Filtern
Erscheinungsjahr
- 2020 (14) (entfernen)
Dokumenttyp
Gehört zur Bibliographie
- nein (14)
Schlagworte
- Additive Fertigung (1)
- Blockchain (1)
- Business Analytics (1)
- Controlling (1)
- Cyber Security (1)
- Datenmigration (1)
- IT-Security (1)
- Industrie 4.0 (3)
- Industrie-4.0-Maturity-Index (1)
- Informationslogistik (1)
- Informationssicherheit (1)
- Informationstechnologie (1)
- IoP (1)
- KMU (1)
- KPI (1)
- Kennzahlen (1)
- Künstliche Intelligenz (1)
- Leistungsfähigkeit (1)
- Management (1)
- PPS (1)
- Performance-Management (1)
- Production-Networks (1)
- Produktionsnetzwerke (1)
- Produktionsplanung und -steuerung (1)
- Produktionssystem (1)
- Reifegradmodell (1)
- Risikomanagement (1)
- SMEs (1)
- SV7213 (1)
- SV7228 (1)
- SV7248 (1)
- SV7312 (1)
- SV7313 (1)
- Subscription Business Models (1)
- Technologiemanagement (1)
- Zielsystem (1)
- asset management (1)
- blockchain (1)
- blockchain-based services (1)
- case study research (1)
- critical success factors (1)
- criticality analysis (1)
- data value (1)
- data value assessment (1)
- digital services (1)
- digital shadow (1)
- digital transformation (1)
- economic quantification (1)
- food industry (1)
- information logistics model (1)
- intelligent support system (1)
- internet of production (1)
- machinery and plant engineering industry (1)
- manufacturing companies (1)
- risk analysis system (1)
- risk management (1)
- serious gaming (1)
- small and medium enterprises (1)
- smart product service systems (1)
- structural equation modeling (1)
- Änderungsmanagement (1)
Institut / FIR-Bereiche
In an increasingly changing market environment, the long-term survival of companies depends on their ability to reduce latencies in adapting to new market conditions. One strategy to meet this challenge is the anchoring of data-driven decision making, which leads to an increasing use of advanced information technologies and, subsequently, to an increase in the amount of data stored. The complexity of processing these data spurred the demand for advanced statistical methods and functions called Business Analytics. Companies are, despite all promised benefits, overwhelmed with the implementation of Business Analytics as indicated by a failure rate of 65 to 80 %. This paper provides an empirically validated, multi-dimensional model that takes an integrative look at critical success factors for the implementation
of Business Analytics and based on which management recommendations can be generated. For this purpose, constructs of the model are conceptualized, before a structural equation model is developed. This model is then validated with data from 69 industrial partners in the food industry. It is shown amongst others, that the three success factors top management support, IT infrastructure and system quality are pivotal to increase the company performance.
The number of available technologies is constantly rising. Be it additive manufacturing, artificial intelligence (AI) or distributed ledger technologies. The choice of the right technologies may decide the fate of a company. Due to the overwhelming amount of information sources, regular technology market research becomes increasingly challenging, especially for SMEs. In order to assist the technology management process, the authors will introduce the architecture of an automated, AI-based technology radar. The architecture will automatically collect data from relevant sources, assess the relevance of the respective technology (i.e. their maturity level) and then visualize it on the radar map.
Manufacturing companies face the challenge of selecting digitalization measures that fit their strategy. Measures that are initiated and not aligned with the company’s strategy carry the risk of failing due to lack of relevance. This leads to an ineffective use of scarce human and financial resources. This paper presents a target system to help companies select relevant digitalization measures compliant with their strategy for IT-OT-integration projects. The target system was developed based on literature research and expert interviews, and later validated in two use cases. The target system considers the goals of production companies and combines them with digitalization measures. The measures are classified by different maturity levels required for their realization. Thus, the target system enables manufacturing companies to evaluate digitalization measures with regards to their strategic relevance and the required Industrie 4.0 maturity level for their realization. This ensures an effective use of resources.
