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Analysis of transient data in test designs for active fault detection and identification Palmer KA, Bollas GM Computers & Chemical Engineering, 122, 93, 2019 |
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Predictive models and detection methods applicable in water detection framework for industrial electric arc furnaces Alshawarghi H, Elkamel A, Moshiri B, Hourfar F Computers & Chemical Engineering, 128, 285, 2019 |
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Process monitoring and fault detection on a hot-melt extrusion process using in-line Raman spectroscopy and a hybrid soft sensor Tahir F, Islam MT, Mack J, Robertson J, Lovett D Computers & Chemical Engineering, 125, 400, 2019 |
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