2021
DOI: 10.48550/arxiv.2112.01687
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Differential Property Prediction: A Machine Learning Approach to Experimental Design in Advanced Manufacturing

Abstract: Advanced manufacturing techniques have enabled the production of materials with state-of-the-art properties. In many cases however, the development of physics-based models of these techniques lags behind their use in the lab. This means that designing and running experiments proceeds largely via trial and error. This is sub-optimal since experiments are cost-, time-, and labor-intensive. In this work we propose a machine learning framework, differential property classification (DPC), which enables an experimen… Show more

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