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The growth of installed wind capacities generated a market with a huge variety of service offers for operation & maintenance of wind turbines. Different parties like manufacturers, component suppliers as well as independent service providers compete for the attractive after sales market. An innovative service offer which seems to meet the customers’ requirements is the guarantee of availability for wind turbines. However, these service providers are facing new challenges regarding their performance potentials and their financial risks occurring from possible penalties. Service providers have to reconsider their preparedness of performance, their new occurring financials risks, their cooperation and qualification level as well as their localization of service bases. To be able to quantify these new challenges and risks a simulation model has been designed in the context of a German research project named “WinServ”.
Today, manufacturing companies are facing the influences of a dynamic environment and the continuously increasing planning complexity. Using advanced data analytics methods, processes can be improved by analyzing historical data, detecting patterns and deriving measures to counteract the issues. The basis of such approaches builds a virtual representation of a product – called the digital twin or digital shadow.
Although, applied IT systems provide reliable feedback data of the processes on the shop-floor, they lack on a data structure which represents real-time data series of a product. This paper presents an approach for a data structure for the order processing which overcomes the described issue and provides a virtual representation of a product. Based on the data structure deviations between the production schedule and the real situation on the shop-floor can be identified in real time and measures to reschedule operations can be identified.
Nowadays, providing purchasable goods is not enough for a company to survive on the global market. Because of competitive prices and a large range of products available, companies need to offer additional benefits to their customers in order to create a unique selling point. They add services to their product portfolio and offer clients the opportunity to acquire an additional service solution to go with it. The offered services need to fit to the customer's needs, resulting in a variety of available services, great complexity of the service range and decreasing transparency of the resource utilization. This paper addresses the problem by identifying variant-creating factors in product service systems, transferring them into an organizational framework and verifying their significance.
Increasing productivity in product-service systems is a vital success factor for industrialized economies and individual businesses. The service production is typically described as an integrated value chain setting, in which the provider and the customer are co-creators.
This paper embraces a characteristic curve model in order to illustrate the influence of the customer on the productivity of service production. The characteristic curves are derived from a system dynamics simulation model for a synchronized takt-based service production. In conclusion this research leads to designs recommendations for service production systems in order to reduce lead times and increase adherence to delivery dates.
Growing information systems (IS) often come along with growing IT complexity, because of emerging rag rug landscapes. This development causes rising IT costs and dependencies, which hinder the maintenance and expansion of the IS landscape. This article outlines the current research on published and presented methods to manage the rising IT complexity in a literature review. Because definitions of “IT complexity” vary a lot in literature, this paper also includes a definition of the term. In addition to that, it delivers a presentation of the used research methodology. Subsequently, it presents the findings in literature, highlights the research gap and – based on the literature analysis – presents, the steps that need to be taken. A discussion of the results and a summary complete the article.
Real-time data analytics methods are key elements to overcome the currently rigid planning and improve manufacturing processes by analysing historical data, detecting patterns and deriving measures to counteract the issues.
The key element to improve, assist and optimize the process flow builds a virtual representation of a product on the shop-floor - called the digital twin or digital shadow. Using the collected data requires a high data quality, therefore measures to verify the correctness of the data are needed. Based on the described issues the paper presents a real-time reference architecture for the order processing.
This reference architecture consists of different layers and integrates real-time data from different sources as well as measures to improve the data quality. Based on this reference architecture, deviations between plan data and feedback data can be measured in real-time and countermeasures to reschedule operations can be applied.
The design of data-driven industrial services in the context of industry 4.0 represents a major challenge for industrial service providers and manufacturing companies for investment goods. Data-driven services require technological and strategic components that most companies have not build up yet and that differ from current configurations. That is why many companies lack a systematic approach and implementation competence for the use of data in the context of industrial services and therefore face the challenge of not being able to expand their market position in an ever-growing competition for data.
The present paper addresses this research deficit with the aim of describing strategic features and characteristics of data-driven industrial services by identifying the related crucial features and characteristics through a morphological approach. This will enable industrial service providers to improve strategic and operative management decisions in order to define a specific strategy and to configure data-driven services.
