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Institute
Projekt ‚Future Data Assets‘: Reporting der unternehmerischen Fähigkeit der Datenbewirtschaftung
(2020)
„Daten sind das neue Öl.“ Ein vielfach genutzter Ausdruck, der die Relevanz und den Wert von Daten im digi- talen Zeitalter unterstreicht. Allerdings existiert derzeit noch kein standardisiertes Verfahren, um den Wert von Daten explizit zu bemessen. Traditionelle marktpreis-, kosten- und nutzenbasierte Bewertungsmethoden kommen bei der Anwendung im Datenkontext schnell an ihre Grenzen. Das Forschungsprojekt ‚Future Data Assets‘ hat zum Ziel, neue Möglichkeiten der Datenbewertung zu erforschen. Im Fokus der Untersuchungen stehen insbesondere produzierende Unternehmen, die zunehmend Daten wertschöpfend einsetzen, jedoch vor zahlreichen Herausforderungen in der externen und internen Kommunikation ihres Datenkapitals stehen. Das diesem Bericht zugrundeliegende Vorhaben wurde mit Mitteln des Bundesministeriums für Wirtschaft und Energie unter dem Förderkennzeichen 01MD19010B gefördert. Die Verantwortung für den Inhalt dieser Veröffentlichung liegt beim Autor.
Competitive differentiation in the manufacturing sector is no longer based on product and service innovations alone but on the ability to monetize the usage phase of products and services. To this end, manufacturers are increasingly looking at so-called subscription business models as a way of supplementing the traditional sale of products and services. Since supplier success in the subscription business is directly dependent on customer success, the setup and expansion of a so-called Customer Success Management (CSM) is required. While CSM has already been established in the software industry for several years, companies in the manufacturing sector are often still in the conceptual phase of a CSM, parallel to the setup and expansion of their subscription business. Therefore, this paper aims to support the set-up of a CSM by providing a reference data model, based on case study research, that can be used to support the organizational or daily CSM tasks and to serve as a blueprint for conceptualizing CSM-specific IT systems.
Maschinen- und Anlagenbauer setzen sich in Ergänzung zum klassischen Verkauf von Produkten und Services zunehmend mit sog. Subskriptionsgeschäftsmodellen auseinander. Ertragsmechaniken wie Pay-per-Use oder Pay-per-Outcome, ein auf den individuellen Kundenerfolg ausgerichtetes Nutzenversprechen, digitale und über das Internet of Things vernetzte Leistungssysteme, bestehend aus Produkten, Services und Software, sowie eine langfristig orientierte, partnerschaftliche Kundenbeziehung sind Voraussetzungen und charakteristische Merkmale von Subskriptionsgeschäften. Da der Anbietererfolg im Subskriptionsgeschäft in direkter Abhängigkeit zum Kundenerfolg steht, erfordert das Subskriptionsgeschäft den Auf- und Ausbau eines sog. Customer-Success-Managements (CSM). Das CSM ist im Gegensatz zum Vertrieb oder Service vollständig auf den Erfolg, d. h. die Zielerreichung der individuellen Subskriptionskunden, ausgerichtet und incentiviert. Das CSM überwacht die Nutzungsphase der Produkte und Services und unterstützt die Subskriptionskunden proaktiv bei der Erreichung und Steigerung ihrer individuellen Ziele. Während das CSM in der Softwareindustrie bereits seit einigen Jahren etabliert ist, befinden sich Unternehmen im Maschinen- und Anlagenbau vielfach noch in der Konzeptionierungsphase eines CSMs. Das Ziel dieser Dissertationsschrift besteht daher darin, ein konfigurierbares Referenzmodell für das CSM im Maschinen- und Anlagenbau zu entwickeln, das Unternehmen bei der unternehmensspezifischen Ableitung eines CSM-Modells entlang ausgewählter Konfigurationsparameter unterstützt. Mit dem Referenzmodell soll vor allem die Effizienz bei der Gestaltung der CSM-Ablauforganisation gesteigert werden. Auf Basis einer spezifizierten Vorgehensweise zur konfigurativen Referenzmodellierung werden in dieser Dissertationsschrift zunächst Konfigurationsparameter für das CSM-Referenzmodell hergeleitet. Anschließend erfolgt der Entwurf des Ordnungsrahmens, der als übergeordneter Einstieg in das CSM-Referenzmodell dient.
Daraufhin werden sowohl ein Daten- als auch ein Funktionsmodell entwickelt, um die zahlreichen, notwendigen Datenpunkte und Aufgaben im CSM systematisch abzubilden. Die beiden Modelle werden im Anschluss über 17 modular gestaltete Prozessmodelle integriert. Das Referenzmodell wird abschließend zur Güteprüfung in drei ausgewählten
Fallstudien mit Unternehmen des Maschinen- und Anlagenbaus wiederverwendet und evaluiert.
