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- Informationsmanagement (51) (remove)
Management of information and the IT systems it is stored in becomes a crucial capability for the industry. However, companies are struggling with the management of the various requirements and frequent changes of technology. Thus, IT complexity has become a major challenge for companies. At the same time, especially manufacturing companies are striving to implement Industrie 4.0 concepts. Many of these even have developed an Industrie 4.0 roadmap including various projects to change the company. Companies can develop such roadmaps by applying the Industrie 4.0 Maturity Index that gives a broad view on necessary capabilities for Industrie 4.0.
In our research, we analyzed data sets from over 10 manufacturing companies that have performed an Industrie 4.0 maturity assessment. Our hypothesis was that IT complexity challenges are hindering the implementation of Industrie 4.0 roadmaps significantly. We could prove this hypothesis at least for the companies analyzed and give insights on the specific challenges. Based on our analysis, we conclude our article by giving concrete recommendations on how to tackle IT complexity.
Digital technologies such as 5G, augmented reality, and artificial intelligence (AI) are currently being used in various ways by manufacturing companies. As the fourth industrial revolution progresses, it has become apparent that reckless use and inadequate regulation of these technologies have a detrimental effect on the environment in which they are utilized. Therefore, regulation of digital technologies is imperative today to ensure more responsible and sustainable use. While governments usually establish regulations, progress is not keeping pace with the demands and hazards of employing digital technologies. The European AI law serves as an example of the considerable distance yet to be covered before binding guidelines are established. Consequently, companies must take proactive measures today to ensure that they use digital technologies responsibly in their environments. In this context, identifying which digital technologies are pertinent to manufacturing companies in terms of regulation is crucial. Furthermore, a comprehensive approach is required to design compliance holistically for digital technologies and to systematically derive the corresponding guidelines. This paper introduces a set of models that not only determine the importance of
compliance in the application of different technologies but also present a framework for methodically designing compliance. Furthermore, the paper contributes to the development of an AI platform in the German research project PAIRS by investigating the compliance relevance of applications such as artificial intelligence.
The main challenge in all application areas of EV usage still is the energy storage within, as well as the energy transmission into an EV. However, this storage and transmission of energy also allows for synergies with a smart grid, if the information is adequately exchanged between roles in the energy and mobility sector. Since the energy transmission is a so called “fixed and intersection point” of E-Mobility, interoperability is required not only on an electrical (e.g. plugs), but also on an informational level. Standardization efforts are currently underway (e.g. IEC 15118), yet a comprehensive, consolidating view on the information system around energy transmission is missing. Therefore, this paper suggests a generic information system architecture for e-mobility (EM-ISA) derived from the Smart Grid Architecture Model (SGAM). EM-ISA shall be a base for companies to develop innovative services for their particular, ICT-enabled E-Mobility application area while at the same time stay at important points informational interoperable at the fixed and intersection point of energy transmission.
Der High-Resolution-Supply-Chain-Management-Ansatz erlaubt es Unternehmen, in Echtzeit auf dynamische Einflüsse des Marktes reagieren zu können.
Echtzeitfähige Planungs- und Regelungsprozesse können den Planungsaufwand reduzieren und gleichzeitig mit den zur Verfügung stehenden Echtzeitinformationen die Planungsqualität verbessern.
Planungsprozesse auf Basis von Echtzeitinformationen setzen voraus, dass ein konsistenter Informationsaustausch zwischen den unterschiedlichen Planungsebenen besteht sowie ein hoher Autonomiegrad innerhalb der einzelnen Planungsinstanzen.
PLM trifft ERP
(2013)
Das Management des Produktlebenszyklus ist eine komplexe Aufgabe, dessen volles Potenzial erst durch die Integration des gesamten Unternehmens erreicht wird. Um die Einbindung aller Fachabteilungen sicherzustellen, ist eine Potenzialuntersuchung notwendig, bei der Herausforderungen und mögliche Verbesserungen entlang des gesamten Produktlebenszyklus untersucht werden müssen. Der PLM-QuickCheck, den das FIR an der RWTH Aachen und das WZL der RWTH Aachen gemeinsam entwickeln, liefert hier einen möglichen Ansatz.
Der Begriff „Digitaler Schatten“ steht für ein hinreichend genaues, digitales Abbild der Prozesse, Information und Daten eines Unternehmens. Dieses Abbild wird benötigt, um eine echtzeitfähige Auswertebasis aller relevanten Daten zu schaffen, um hieraus letztendlich Handlungsempfehlungen abzuleiten. Die Bildung des Digitalen Schattens ist damit ein zentrales Handlungsfeld von Industrie 4.0 und stellt die Grundlage für alle weitergehenden Aktivitäten dar.
Digitale Technologien sind ein wesentlicher Bestandteil der Wertschöpfungskette in der industriellen Praxis geworden. Die Digitalisierung hat die Produktion und den modernen Arbeitsplatz in den vergangenen Jahrzehnten auf eine Art beeinflusst, die mit keiner anderen technischen Entwicklung vergleichbar ist, und die nun der vierten industriellen Revolution den Weg ebnet.
Die Essenz von Industrie 4.0 ist die Vernetzung von Produktionssystemen mithilfe von IT und dem Internet der Dinge, um prognosefähig zu sein und die Produktion effizienter und flexibler zu gestalten. Wesentliche Befähiger dieser Vision sind Daten aus Prozessen, Anlagen und Ressourcen, aus denen für das Unternehmen entscheidungskritische Informationen gewonnen werden. Hieraus lassen sich Erkenntnisse ableiten, die bisher verborgene Wirkungszusammenhänge zutage fördern.
Prognosemodelle errechnen auf der Basis dieser Erkenntnisse mögliche Zukunftsszenarien und belegen sie mit Wahrscheinlichkeitswerten bezüglich ihres Eintritts. Durch die Vernetzung der Informationen unterschiedlicher Aufgaben, Funktionen und Domänen lassen sich Handlungsempfehlungen fundieren, wobei eine unüberschaubare Anzahl relevanter Parameter berücksichtigt wird. Der Produktion wird ähnlich dem Rennsport eine Ideallinie aufgezeigt, an der sie sich orientieren kann, um in kürzester Zeit optimierte Ergebnisse zu erzielen.
In recent years supply chain participants are increasingly suffering the effects of disturbances in transportation supply chains. Both, dynamics in consumer demands and global supply chains lead to a growth in unplanned supply chain events. These can cause from rather manageable disturbances through to complete break-downs of transportation chains, resulting in high follow-up and penalty costs.
Consequently, concepts for an efficient supply chain disturbance management are needed, preferably with a real-time identification and reaction to disturbance events. Therefore in the following paper the research results of the German research project Smart Logistic Grids with the focus on designing an integrated model for the real-time disturbance management in transportation supply networks are presented. This includes the introduction of elaborated classification models for disturbances and action patterns as well as an associated costs and performance measurement system. Finally, a procedure model for the disturbance management is presented.
Systematization models for taylor-made sensor system applications and sensor data fit in production
(2015)
Industrial digitalization to realize smart factories is driven by an informatory base of high-resolution data provided by sensor systems on the shop-floor level. The challenge of technical availability of fitting measurement solutions nowadays turns in a struggle of finding the optimal solution for a specific task in an ever-growing sensor market. This paper analyzes and specifies necessary models to systematically derive and describe organizational, technical and informatory requirements for sensor system applications increasing the technological fit for faster integration and lower misinvestment rates.