One of the central success factors for production in high-wage countries is the solution of the conflict that can be described with the term “planning efficiency”. Planning efficiency describes the relationship between the expenditure of planning and the profit generated by these expenditures. From the viewpoint of a successful business management, the challenge is to dynamically find the optimum between detailed planning and the immediate arrangement of the value stream. Planning-oriented approaches try to model the production system with as many of its characteristics and parameters as possible in order to avoid uncertainties and to allow rational decisions based on these models. The success of a planning-oriented approach depends on the transparency of business and production processes and on the quality of the applied models. Even though planning-oriented approaches are supported by a multitude of systems in industrial practice, an effective realisation is very intricate, so these models with their inherent structures tend to be matched to a current stationary condition of an enterprise. Every change within this enterprise, whether inherently structural or driven by altered input parameters, thus requires continuous updating and adjustment. This process is very cost-intensive and time-consuming; a direct transfer onto other enterprises or even other processes within the same enterprise is often impossible. This is also a result of the fact that planning usually occurs a priori and not in real-time. Therefore it is hard for completely planning-oriented systems to react to spontaneous deviations because the knowledge about those naturally only comes a posteriori.
The need for a theoretical consideration of the influence of manipulable variables in various evaluation dimensions on the economic efficiency of a production system is obvious. Here it is necessary to link the relevant influencing variables and their mutual dependencies into a model, which represents the basis for the determination of the optimal operating points of the production system. In this model, formal sub-models are to be analysed and integrated, assur-ing that the state of research from various technical disciplines in production engineering, such as manufacturing technology, machine tools, logistics and production planning and control, are used to quantify the economic effect of the influencing variables.
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 networking via the company and as well, the overall supply chain, can only succeed if digital planning reflects reality as accurately as possible and if production control can react to deviations in real time. In essence, this leads to a development of process control towards process regulation. While longterm production and resource planning is usually mapped by Enterprise Resource Planning (ERP) systems, detailed planning, including short-term deviations and real-time data at the production level, is increasingly supported by Manufacturing Execution Systems (MES) at the production control level. However, in order to bring the underlying system concepts into line with Industry 4.0 efforts in a standardized manner, mutual functional integration within the framework of interoperable production planning and control is of crucial importance. For this purpose, studies were carried out in particular into cause-effect relationships. Thus, the overarching research objective is a valid design model to increase the controllability of production planning and control systems (PPC) in the context of Industry 4.0.
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.
In an increasingly changing market environment, the long-term survival of companies depends on their ability to reduce latencies in adapting to new market conditions. One strategy to meet this challenge is the anchoring of data-driven decision making, which leads to an increasing use of advanced information technologies and, subsequently, to an increase in the amount of data stored. The complexity of processing these data spurred the demand for advanced statistical methods and functions called Business Analytics. Companies are, despite all promised benefits, overwhelmed with the implementation of Business Analytics as indicated by a failure rate of 65 to 80 %. This paper provides an empirically validated, multi-dimensional model that takes an integrative look at critical success factors for the implementation
of Business Analytics and based on which management recommendations can be generated. For this purpose, constructs of the model are conceptualized, before a structural equation model is developed. This model is then validated with data from 69 industrial partners in the food industry. It is shown amongst others, that the three success factors top management support, IT infrastructure and system quality are pivotal to increase the company performance.
Numerous traditional, agile and hybrid development approaches have been proposed for the development of CPS. As the choice of development process is crucial to the success of development projects, it has become a major challenge to identify the best-suited process. This paper introduces a methodology for identifying the best-suited CPS development process, based on the individual boundary conditions for a certain development project within a company. The authors used a set of eight indicators to assess a CPS-development project. The results of the assessment were matched with CPS-development approaches. Based on the matching results a best-suited development process was selected. The application is shown for a use case in the German manufacturing industry. The developed method aims to reduce the risk of project failure due to the wrong choice of development process.
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.