Pricing is one of the most important, but underestimated tools, to enhance a company's profitability. Especially in the furniture sector, customers place a special interest in cost-efficient products and easy processes. Individualised and sustainable furniture can help to create a unique selling point and deliver real value to the customers. Therefore, a platform to create designs together is needed and can involve several stakeholders in the design and production phase. However, in order to include several stakeholders, the pricing and revenue model need to reflect individual needs and be a benefit to all. In this paper, the initial situation and potential revenue model options will be presented. Furthermore, multiple scenarios for practical use will be discovered and an overview given.
The industrial food production is currently caught between the increas-ing demands of numerous stakeholders, economic profitability and the challenges of digitization. A solution to face these various challenges can be seen in the aggregation of data into higher-value, independent data products that can be of-fered and sold on a buyer's market. Large amounts of heterogeneous data are already available in the value chain of the industrial food production, e.g. throughout the data-driven harvesting of primary products, further processing by interconnected production facilities and the information-intensive product distri-bution to end consumers. However, the data is usually only evaluated and used locally for the optimization of internal processes or, at the most, within compre-hensive partnerships. The purpose of this paper is to identify new revenue oppor-tunities for current and future players in the industrial food production by using data as an independent economic good (data products). For this purpose, scenar-ios for the development and use of data products via Industrial Internet of Things platforms are developed for a food technical reference process, the industrial chocolate production and its value chain. On this basis, examples for different types of data products and their value propositions are derived. The results can not only serve food producers and relevant stakeholders but all industrial produc-ers as an input for the future, yield-increasing orientation of their business models.
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.
Smart Services als Enabler von Subscription-Geschäftsmodellen in der produzierenden Industrie
(2022)
[Der Sammelband] Widmet sich den in Wissenschaft und Praxis aktuell intensiv diskutierten Fragestellungen zu Smart Services. Befasst sich mit Geschäftsmodellen, Erlösmodellen und Kooperationsmodellen von Smart Services. Geht auf branchenspezifische Besonderheiten von Smart Services ein. (link.springer.com)
The mechanical and plant engineering industry faces a stagnation in the new machinery market and is relying on innovative business models such as subscription to overcome these. In this business model, individually customized solution packages are offered. The success of these models depends directly on the future success of the customer, making the selection of the right customers crucial. The aim of this paper is to identify the criteria that indicate the suitability of customers for subscription models. While there are individual descriptions of suitability criteria in the existing literature, there is a lack of comprehensive consideration of customer relationship, customer company, and customer market, as the extensive consideration was not necessary in the transactional sale of machines until now. Therefore, in this study, expert interviews are conducted with companies in mechanical and plant engineering that offer subscription models. The results show criteria that are used to evaluate customers in the six main categories of creditworthiness, market potential, benefit potential, feasibility, relationship, and sales effort. In total, 24 criteria can provide insight into the suitability of the customer for a successful subscription relationship. These criteria are intended to develop target systems that meet the requirements of different stakeholders in the customer and thus support the economic viability of these business models.
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]
Towards a Methodology to Determine Intersubjective Data Values in Industrial Business Activities
(2021)
This paper contributes to a valuation framework for valuing data as an intangible asset. Especially those industrial manufacturers developing and delivering holistic digital solutions are limited in calculating the true business value of data initiatives. Since the value of data is strongly dependent on the respective use case, a completely objective valuation is not possible. This complicates decision-making on the internal side regarding investments in digital transformation, and on the external side to communicate existing benefits to third parties via financial reporting. Therefore, the target is to design a valuation framework that allows industrial manufacturers to determine an intersubjective, i.e., traceable and transparent, data value. In order to develop a framework that can be applied in practice, the approach is based on industrial case study research.
This chapter presents key challenges of digital pricing: selling value propositions, data-driven quantification of value, the design of value-driven pricing models, and the definition of subscription-based price metrics. To structure the pricing for smart-product-service offerings promisingly, a framework with four specific elements has been developed. To address the value propositions properly, this chapter presents four archetypes for offering smart-product-service systems. The chapter concludes by presenting an approach to quantify customer value for digital products and services.
Wachstum durch Reduzierung?
(2022)
„If you can’t measure it, you can’t manage it.“ Peter Druckers berühmte Weisheit ist in Zeiten des digitalen Wandels aktueller denn je. Der Unternehmenswert der weltweit wertvollsten Unternehmen, wie beispielsweise Google, Amazon, Alphabet und Microsoft, ergibt sich zum größten Teil nicht durch physische Vermögenswerte, sondern durch informationstechnische Dienste und datengetriebene Geschäftsmodelle. Der Zugriff und die Nutzung von Daten sind zunehmend ein wettbewerbsentscheidender Schlüsselfaktor und begründen die Notwendigkeit zur digitalen Transformation etablierter Geschäftsmodelle und -prozesse, nicht zuletzt innerhalb der produzierenden Industrie in Deutschland und Europa. Das vom Bundesministerium für Wirtschaft und Klimaschutz geförderte Forschungsprojekt ‚Future Data Assets', Laufzeit 01.08.2019 – 31.01.2023, diente folgerichtig dem Ziel, zunächst neue Möglichkeiten der Datenbewertung, insbesondere im Bereich des monetären Nutzens, und daran anschließend Kanäle zur Kommunikation der ermittelten Werte zu erforschen.