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Smartification and digital refinement of products to enable the design of smart ones is a pivotal challenge in the manufacturing industry. Companies fail to design smart products due to missing knowledge of digital technologies and their integral part in product development processes. This paper presents a methodology that enables the derivation of digital functions for smart products through selected cases in manufacturing usage. We develop a morphology that consists of digital functions for smartification. In this context, we explained and derived characteristics by a set of examples regarding smart products in the manufacturing industry. Our methodology reduces the time spent initiating a development project with the focus on smartification.
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.
Digitalization and Industry 4.0 continue to shape our industrial environment and collaboration. For many enterprises, a key challenge in moving forward in this matter is the integration of their shop-floor systems (hard- and software) with their office-floor systems to harvest the full potential of industry 4.0.
A multitude of different technologies and respective use-cases available on the market leave many companies startled. This paper presents a set of use-cases for IT-OT-Integration to bring transparency into a company’s digital transformation.
Additionally, a technical requirements profile for integrating IT- and OT-Systems based on the use cases is presented. Both, use-cases and their requirements, guide companies in selecting the digitalization measures that fit their current situation and help in identifying technical challenges that need to be addressed in the transformation process.
The digital transformation is changing the way companies think and design their manufacturing environment. Both due to the increasing number of connections between IoT-Devices, tooling machines, and production lines and the phenomenon of the convergence of IT and OT, systems are becoming more complex than years ago. Organizational and cultural changes within manufacturing companies strengthen this trend and form Industry 4.0 environments and cyber-physical production systems (CPPS). As these systems do not longer stay alone but are connected to each other and the company’s outside, the size of the potential attack surface is increasing as well. Besides that, manufacturing companies, small and medium-sized in particular, are facing complex challenges based on lack of knowledge, budget, and time to understand as well as to interpret their current situation and risk level and therefore to derive necessary counter-measures. Efficient as well as pragmatic tools and methods for these companies do not exist. This paper shows a research approach in which the company-specific set-up of Industry 4.0 environment and CPPS is characterized by its potential vulnerabilities. This enables companies to evaluate their risk potential before setting up this kind of environments and to undJo,erstand the potential consequences more precisely. By doing so, companies can derive and prioritize important counter-measures and so to strengthen their level of cyber-security efficiently. This will decrease the number of cyber-security attacks and increase the company’s competitiveness.
Feasibility Analysis of Entity Recognition as a Means to Create an Autonomous Technology Radar
(2021)
Mit den neuesten Technologietrends auf dem Laufenden zu bleiben, ist für Fertigungsunternehmen eine entscheidende Aufgabe, um auf einem global wettbewerbsfähigen Markt erfolgreich zu bleiben. Die Erstellung eines Technologieradars ist ein etablierter, jedoch meist manueller Prozess zur Visualisierung der neuesten Technologietrends.
Der Herausforderung, Technologien zu identifizieren und zu visualisieren, widmet sich das Projekt TechRad, das maschinelles Lernen einsetzt, um ein autonomes Technologie-Scouting-Radar zu realisieren. Eine der Kernfunktionen ist die Identifizierung von Technologien in Textdokumenten. Dies wird durch natürliche Sprachverarbeitung (NLP) realisiert.
Dieser Beitrag fasst die Herausforderungen und möglichen Lösungen für den Einsatz von Entity Recognition zur Identifikation relevanter Technologien in Textdokumenten zusammen. Die Autoren stellen eine frühe Phase der Implementierung des Entity Recognition Modells vor. Dies beinhaltet die Auswahl von Transfer Learning als geeignete Methode, die Erstellung eines Datensatzes, der aus verschiedenen Datenquellen besteht, sowie den angewandten Modell-Trainings-Prozess. Abschließend wird die Leistungsfähigkeit der gewählten Methode in einer Reihe von Tests überprüft und bewertet.