Through data-based insights into customer behavior, products and service offers can be improved. For manufacturing companies, smart product-service systems (SPSS) offer the possibility to collect customer data during the usage phase of the product. As the focus on customer analytics is too often on sales and marketing, SPSS are overlooked as a source of customer data. However, manufacturing companies need to integrate data from all interactions with their customers along the complete customer journey to achieve a holistic data-based view of the customers. To identify these interactions and the customer data derived from them, the concept of a digital shadow will be applied to the customer journey. The projected results for the presented work in progress are a reference process model for the customer journey in manufacturing and a data model of the customer data created along this process.
Die zunehmende Konzentration von Unternehmen auf ihre Kernkompetenzen und das Agieren auf einem weltweiten Markt führen zu einer stärkeren Kooperation in Unternehmensnetzwerken. Die Organisationsformen von Unternehmensnetzwerken können durch ihre Struktur und ihren Grad der Koordination beschrieben werden. Als Beispiel eines geführten und polyzentrisch strukturierten Unternehmensnetzwerks wird die Virtuelle Fabrik erläutert. Die Virtuelle Fabrik schafft Rahmenbedingungen für Unternehmen, um sich effizient in Ad-hoc-Kooperationen zu organisieren. [https://link.springer.com/chapter/10.1007/978-3-662-55426-5_29]
Die Produktentwicklung beeinflusst die Kostenentstehung eines Produkts über den gesamten Lebenszyklus. Daher müssen vielfältige Restriktionen frühzeitig berücksichtigt werden, wie Beanspruchungen an das Produkt oder Restriktionen aus der Instandhaltung und dem Recycling. Die Produktentwicklung beeinflusst auch maßgeblich die Variantenentstehung und legt die Produktvielfalt, die Produktstruktur und die Kosten der Varianten fest. Die Koordination der Aktivitäten in der Produktentwicklung basiert auf einem produktübergreifenden Projektmanagement, um die interdisziplinäre Zusammenarbeit zu organisieren. [https://link.springer.com/chapter/10.1007/978-3-662-55426-5_23]
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.
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.
Steigende Energiekosten sind ein zunehmendes Risiko für Unternehmen des deutschen Maschinen- und Anlagenbaus. Die Steigerung der Energieeffizienz kann somit zukünftig zu Wettbewerbsvorteilen führen. Aufgrund der Komplexität heutiger Produktionssysteme ist eine Analyse der Wechselwirkungen von Parametern der Produktionsplanung und -steuerung (PPS) auf die Energieeffizienz notwendig, um Maßnahmen zu identifizieren, die eine Steigerung der Energieeffizienz ermöglichen.
Der vorliegende Artikel stellt die Ergebnisse einer Simulationsstudie vor, in welcher der Einfluss der Losgrößenplanung auf die Energieeffizienz im Rahmen einer mehrstufigen Mehrproduktfertigung untersucht wird. Die Ergebnisse der Studie leisten einen Beitrag zum besseren Verständnis der komplexen Zusammenhänge und können als Ausgangspunkt für weitere Untersuchungen zu Wechselwirkungen von Produktionsparametern mit der Energieeffizienz dienen.
Heterogene Maschinenparks, über Jahrzehnte gewachsene Anlagenstrukturen und fehlende Dokumentation im Bereich der Systemkomponenten, Bauteile und Ersatzteilteillisten erschweren es der Instandhaltung (IH), ihre anfallenden Maßnahmen präzise zu planen, mit benötigten Informationen zu unterstützen und somit effizient durchführen zu können. Die systematische Erfassung, Verwaltung und Nutzung administrativer Auftragsdaten kombiniert mit technischen Zeichnungen, Materialeigenschaften und Maschinendaten ermöglichen die gezielte Unterstützung von Instandhaltungsprozessen von der Initiierung bis hin zum Abschluss des Auftrags. Verschiedene Softwarelösungen stellen diesbezüglich die IT-technischen Funktionalitäten in verschiedenen Ausprägungen zur Verfügung. Aufgrund steigender organisatorischer Anforderungen, Effizienzbemühungen und technischer Möglichkeiten in den letzten 25 Jahren haben sich die unterstützenden IT-Lösungen stetig weiterentwickelt und sind zu Produkten geworden, welche explizit zur Unterstützung instandhaltungsspezifischer Aufgaben genutzt werden.