Die Blockchain-Technologie (BCT) ist eine der vielversprechendsten Technologien der Gegenwart, die in Zukunft insbesondere für produzierende Unternehmen eine noch größere Bedeutung haben wird, um die unternehmensübergreifende Zusammenarbeit zu verbessern und Prozesse gegenüber dem Kunden transparenter zu gestalten. Trotzdessen wird die BCT als vertrauensschaffendes Instrument noch nicht in der Breite angewendet. In diesem Beitrag werden neben den Potenzialen die Herausforderungen für den Einsatz der BCT erörtert und auf Basis des St. Gallener Management-Modells ein Lösungskonzept hergeleitet, welches dem potenziellen Anwender der BCT mögliche Anwendungsszenarien aufzeigt.
Aktuell ist noch nicht geklärt, wie sich das Zusammenwirken von Menschen und betrieblichen Anwendungssystemen bei der Bearbeitung der Aufgaben der PPS nach der Umsetzung von Industrie 4.0 entwickelt. Zur Systematisierung der Auswirkungen von Industrie 4.0 auf die PPS werden in diesem Beitrag die sechs Reifegradstufen des acatech Industrie-4.0-Maturity-Index mit der Aufgabensicht des Aachener PPS-Modells kombiniert und die Reifegradstufen für ausgewählte Unteraufgaben der PPS spezifiziert.
Schlüsselfaktoren für den industriellen Einsatz Additiver Fertigung in produzierenden Unternehmen
(2020)
Die Additive Fertigung (AM) ist insbesondere als Hilfsmittel bei der Produktentwicklung weit verbreitet. 71 Prozent der produzierenden Unternehmen setzen AM für die Fertigung von Prototypen und Pilotserien ein. Derzeit eignet sich AM jedoch nicht mehr nur für die Fertigung von Prototypen und Pilotserien, sondern gewinnt auch zur Herstellung von Endprodukten aus metallischen Werkstoffen an Bedeutung. Der vorliegende Beitrag verfolgt das Ziel, Schlüsselfaktoren zu identifizieren, die den industriellen Einsatz von AM in produzierenden Unternehmen am stärksten prägen. Damit wird zugleich die Grundlage geschaffen für ein systematisches Vorausdenken der Zukunft.
This paper contributes to an assessment framework for valuing data as an asset. Particularly industrial manufacturers developing and delivering Smart Product Service Systems (Smart PSS) are comprehensively depended on the business value derived by processing data. However, there is a lack in a framework for capturing and comparing the Smart PSS data value with the purpose of increasing the accountability of data initiatives. Therefore a qualitative data value assessment approach was developed and specified on Smart PSS, based on an industrial case study research. [https://link.springer.com/chapter/10.1007/978-3-030-57997-5_39]
The planning and implementation of migration projects in global production networks is a complex planning task that is confronted with a dynamic global environment with highly complex interdependencies. Today's migration approaches are either large projects or isolated local
investments. As such, they are not suitable for simultaneously addressing interdependencies and continuity. This paper illustrates a holistic and continuous methodology for rolling migration planning and implementation in global production networks. Seven steps enable the transformation from the current state of the production network into a target state regarding internal as well as external dynamics and interactions.
Subscription business transforms traditional business models of machinery and plant engineering. Many manufacturing companies struggle to pull out the potential created by Industry 4.0 and make it economically usable. In addition to technological innovations, it is necessary to transform the business model. This leads to a shift from ownership-based and product-centric business models to outcome-based business models, which focus on the customer's value and thus realize a unique value proposition and competitive advantage – the outcome economy. Based on a case study analysis among manufacturing companies, this paper provides further clarification including a definition and constituent characteristics of subscription business models in machinery and plant engineering.
Störungen und Änderungen des Produktionssystems führen zu Kosten und Aufwänden, bieten jedoch auch die Chance zur kontinuierlichen Verbesserung.
Um Änderungsanfragen zu erfassen, können etablierte Ansätze genutzt werden. Diese vernachlässigen jedoch die Anforderungen, denen sich ein Produktionssystem im Zeitalter der Digitalisierung ausgesetzt sieht. Der vorliegende Beitrag stellt einen Ansatz zur standardisierten Erfassung von Änderungsanfragen vor, welcher die Ausgangsbasis für die Bewertung von Änderungsanfragen in bestehenden IT-Systemen bietet.