Found: 17
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Intelligent systems and process engineering.
- Published in:
- South African Journal of Science, 1996, v. 92, n. 7, p. 300
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- Publication type:
- Article
Predicting the Operating States of Grinding Circuits by Use of Recurrence Texture Analysis of Time Series Data.
- Published in:
- Processes, 2018, v. 6, n. 2, p. 17, doi. 10.3390/pr6020017
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- Publication type:
- Article
Improving Process Operations Using Support Vector Machines and Decision Trees.
- Published in:
- AIChE Journal, 2005, v. 51, n. 2, p. 526, doi. 10.1002/aic.10315
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- Publication type:
- Article
Identification of dynamic process systems with surrogate data methods.
- Published in:
- AIChE Journal, 2001, v. 47, n. 9, p. 2064, doi. 10.1002/aic.690470917
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- Publication type:
- Article
Predicting student performance using artificial neural network analysis.
- Published in:
- 2008
- By:
- Publication type:
- Other
Application of unthresholded recurrence plots and texture analysis for industrial loops with faulty valves.
- Published in:
- Soft Computing - A Fusion of Foundations, Methodologies & Applications, 2022, v. 26, n. 19, p. 10477, doi. 10.1007/s00500-022-06894-3
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- Publication type:
- Article
An Online Monitoring Approach of Carbon Steel Corrosion via the Use of Electrochemical Noise and Wavelet Analysis.
- Published in:
- Metals (2075-4701), 2024, v. 14, n. 1, p. 66, doi. 10.3390/met14010066
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- Publication type:
- Article
Assessing the Influence of Operational Variables on Process Performance in Metallurgical Plants by Use of Shapley Value Regression.
- Published in:
- Metals (2075-4701), 2022, v. 12, n. 11, p. 1777, doi. 10.3390/met12111777
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- Publication type:
- Article
Deep Learning Approaches to Image Texture Analysis in Material Processing.
- Published in:
- Metals (2075-4701), 2022, v. 12, n. 2, p. N.PAG, doi. 10.3390/met12020355
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- Publication type:
- Article
Prediction of Dimensional Changes of Low-Cost Metal Material Extrusion Fabricated Parts Using Machine Learning Techniques.
- Published in:
- Metals (2075-4701), 2021, v. 11, n. 5, p. 690, doi. 10.3390/met11050690
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- Publication type:
- Article
Comparative Study on the Kinetics of the Isothermal Reduction of Iron Ore Composite Pellets Using Coke, Charcoal, and Biomass as Reducing Agents.
- Published in:
- Metals (2075-4701), 2021, v. 11, n. 2, p. 340, doi. 10.3390/met11020340
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- Publication type:
- Article
A Review of Orebody Knowledge Enhancement Using Machine Learning on Open-Pit Mine Measure-While-Drilling Data.
- Published in:
- Machine Learning & Knowledge Extraction, 2024, v. 6, n. 2, p. 1343, doi. 10.3390/make6020063
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- Publication type:
- Article
Monitoring of Mineral Processing Operations with Isolation Forests.
- Published in:
- Minerals (2075-163X), 2024, v. 14, n. 1, p. 76, doi. 10.3390/min14010076
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- Publication type:
- Article
Monitoring of Flotation Systems by Use of Multivariate Froth Image Analysis.
- Published in:
- Minerals (2075-163X), 2021, v. 11, n. 7, p. 683, doi. 10.3390/min11070683
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- Publication type:
- Article
Use of Decision Trees for the Development of Decision Support Systems for the Control of Grinding Circuits.
- Published in:
- Minerals (2075-163X), 2021, v. 11, n. 6, p. 595, doi. 10.3390/min11060595
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- Publication type:
- Article
Dynamic Monitoring of Grinding Circuits by Use of Global Recurrence Plots and Convolutional Neural Networks.
- Published in:
- Minerals (2075-163X), 2020, v. 10, n. 11, p. 958, doi. 10.3390/min10110958
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- Publication type:
- Article
Process Variable Importance Analysis by Use of Random Forests in a Shapley Regression Framework.
- Published in:
- Minerals (2075-163X), 2020, v. 10, n. 5, p. 420, doi. 10.3390/min10050420
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- Publication type:
- Article