Manufacturing companies of the machinery and equipment industry find themselves more than ever exposed to a rapidly changing competitive environment. In particular, the resulting diversity of planning and control processes confronts organisations and information systems with a significant coordination effort. To this day, planning and execution of order processing – from offer processing to the final shipment of the product – is still a part of the production planning and control (PPC), which is almost entirely integrated into information systems. Though, in order to manage dynamic influences on processes within order processing, there can be found a deficiency in the processing of decision-relevant and real-time information. Partly, the reason for this is a missing or incorrect feedback of process relevant data, so that the planning results, gained by the use of information systems, differ to the current process situation.
The concept of Manufacturing Resource Planning (MRP II) still represents the central logic of production planning and control. However, the centralised and push-oriented MRP II planning logic is not able to plan and measure dynamic processes adequately, which, due to diverse disturbances, often occur in production environments. Furthermore, specific weaknesses of MRP II-based systems are the lack of support for order releases, the planning principle based on average values and the successive planning method as well as the use of limited partial models. As a result a successive planning method leads to a dissection of PPC-tasks into smaller work packages and so strides away from a holistic approach and the achievement of an optimal solution. Similarly, a planning, focusing on a general business objective system, using a partial planning approach due to isolated considerations is not possible. Insufficient consideration of the current load horizon and the current capacity utilization, non-existing or delayed feedback on order progress as well as faults and poor availability and transparency of information can be named as further weaknesses of MRP II-based systems.
Remote services are services enabled by information and communication components and therefore do not require the physical presence of a service technician at the service object to provide a task. The impact of remote service on the capital goods industry has been increasingly significant over the recent yeas. Still many companies struggle with developing and implemenling successful business model, for remote service. This leads to a lot of unaccomplished benefits for the customer as well as for the companies themselves. A survey throughout companies in Ihe industrial machine and plant production sector was conducted in order to determine what successful companies do differently from those that cannot efficiently implement remote service business models.
The study presented in this chapter identifies key suceess factors of companies that effectively implemented remote services for their products. In order to identify the successful companies a scale for measuring remote service success was developed. Only by the use of this scale further findings regarding the success factors were possible. Key findings include the fact that successful companies actively market their remotle service to their customers. Generally they try to approach their remote service business from the operating company's perspective.
For a considerable time, European companies in the capital goods industry experience stagnating growth in material goods markets. Moreover, increasing international competition forces European companies to improve their market position. In order to stay successful, an increasing number of companies adapt their businesses from manufacturing to service provider. Unfortunately, the number of companies who manage to turn their portfolio change into a competitive advantage is comparatively low. Therefore, this paper focuses on the development of a framework for the positioning as industrial services provider. Besides, it provides support for management in shaping the changes that occur with the transformation.
As industrial service portfolios grow, many companies overlook the implications of their business operations: rising complexity and resulting complexity costs. One reason are nonexistent tools that help service managers to decide in planning phases with an adequate effort about the implications that variety and complexity decisions have on the complexity costs of their portfolio. This paper depicts the challenges service companies have to face in this context and presents a concept of a heuristic approach to evaluate the complexity costs for industrial services. The concept is being developed in strong cooperation with industrial partners.
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.
Producing companies are confronted with a growing number of product ramp-ups, since product life cycles are decreasing and product diversity is increasing. Production Planning and Control (PPC) of ramp-up products is particularly challenging, as there is a significant lack of reliable experienced data.
The information deficit is exceptionally high for the first step of PPC process, namely Production Program Planning (PPP). The paper in hand proposes an innovative approach of cybernetic PPP that enables companies with numerous ramp-ups to design reliable and fast PPP processes that can react highly adaptable on unpredictable environmental disturbances. The Viable System Model (VSM) is used as frame of reference for the design of PPP processes in line with principles from management cybernetics.
