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Digitally connected industrial production promises faster and more efficient processes - in development and production, services, marketing & sales and for adapting entire business models. Agility and the ability to make changes in real time are strategic chracteristics of successful companies in Industrie 4.0. To acquire these features, it is necessary to create a continuously expanding data base. However, a company's organisational structure and culture also play an important part in determining whether this data's potential is leveraged effectively.
This acatech STUDY describes a new tool for helping manufacturing enterprises to forge their own individual path towards becoming a learning, agile company. The acatech Industrie 4.0 Maturity Index is a six-stage maturity model that analyses the capabilities in the area of resources, information systems, culture and organisational structure that are required by companies operating in a digitalised industrial environment. The attainment of each development stage promises concrete additional benefits for manufacturing companies. The model's practical application was validated in a medium-sized company.
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?
The additive manufacturing technique of "Selective Laser Melting" (SLM) provides the basis for a fundamental paradigm shift in industrial spare part manufacturing, affecting both technological and organizational company prac-tices. To harness the full potential of SLM-technology, considering agility and customizability, decentralized additive production networks need to be estab-lished. According to the principles just in time, just in place and just enough, a global online platform, which efficiently distributes construction orders to local manufacturing hubs could empower the market participants to utilize production capacities at optimal costs and minimal efforts. This work evaluates and selects key factors and creates scenarios for the development of platform-based networks for additive, SLM-based, spare part production. For this purpose, the selected key factors (e. g. material expenses, quality and process management and platform-based business models) are projected into the future, forming the three major scenarios "New distribution of roles in the SLM value chain", "SLM-technology for high wage countries" and "Individualization instead of mass production". These scenarios not only allow estimating the potential of an online network for additive spare part production, but also enable market participants to react pur-posively and agilely to unexpected market developments, and to foster the suc-cess of a platform-based additive spare part production.
The change from the traditional to the digital service provider is not easy. The digital maturity level of many industrial companies is still too low to successfully place these digital service innovations on the market. One problem of service development is the increasing involvement of information and communication technology in service development and implementation. The additional technology makes the innovation processes for services on the part of manufacturers increasingly complex by involving different internal and external stakeholders (e.g. IT partners, data protection officers or product development departments). In addition to this, data-driven services also require that manufacturers (e.g. data scientists) develop new competencies in order to use the customer data obtained to increase machine productivity and to offer new business models. Furthermore, industrial companies that want to successfully offer data-driven services must develop new market introduction strategies to create a high degree of acceptance and trust among their customers. This is necessary to get access to relevant data. These and other challenges caused the success rate of companies in regarding the development of new, industrial services to shrink.
To change this, this white paper presents six principles that help industrial enterprises to develop new successful data-driven services.
This chapter examines the question of the contribution of smart services for companies and the implications this has for the management of these business models. The chapter starts by outlining the different terminology used to describe smart services and introduces a business-driven view on the digitalization strategy of a company. The characteristic features of digital business models are explained as well as their implications for the management of smart service organizations. [https://link.springer.com/chapter/10.1007/978-3-030-58182-4_4]
Smart Service Engineering
(2019)
Industry 4.0 has provided vast opportunities for manufacturing companies whilst simultaneously creating multiple challenges. In this new highly digitized globalized marketplace, manufacturing companies find themselves under pressure to become more service oriented and offer new innovative value offerings such as smart services. These are digital data-driven services that, generally, add value in conjunction with a physical product. However, classical methods of service engineering have not adapted sufficiently to the increasing digital components and requirements of smart services. This paper presents Smart Service Engineering as a novel service-engineering approach for industrial smart services. Smart Service Engineering draws from iterative development models and implements agile and customer-centric methods to decrease the overall development time and achieve an early market success. The paper focuses on the service development steps and presents the interaction and interconnection of different elements of smart services based on a case study research. Finally the paper illustrates the successful application of the Smart Service Engineering approach and its impact on a German medium-sized company in the textile machine industry.
The FIR at the RWTH Aachen University continuously develops the concept and the principles of RoM further. It is already noticeable that the gap between companies that began preparing their maintenance departments for Industrie 4.0 years ago and those that are still struggling with the mere foundations of a professional maintenance organisation is rapidly increasing.
The first driver of the development sparked by Industrie 4.0 is the collection of and work with condition data. It is used to create a digital shadow of a service, e.g. maintenance measures in a specific
context. In the future, critical machine functions will be monitored continuously within production processes.
Based on these observations, the likelihood of machine failures can be predicted, which makes it possible to prioritize data-based maintenance measures. This means that maintenance activities, i.e. production plans, are based on prognoses regarding machine failures. By doing so, the currently existing separation between inspection, maintenance and reactive measures can be overcome, resulting in a holistic approach to maintenance. Maintenance specialists receive support from assistance systems, which give them access to all relevant information (e.g. machine history, spare part availability, proposals for measures, etc.). As a result, they can take on routine tasks in different areas as well and contribute to the increased flexibility of the production process. Although data is becoming an increasingly important driver of successful maintenance strategies,
maintenance employees continue to be central to specific tasks, machines and systems. In the future, it can be expected that they choose to become experts in a certain field and, ideally, actively share their knowledge with others within an open maintenance culture. Systems for interdisciplinary collaboration will be made part of everyday practice.
The maintenance department will be a center and distributor of knowledge in the agile company of the future.Only through the interaction of the outlined success principles, which amount to a paradigm shift within the maintenance department, the potential
benefit of maintenance as defined by RoM can be fully exploited, creating a long-term competitive advantage for those who consistently follow the path towards Industrie 4.0 in maintenance.
Industrial service is currently undergoing tremendous changes, largely driven by the development of new technologies, in particular the advancing digitalization. Never before have organizations had more comprehensive and insightful data assets - and never before have the opportunities to fully exploit this potential been better. However, most companies are unaware of how they can make use of this potential and which development steps are necessary to react to the current situation. To change this, a maturity-based approach was developed which describes four development stages of an industrial service company from a technological, organizational and cultural point of view. The maturity model makes it possible to develop a digital roadmap that is tailormade to each company, which helps to introduce Industrie 4.0 and transform industrial service companies into learning, agile organizations.
Data-driven services play an important role in
innovative business models of successful manufacturing
companies: They hold great potential for the creation of unique
selling points and improve the differentiation of manufacturing
companies in highly competitive markets. However, the large
number of newly invented digital services that fail shortly after
launching implies that companies struggle with the invention and
implementation of data-driven service solutions, which ends in a
waste of resources. The following paper introduces guideline
principles for successful innovation processes for data-driven
services. The principles were identified during in-depth case
studies with manufacturing companies. They contribute to a
necessary paradigm change for manufacturing companies in
terms of data-driven services for machines. The six identified
principles emphasize new aspects regarding the new dimension of
data-driven solutions and improve the life cycle management of
products and services. They demonstrate how the rules of agile
development can lead to successful and more efficient service
innovations in the industrial sector.
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]