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A machine learning framework for computationally expensive transient models

Prashant Kumar, Kushal Sinha, Nandkishor K. Nere, Yujin Shin, Raimundo Ho, Laurie B. Mlinar, Ahmad Y. Sheikh

2020Scientific Reports29 citationsDOIOpen Access PDF

Abstract

Transient simulations of dynamic systems, using physics-based scientific computing tools, are practically limited by availability of computational resources and power. While the promise of machine learning has been explored in a variety of scientific disciplines, its application in creation of a framework for computationally expensive transient models has not been fully explored. Here, we present an ensemble approach where one such computationally expensive tool, discrete element method, is combined with time-series forecasting via auto regressive integrated moving average and machine learning methods to simulate a complex pharmaceutical problem: development of an agitation protocol in an agitated filter dryer to ensure uniform solid bed mixing. This ensemble approach leads to a significant reduction in the computational burden, while retaining model accuracy and performance, practically rendering simulations possible. The developed machine-learning model shows good predictability and agreement with the literature, demonstrating its tremendous potential in scientific computing.

Topics & Concepts

Computer sciencePredictabilityRendering (computer graphics)Machine learningTransient (computer programming)Ensemble learningArtificial intelligenceVariety (cybernetics)Ensemble forecastingMathematicsOperating systemStatisticsModel Reduction and Neural NetworksGaussian Processes and Bayesian InferenceNeural Networks and Applications
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