Production systems are exposed to an increasing planning-related uncertainty and susceptibility. The inter-company coordination has not sufficiently been considered in contemporary concepts of supply chain management. Against this background, it is crucial to provide a suitable tool that increases the planning capability of the players and the robustness of the supply chain as a whole. Therefore, this article provides the relevant causes and effects of planning uncertainties within the production planning and presents based on that an inter-company supply chain planning concept.
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.
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.
Applying Game Theory in Procurement. An Approach for Coping with Dynamic Conditions in Supply Chains
(2014)
Producing companies are facing continually changing conditions accompanied by higher requirements with respect to the flexible configuration of their supply chain. The challenge resulting from this initial situation is to develop systems that have the availability of adjusting their planning procedures and aims depended on the situation and therefore accommodate the increasing demand for flexibility. To address this challenge game theory seems to be a new and promising approach. The aim and added-value of the research work described here is to develop a decision model for the area of procurement using solutions concepts of game theory. Especially in times of high volatility such a decision model can support material requirements planners better than today's common selective planning logics.
In this paper the model to be solved by game theoretic solution concepts is presented. A research study has been conducted which proved the need for combining existing methods of procurement quantity calculation by means of game theoretic solution concepts. Some of the results of this study are presented in this paper. In the last part of the paper a structure for classifying game theoretic models is presented. This structure should support in selecting the appropriate solution concept for real-life decision-situations and is able to support in any practical application-field finding out the most appropriate game theoretic solution concept.
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.
Auftragsmanagement
(2014)
Ausgelöst durch einen konkreten Kundenauftrag, plant, steuert und überwacht das Auftragsmanagement sämtliche Aktivitäten der Auftragsabwicklung von der Anfragenbearbeitung über die Konstruktion, den Einkauf, die Fertigung und Montage bis hin zum Versand des fertigen Produkts. Dabei wird im Auftragsmanagement das Ziel verfolgt, die Transparenz der Auftragsabwicklung zu erhöhen und damit die Reaktionsfähigkeit im Hinblick auf unternehmensinterne und -externe Störungen deutlich zu verbessern. Gleichzeitig unterstützt das Auftragsmanagement die Lösung von Interessenskonflikten zwischen verschiedenen Fachbereichen sowie die Ausregelung von Zielkonflikten im Sinne einer effizienten Erfüllung des Kundenauftrags.
Teilaufgaben des Auftragsmanagements sind die Angebotsbearbeitung, die Auftragsbearbeitung sowie die Auftragskoordination und das Auftragscontrolling. In diesem Kapitel werden zunächst die Kernaufgaben des Auftragsmanagements definiert und anschließend die wesentlichen Methoden und Verfahren zur Bearbeitung der verschiedenen Teilaufgaben innerhalb des Auftragsmanagements zusammengestellt. Abschließend werden die Aufgaben des Auftragsmanagements in ihrer zeitlogischen Abfolge in Form eines Referenzprozessmodells modelliert und dabei fertigungstypspezifisch detailliert.
Unternehmen aller Branchen sehen sich mit immer neuen Anforderungen an den Produktentstehungsprozess konfrontiert. Um wettbewerbsfähig zu bleiben, müssen sie ihren Kunden eine höhere Variantenvielfalt bei gleichzeitig geringeren Produktentwicklungs- und Markteinführungszeiten bieten. Zur Realisierung dieser Ziele reagieren sie mit der Einführung von modularen Produktbaukästen und der Etablierung von global verteilten Wertschöpfungsnetzwerken.
Eine effiziente und durchgängige Unterstützung der Unternehmensfunktionen erfordert die Integration und das harmonische Zusammenspiel der IT-Systeme. Eine zwingende Voraussetzung für das Erreichen dieser Integration ist die Vereinheitlichung und Pflege des Fundaments der Systemlandschaft – der Stammdaten.
Produktionssysteme sind einer steigenden planungsbezogenen Unsicherheit und Störanfälligkeit ausgesetzt. Der hieraus resultierende überbetriebliche Koordinationsbedarf wurde hinsichtlich seiner Bewältigung in kontemporären Konzepten des Supply-Chain-Managements bislang methodisch nicht ausreichend berücksichtigt. Vor diesem Hintergrund gilt es ein geeignetes Werkzeug bereitzustellen, das die Planungsfähigkeit der Akteure sowie die Robustheit der Wertschöpfungskette als Ganzes steigert. Zu diesem Zweck soll der vorliegende Artikel einen Beitrag leisten, indem zunächst die relevanten Ursachen und Wirkungen planerischer Unsicherheiten aufgezeigt werden, um im Anschluss das darauf aufbauende Kooperationsmodell zu skizzieren.
