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Institute
Neuland Internet
(2015)
Today, maintenance exceeds this definition, it is significantly more.
In many companies, it plays the role of an incubator for development
and drives digital transformation forward. The very essence of
Industrie 4.0 is the optimisation of the flow of information within as
well as outside of a company to accelerate the adjustment of company
organisations in the context of increasing competitive pressure.
Because of the variety of interfaces, information and data that
is available as well as its service character, maintenance lends itself easily as the area of choice for a company to make Industrie 4.0 real. Whilst doing so, the aim is not to equip employees with the
latest “gimmick“ for order processment or to be the company with
the highest number of lighthouse projects. Instead, maintenance
ensures reliable and cost-efficient production and, consequently,
the primary creation of added value of the manufacturing company.
Those who were identified as top performers during the “Smart
Maintenance“ consortium benchmarking by FIR at RWTH Aachen
University gain particular useful ideas twice as often as other follower companies directly from staff, thus releasing the right potential.
Information and data help to reach these goals and transfer the
vision of smart maintenance into actual pratice. But what is smart
maintenance exactly and how far along are you in the development
of your individual smart maintenance concept?
Im Rahmen von Industrie 4.0 kommt der prognosebasierten bedarfsgerechten Instandhaltung eine besondere Bedeutung zu. Sie steigert die Wirtschaftlichkeit von Produktionsanlagen beispielsweise durch eine Erhöhung der Verfügbarkeit, Lebensdauer oder Leistung. Dafür sind verschiedene Bausteine notwendig, die in dem Vortrag erläutert werden.
KVD-Service-Studie 2016
(2016)
Welche Qualifikationsanforderungen an die Servicemitarbeiter sind heute und zukünftig von Bedeutung? Welche unterstützenden Technologien sind für den Service heute und in der Zukunft relevant? Welche Auswirkungen ergeben sich daraus für die Serviceorganisation? Um die aktuellen Trends der zukünftigen Arbeitswelten im Service zu analysieren, liegt der Schwerpunkt der diesjährigen Service-Studie, die vom KVD zusammen mit dem FIR durchgeführt wurde, auf dem Themenkomplex Mensch und Technologie – neue Herausforderungen im Kontext der Industrie 4.0.
Herr Müller ist wirklich sauer. Es ist bereits das vierte (!) Mal, dass
sein Wagen nicht zum vereinbarten Zeitpunkt abholbereit ist. Ne-
ben der lästigen Wartezeit hat die Unzuverlässigkeit der Werkstatt
weitere negative Konsequenzen, die nicht nur Herrn Müller selbst
betreffen: Dank der Verzögerung schafft es Herr Müller nun schon
wieder nicht, seine Tochter vom Ballett abzuholen und muss,
schon wieder, seine Frau darum bitten, für ihn einzuspringen. Die
wiederum hatte eigentlich schon andere Pläne für den Abend und
muss jetzt spontan umdisponieren.
This paper presents a simulation approach for service production processes on the basis of which an optimal operating point for service systems can be identified. The approach specifically takes into account the characteristics of human behavior. The simulation is based on a system theory approach to the service delivery process. A specific use case of the simulation approach is presented in detail to illustrate how characteristic curves are deduced and an optimal operating point is obtained.
Traditional manufacturing companies increasingly launch data-driven services (DDS) to enhance their digital service portfolio. Nonetheless, data-driven services fail more often than traditional industrial services or products within the first year on the market. In terms of market launch, their digital characteristics differ from traditional industrial services and thus need specific structures and actions, which companies currently lack. Therefore, a process guideline for a six-month market launch phase of DDS is developed. The guideline relies on analogies from product, service and software launches based on the latest literature from service marketing and successful practices from various industries. Finally, the guideline is evaluated within five industrial case studies. Thus, the guideline provides scientific research insights regarding the market launch process of DDS and adds to the research of service marketing. It provides practical guidance for manufacturing companies by serving as a reference process for the market launch and offering a collection of successful practices within this area.
Traditional manufacturing companies increasingly launch data-driven services (DDS) to enhance their digital service portfolio. Nonetheless, data-driven services fail more often than traditional industrial services or products within the first year on the market. In terms of market launch, their digital characteristics differ from traditional industrial services and thus need specific structures and actions, which companies currently lack. Therefore, a process guideline for a six-month market launch phase of DDS is developed. The guideline relies on analogies from product, service and software launches based on the latest literature from service marketing and successful practices from various industries. Finally, the guideline is evaluated within five industrial case studies. Thus, the guideline provides scientific research insights regarding the market launch process of DDS and adds to the research of service marketing. It provides practical guidance for manufacturing companies by serving as a reference process for the market launch and offering a collection of successful practices within this area. [https://link.springer.com/chapter/10.1007/978-3-030-00713-3_14]