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Application Of Data Mining And Machine Learning Methods To Industrial Heat Treatment Processes For Hardness Prediction Yannick Lingelbach

  • SKU: BELL-237300524
Application Of Data Mining And Machine Learning Methods To Industrial Heat Treatment Processes For Hardness Prediction Yannick Lingelbach
$ 35.00 $ 45.00 (-22%)

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Application Of Data Mining And Machine Learning Methods To Industrial Heat Treatment Processes For Hardness Prediction Yannick Lingelbach instant download after payment.

Publisher: KIT Scientific Publishing
File Extension: PDF
File size: 20.84 MB
Pages: 278
Author: Yannick Lingelbach
ISBN: 9783731513520, 3731513528
Language: English
Year: 2024
Volume: 119

Product desciption

Application Of Data Mining And Machine Learning Methods To Industrial Heat Treatment Processes For Hardness Prediction Yannick Lingelbach by Yannick Lingelbach 9783731513520, 3731513528 instant download after payment.

This work presents a data mining framework applied to industrial heattreatment (bainitization and case hardening) aiming to optimize processes and reduce costs. The framework analyses factors such as material, production line, and quality assessment for preprocessing, feature extraction, and drift corrections. Machine learning is employed to devise robust prediction strategies for hardness. Its implementation in an industry pilot demonstrates the economic benefits of the framework.

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