Der effiziente Umgang mit den dynamischen Rahmenbedingungen produzierender Unternehmen ist eine der wesentlichen Aufgaben des Supply Chain Managements in Hochlohnländern. Die echtzeitnahe Verfügbarkeit und Verarbeitung planungsrelevanter Informationen nimmt dabei eine Schlüsselrolle ein. Sie stellt die Grundlage für eine realistische Planung und Steuerung der Produktion dar. Die zentrale Herausforderung liegt dabei in der Komplexität der Informationsvielfalt und deren Bewältigung sowie der effektiven Integration menschlicher Intuition und Erfahrung in den Regelkreis des Supply Chain Management. High Resolution Supply Chain Management (HRSCM) beschreibt einen Ansatz, Organisationsstrukturen und -prozesse auf Basis einer hohen Informationstransparenz in die Lage zu versetzen, sich durch dezentralisierte Produktionskontrollmechanismen in Form eines kaskadierten Regelkreismodells selbstoptimierend an ständig verändernde Rahmenbedingungen anzupassen.
Entgegen der von Porter postulierten Inkompatibilität von Economies of Scale und Economies of Scope sind in Hochlohnländern produzierende Unternehmen in zunehmendem Maße herausgefordert, sowohl individuelle Kundenbedürfnisse zu befriedigen als auch gegen den Kostendruck globalisierter Märkte zu bestehen. Diese Herausforderung entspricht einer Auflösung der Scale-Scope-Dichotomie. Aufgrund der hochgradigen Interdependenz der strukturbildenden Elemente eines Produkt-Produktionssystems müssen diese zur Auflösung der Dichotomie in ihrem spezifischen Standardisierungsgrad aufeinander abgestimmt werden.
Diese Abstimmung entspricht der Aufgabenstellung der integrativen Bewertungs-und Konfigurationslogik, die im Folgenden präsentiert wird. Auf Basis eines integrierten Bewertungsmodells, das Produkt-Produktionssysteme in vier quantifizierbare Spannungsfelder gliedert, kann hierbei der aktuelle Betriebspunkt eines Produktionssystems analysiert werden. Über die gewonnenen Analyseergebnisse ermöglicht dieses Bewertungsmodell die Steuerung des Konfigurationsprozesses eines Produkt-Produktionssystems in Form einer Konfigurationslogik.
Industrial production in high-wage countries like Germany is still at risk. Yet, there are many counter-examples in which producing companies dominate their competitors by not only compensating for their specific disadvantages in terms of factor costs (e.g. wages, energy, duties and taxes) but rather by minimising waste using synchronising integrativity as well as by obtaining superior adaptivity on alternating conditions. In order to respond to the issue of economic sustainability of industrial production in high-wage countries, the leading production engineering and material research scientists of RWTH Aachen University together with renowned companies have established the Cluster of Excellence “Integrative Production Technology for High-Wage Countries”. This compendium comprises the cluster’s scientific results as well as a selection of business and technology cases, in which these results have been successfully implemented into industrial practice in close cooperation with more than 30 companies of the industrial production sector.
Aufgaben
(2012)
Aufgabe der Produktionsplanung und -steuerung (PPS) ist die termin-, kapazitäts- und mengenbezogene Planung und Steuerung der Fertigungs- und Montageprozesse. Während die Produktionsplanung den Inhalt und die Einzelprozesse der Fertigung und der Montage zu gestalten hat, regelt die Produktionssteuerung den Ablauf der Tätigkeiten in der Fertigung im Rahmen der Auftragsabwicklung. Dabei regelt die Produktionssteuerung, wann unter Berücksichtigung der Vorgaben der Produktionsplanung einerseits und der vorgegebenen logistischen Zielgrößen andererseits welche Teilprozesse in welcher Reihenfolge einen Produktionsfaktor beanspruchen.
