Intelligent setting of process parameters for injection molding based on case-based reasoning of molding features (Englisch)
- Neue Suche nach: Yu, Shengrui
- Weitere Informationen zu Yu, Shengrui:
- https://orcid.org/0000-0002-3534-209X
- Neue Suche nach: Zhang, Tianfeng
- Neue Suche nach: Zhang, Yun
- Neue Suche nach: Huang, Zhigao
- Neue Suche nach: Gao, Huang
- Weitere Informationen zu Gao, Huang:
- https://orcid.org/0000-0001-7231-7128
- Neue Suche nach: Han, Wen
- Neue Suche nach: Turng, Lih-Sheng
- Neue Suche nach: Zhou, Huamin
- Neue Suche nach: Yu, Shengrui
- Weitere Informationen zu Yu, Shengrui:
- https://orcid.org/0000-0002-3534-209X
- Neue Suche nach: Zhang, Tianfeng
- Neue Suche nach: Zhang, Yun
- Neue Suche nach: Huang, Zhigao
- Neue Suche nach: Gao, Huang
- Weitere Informationen zu Gao, Huang:
- https://orcid.org/0000-0001-7231-7128
- Neue Suche nach: Han, Wen
- Neue Suche nach: Turng, Lih-Sheng
- Neue Suche nach: Zhou, Huamin
In:
Journal of Intelligent Manufacturing
;
33
, 1
; 77-89
;
2020
-
ISSN:
- Aufsatz (Zeitschrift) / Elektronische Ressource
-
Titel:Intelligent setting of process parameters for injection molding based on case-based reasoning of molding features
-
Beteiligte:Yu, Shengrui ( Autor:in ) / Zhang, Tianfeng ( Autor:in ) / Zhang, Yun ( Autor:in ) / Huang, Zhigao ( Autor:in ) / Gao, Huang ( Autor:in ) / Han, Wen ( Autor:in ) / Turng, Lih-Sheng ( Autor:in ) / Zhou, Huamin ( Autor:in )
-
Erschienen in:Journal of Intelligent Manufacturing ; 33, 1 ; 77-89
-
Verlag:
- Neue Suche nach: Springer US
- Neue Suche nach: Springer Science + Business Media B.V
-
Erscheinungsort:Dordrecht [u.a.]
-
Erscheinungsdatum:2020
-
ISSN:
-
ZDBID:
-
DOI:
-
Medientyp:Aufsatz (Zeitschrift)
-
Format:Elektronische Ressource
-
Sprache:Englisch
- Neue Suche nach: 52.72
- Weitere Informationen zu Basisklassifikation
-
Schlagwörter:
-
Klassifikation:
BKL: 52.72 Fertigungsautomatisierung -
Datenquelle:
Inhaltsverzeichnis – Band 33, Ausgabe 1
Zeige alle Jahrgänge und Ausgaben
Die Inhaltsverzeichnisse werden automatisch erzeugt und basieren auf den im Index des TIB-Portals verfügbaren Einzelnachweisen der enthaltenen Beiträge. Die Anzeige der Inhaltsverzeichnisse kann daher unvollständig oder lückenhaft sein.
- 1
-
A comprehensive review of robotic assembly line balancing problemChutima, Parames et al. | 2020
- 35
-
Human-centred design in industry 4.0: case study review and opportunities for future researchNguyen Ngoc, Hien / Lasa, Ganix / Iriarte, Ion et al. | 2021
- 77
-
Intelligent setting of process parameters for injection molding based on case-based reasoning of molding featuresYu, Shengrui / Zhang, Tianfeng / Zhang, Yun / Huang, Zhigao / Gao, Huang / Han, Wen / Turng, Lih-Sheng / Zhou, Huamin et al. | 2020
- 91
-
Online monitoring of resistance spot welding electrode wear state based on dynamic resistanceZhou, Lei / Li, Tianjian / Zheng, Wenjia / Zhang, Zhongdian / Lei, Zhenglong / Wu, Laijun / Zhu, Shiliang / Wang, Wenming et al. | 2020
- 103
-
Investigation on industrial dataspace for advanced machining workshops: enabling machining operations control with domain knowledge and application case studiesLi, Pulin / Cheng, Kai / Jiang, Pingyu / Katchasuwanmanee, Kanet et al. | 2020
- 121
-
Chatter detection for milling using novel p-leader multifractal featuresChen, Yun / Li, Huaizhong / Hou, Liang / Bu, Xiangjian / Ye, Shaogan / Chen, Ding et al. | 2020
- 137
-
Genetic algorithm based approaches to solve the order batching problem and a case study in a distribution centerCergibozan, Çağla / Tasan, A. Serdar et al. | 2020
- 151
-
A novel transfer learning fault diagnosis method based on Manifold Embedded Distribution Alignment with a little labeled dataZhao, Ke / Jiang, Hongkai / Wu, Zhenghong / Lu, Tengfei et al. | 2020
- 167
-
Approach to derive golden paths based on machine sequence patterns in multistage manufacturing processLee, Chang-Ho / Lee, Dong-Hee / Bae, Young-Mok / Choi, Seung-Hyun / Kim, Ki-Hun / Kim, Kwang-Jae et al. | 2020
- 185
-
Underdetermined blind source extraction of early vehicle bearing faults based on EMD and kernelized correlation maximizationZhao, Xuejun / Qin, Yong / He, Changbo / Jia, Limin et al. | 2020
- 203
-
Improving the accuracy of machine-learning models with data from machine test repetitionsBustillo, Andres / Reis, Roberto / Machado, Alisson R. / Pimenov, Danil Yu. et al. | 2020
- 223
-
Hierarchical multistrategy genetic algorithm for integrated process planning and schedulingZhang, Xu / Liao, Zhixue / Ma, Lichao / Yao, Jin et al. | 2020
- 247
-
Tool wear condition monitoring based on a two-layer angle kernel extreme learning machine using sound sensor for milling processZhou, Yuqing / Sun, Bintao / Sun, Weifang / Lei, Zhi et al. | 2020
- 259
-
Smart sheet metal forming: importance of data acquisition, preprocessing and transformation on the performance of a multiclass support vector machine for predicting wear states during blankingKubik, Christian / Knauer, Sebastian Michael / Groche, Peter et al. | 2021
- 283
-
Continual learning of neural networks for quality prediction in production using memory aware synapses and weight transferTercan, Hasan / Deibert, Philipp / Meisen, Tobias et al. | 2021
- 293
-
Towards real-time in-situ monitoring of hot-spot defects in L-PBF: a new classification-based method for fast video-imaging data analysisBugatti, Matteo / Colosimo, Bianca Maria et al. | 2021
- 311
-
Designing and developing smart production planning and control systems in the industry 4.0 era: a methodology and case studyOluyisola, Olumide Emmanuel / Bhalla, Swapnil / Sgarbossa, Fabio / Strandhagen, Jan Ola et al. | 2021
- 333
-
Deep reinforcement learning methods for structure-guided processing path optimizationDornheim, Johannes / Morand, Lukas / Zeitvogel, Samuel / Iraki, Tarek / Link, Norbert / Helm, Dirk et al. | 2021