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Wuddi P, Fottner J (2021). Self-Learning Problem Prioritization for Operating Tugger Train Systems. Logistics Journal : Proceedings, Vol. 2021. (urn:nbn:de:0009-14-54492)
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%0 Journal Article %T Self-Learning Problem Prioritization for Operating Tugger Train Systems %A Wuddi, Philipp %A Fottner, Johannes %J Logistics Journal : Proceedings %D 2021 %V 2021 %N 17 %@ 2192-9084 %F wuddi2021 %X For the operational control of logistics systems, the application of optimization methods using self-learning algorithms is increasingly the subject of research and development. Knowledge management systems, which address the specific reaction to deviations, i. e. disturbances and fluctuations of system parameters, form a special application use case. This paper discusses in detail, how such a system can evaluate, which present deviation in the logistic system should ideally be subject to the reaction of the control system. Several ideas are part of the discussion and narrow down to four different approaches. An overall evaluation and a synthesis of the individual approaches to a universally valid and applicable approach follow. Furthermore, future possibilities for enhancement complete the paper %L 620 %K Leitsysteme %K Logistiksteuerung %K control systems %K decision-making %K logistics control %K operational control %K operative Steuerung %K selbstlernende Systeme %K self-learning systems %R 10.2195/lj_Proc_wuddi_en_202112_01 %U http://nbn-resolving.de/urn:nbn:de:0009-14-54492 %U http://dx.doi.org/10.2195/lj_Proc_wuddi_en_202112_01Download
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@Article{wuddi2021, author = "Wuddi, Philipp and Fottner, Johannes", title = "Self-Learning Problem Prioritization for Operating Tugger Train Systems", journal = "Logistics Journal : Proceedings", year = "2021", volume = "2021", number = "17", keywords = "Leitsysteme; Logistiksteuerung; control systems; decision-making; logistics control; operational control; operative Steuerung; selbstlernende Systeme; self-learning systems", abstract = "For the operational control of logistics systems, the application of optimization methods using self-learning algorithms is increasingly the subject of research and development. Knowledge management systems, which address the specific reaction to deviations, i. e. disturbances and fluctuations of system parameters, form a special application use case. This paper discusses in detail, how such a system can evaluate, which present deviation in the logistic system should ideally be subject to the reaction of the control system. Several ideas are part of the discussion and narrow down to four different approaches. An overall evaluation and a synthesis of the individual approaches to a universally valid and applicable approach follow. Furthermore, future possibilities for enhancement complete the paper", issn = "2192-9084", doi = "10.2195/lj_Proc_wuddi_en_202112_01", url = "http://nbn-resolving.de/urn:nbn:de:0009-14-54492" }Download
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TY - JOUR AU - Wuddi, Philipp AU - Fottner, Johannes PY - 2021 DA - 2021// TI - Self-Learning Problem Prioritization for Operating Tugger Train Systems JO - Logistics Journal : Proceedings VL - 2021 IS - 17 KW - Leitsysteme KW - Logistiksteuerung KW - control systems KW - decision-making KW - logistics control KW - operational control KW - operative Steuerung KW - selbstlernende Systeme KW - self-learning systems AB - For the operational control of logistics systems, the application of optimization methods using self-learning algorithms is increasingly the subject of research and development. Knowledge management systems, which address the specific reaction to deviations, i. e. disturbances and fluctuations of system parameters, form a special application use case. This paper discusses in detail, how such a system can evaluate, which present deviation in the logistic system should ideally be subject to the reaction of the control system. Several ideas are part of the discussion and narrow down to four different approaches. An overall evaluation and a synthesis of the individual approaches to a universally valid and applicable approach follow. Furthermore, future possibilities for enhancement complete the paper SN - 2192-9084 UR - http://nbn-resolving.de/urn:nbn:de:0009-14-54492 DO - 10.2195/lj_Proc_wuddi_en_202112_01 ID - wuddi2021 ER -Download
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PT Journal AU Wuddi, P Fottner, J TI Self-Learning Problem Prioritization for Operating Tugger Train Systems SO Logistics Journal : Proceedings PY 2021 VL 2021 IS 17 DI 10.2195/lj_Proc_wuddi_en_202112_01 DE Leitsysteme; Logistiksteuerung; control systems; decision-making; logistics control; operational control; operative Steuerung; selbstlernende Systeme; self-learning systems AB For the operational control of logistics systems, the application of optimization methods using self-learning algorithms is increasingly the subject of research and development. Knowledge management systems, which address the specific reaction to deviations, i. e. disturbances and fluctuations of system parameters, form a special application use case. This paper discusses in detail, how such a system can evaluate, which present deviation in the logistic system should ideally be subject to the reaction of the control system. Several ideas are part of the discussion and narrow down to four different approaches. An overall evaluation and a synthesis of the individual approaches to a universally valid and applicable approach follow. Furthermore, future possibilities for enhancement complete the paper ERDownload
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Bibliographic Citation | Logistics Journal : referierte Veröffentlichungen, Vol. 2021, Iss. 17 |
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Title |
Self-Learning Problem Prioritization for Operating Tugger Train Systems (eng) |
Author | Philipp Wuddi, Johannes Fottner |
Language | eng |
Abstract | For the operational control of logistics systems, the application of optimization methods using self-learning algorithms is increasingly the subject of research and development. Knowledge management systems, which address the specific reaction to deviations, i. e. disturbances and fluctuations of system parameters, form a special application use case. This paper discusses in detail, how such a system can evaluate, which present deviation in the logistic system should ideally be subject to the reaction of the control system. Several ideas are part of the discussion and narrow down to four different approaches. An overall evaluation and a synthesis of the individual approaches to a universally valid and applicable approach follow. Furthermore, future possibilities for enhancement complete the paper Für die operative Steuerung logistischer Systemen ist der Einsatz von Optimierungsmethoden unter der Nutzung selbstlernender Algorithmen zunehmend Gegenstand von Forschungs- und Entwicklungsaufgaben. Einen besonderen Anwendungsfall bilden an dieser Stelle selbstlernende Wissensmanagementsysteme, welche die zielgerichtete Reaktion auf Abweichungen, also Störungen und Schwankungen von Systemkennwerten, adressieren. In diesem Beitrag wird im Detail darauf eingegangen, wie ein solches System bewerten kann, auf welches in der Regelstrecke vorliegende Problem idealerweise zu reagieren ist. Hierzu werden zunächst vier verschiedene Ansätze hergeleitet und diskutiert. Anschließend erfolgt eine gesamtheitliche Bewertung und eine Synthese der einzelnen Ansätze hin zu einem allgemeingültigen bzw. allgemein anwendbaren Ansatz. Weitere Verbesserungsmöglichkeiten bilden den Abschluss des Papers. |
Subject | Leitsysteme, Logistiksteuerung, control systems, decision-making, logistics control, operational control, operative Steuerung, selbstlernende Systeme, self-learning systems |
DDC | 620 |
Rights | fDPPL |
URN: | urn:nbn:de:0009-14-54492 |
DOI | https://doi.org/10.2195/lj_Proc_wuddi_en_202112_01 |