 46% faster than relying on the internal thermodynamics-based simulator, achieving the same performance.
Submission Number: 24
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