Die digitale Transformation stellt Unternehmen fortlaufend vor neue Herausforderungen, die richtig eingeschätzt und bewältigt werden müssen. Häufig fehlt ein strukturierter Gesamtansatz, mit dem Sie die digitale Transformation Ihres Unternehmens konzeptionieren und nachhaltig umsetzen können. Wir am FIR an der RWTH Aachen haben in den letzten Jahren zahlreiche Projekte zur Gestaltung der digitalen Transformation in Unternehmen durchgeführt und basierend auf diesen Erfahrungen ein Framework entworfen, um Ihnen genau dieses Wissen weiterzugeben und Ihnen zu helfen, bestehende Herausforderungen anzugehen. Unser Modell 'Aachener Digital-Architecture-Management' (ADAM) dient der Gestaltung von Digitalarchitekturen.
Elektrische Fahrzeuge im Flottenverbund eröffnen durch die Einbindung in das öffentliche Stromnetz große Wertschöpfungspotentiale durch das Erbringen von Energiedienstleistungen. Dieser radikale Wandel zwingt Original Equipment Manufacturer (OEM) zur Untersuchung neuer Geschäftsfelder und der Schaffung ganzheitlicher Mobilitätskonzepte. Um diesen disruptiven Veränderungen gerecht zu werden, liegt der Fokus der vorliegenden Untersuchung auf der Entwicklung einer allgemeingültigen Bewertungssystematik für Elemente eines erweiterten Dienstleistungsportfolios für konkrete Anwendungsfälle von EV (Electric Vehicle)-Flottenbetreibern.
Smart Service Prototyping
(2021)
This chapter is dedicated to prototyping, one of the steps of the Smart Service Engineering Cycle. It includes three phases: realizing core functionalities, developing core functionalities, and testing functionalities with customers. In order to realize prototypes successfully, methodical aspects of rapid IoT prototyping are used.
First of all, this chapter explains the motivation behind rapid prototyping and provides an introduction to the approach. The concept of rapid IoT prototyping is based on the idea of developing short-cycle solution variants on the basis of benefit hypotheses or benefit promises and user stories focusing on them. The aim is to achieve data acquisition, aggregation, linkage, processing, and finally visualization by developing it in a vertically integrated manner. Once this is accomplished, the prototype can be evaluated with customers, which also makes it possible to put the benefit hypotheses to the test. Finally, the collected customer feedback can be incorporated more quickly into the development process of new prototype versions, leading to a continuous improvement of the user experience as well as a constant focus on prioritizing the user. Another component of rapid IoT prototyping is working and thinking in terms of minimum viable products (MVP), i.e., solutions that do not meet all of the defined requirements in the first iteration, but are nevertheless already functional. [https://link.springer.com/chapter/10.1007/978-3-030-58182-4_6]
Produzierende Unternehmen stehen unter großem Veränderungsdruck, der durch wachsende Produktkomplexität, steigende Kundenanforderungen und digitale Geschäftsmodelle induziert wird. Vorherrschende Trends wie Industrie 4.0 und Digitalisierung müssen genutzt werden, um nicht nur die Produktion effizienter zu gestalten, sondern auch innovative Geschäftsmodelle zu entwickeln. Diese gewährleisten, dass Unternehmen neue Märkte erschließen und neue Kunden gewinnen.
Die von Unternehmen in der Vergangenheit fokussierten produktzentrierten Geschäftsmodelle werden durch die Digitalisierung in nutzerzentrierte Geschäftsmodelle transformiert. Zudem ist gerade eine Veränderung im Verhalten der Kunden zu beobachten, die sich zunehmend gezielt für Produkte mit höherem Leistungsumfang in Bezug auf digitale Fähigkeiten entscheiden, sodass sich die Digitalisierung ebenfalls in den Produkten wiederfindet. Dauerhafte Wettbewerbsfähigkeit bedarf folglich erweiterter digitaler Leistungen in Produkten.