In order to introduce load management in the manufacturing industry, some obstacles need to be pointed out. This paper presents a feasible approach on how to implement load management measures in companies.
To this end, load management and energy management are explained and distinguished in a first step. Subsequently, the implementation method is introduced. Therefore, by means of this paper, companies will be enabled to use load management measures and significantly reduce their energy costs. In the second part of the paper, the introduced approach will be applied.
Hence, a use case of a manufacturing company is described. Alongside energy analyses with consumption data, specific measures are presented.
Die zunehmende Konzentration von Unternehmen auf ihre Kernkompetenzen und das Agieren auf einem weltweiten Markt führen zu einer stärkeren Kooperation in Unternehmensnetzwerken. Die Organisationsformen von Unternehmensnetzwerken können durch ihre Struktur und ihren Grad der Koordination beschrieben werden. Als Beispiel eines geführten und polyzentrisch strukturierten Unternehmensnetzwerks wird die Virtuelle Fabrik erläutert. Die Virtuelle Fabrik schafft Rahmenbedingungen für Unternehmen, um sich effizient in Ad-hoc-Kooperationen zu organisieren.
Die Umsetzung einer strategischen Veränderung hin zum Lösungsanbieter besteht in weiten Teilen in der Anpassung des bestehenden Geschäftsmodells oder der Neudefinition desselben. Zunehmend werden bspw. anstelle des Verkaufs von Sachgütern und des darauffolgenden Angebots von After-Sales-Dienstleistungen Garantien über die Funktionsbereitschaft oder Verfügbarkeit angeboten. Dazu ist umfassendes Wissen über Geschäftsmodelle und deren Anpassung notwendig.
In diesem Beitrag wird beschrieben, wie Geschäftsmodelle grundsätzlich aufgebaut sind und welche Fragestellungen bei der Entwicklung eines Geschäftsmodells beantwortet werden müssen. Es werden für das Management industrieller Dienstleistungen relevante nutzungs- und gebrauchsabhängige Geschäftsmodelle vorgestellt. Das Kapitel wird abgerundet durch eine Methode für das Management der Anpassung von Geschäftsmodellen.
Die Frage nach der strategischen Einbindung des Dienstleistungsgeschäfts in den Kontext des Gesamtunternehmens wird angesichts globalisierter Märkte mit hohem Wettbewerbsdruck zunehmend wichtiger. Die Wahl des richtigen Umfangs des Dienstleistungsangebots unter Berücksichtigung der Gesamtunternehmensstrategie ist erfolgsentscheidend für die richtige Positionierung eines Industrieunternehmens im Markt.
Daher wird in diesem Beitrag der Begriff "Strategisches Management industrieller Dienstleistungen" anwendungsnah beschrieben. Hierauf aufbauend wird ein Prozess zum strategischen Management industrieller Dienstleistungen vorgestellt, der Dienstleistungs- und Gesamtunternehmensstrategie integriert betrachtet. Zur operativen Umsetzung der Inhalte der einzelnen Prozessphasen werden abschließend ausgewählte Methoden und Werkzeuge vorgestellt.
Kennzahlen und Führungssysteme sind im Sinne des Performance-Managements ein zentraler Aspekt des Managements industrieller Dienstleistungen. Die Performancemessung bezieht dabei sowohl strategische Aspekte als auch Ergebnisse auf der operativen Ebene mit ein.
Die Immaterialität sowie die Integrativität von Dienstleistungen bedingen auch, dass mehr perspektivische Kennzahlen und Führungssysteme erforderlich sind, die neben monetären Kennzahlen auch die Erfassung und Auswertung von für Dienstleistungen spezifischen kunden- sowie kundenprozessbezogenen Kennzahlen ermöglichen. Im Beitrag werden ausgewählte Messansätze vorgestellt. Hierfür wird eine Gliederung in die Teilbereiche Kundengerichtete, Unternehmensgerichtete und Intern gerichtete Messansätze vorgenommen.