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Creating a schedule to perform certain actions in a realworld environment typically involves multiple types of uncertainties. To create a plan which is robust towards uncertainties, it must stay flexible while attempting to be reliable and as close to optimal as possible. A plan is reliable if an adjustment to accommodate for a new requirement causes only a few disruptions. The system needs to be able to adapt to the schedule if unforeseen circumstances make planned actions impossible, or if an unlikely event would enable the system to follow a better path. To handle uncertainties, the used methods need to be dynamic and adaptive. The planning algorithms must be able to re-schedule planned actions and need to adapt the previously created plan to accommodate new requirements without causing critical disruptions to other required actions.
The usage of data gathered for Industry 4.0 and smart factory scenarios continues to be a problem for companies of all sizes. This is often the case because they aim to start with complicated and time-intensive Machine Learning scenarios. This work evaluates the Process Capability Analysis (PCA) as a pragmatic, easy and quick way of leveraging the gathered machine data from the production process. The area of application considered is injection molding. After describing all the required domain knowledge, the paper presents an approach for a continuous analysis of all parts produced. Applying PCA results in multiple key performance indicators that allow for fast and comprehensible process monitoring. The corresponding visualizations provide the quality department with a tool to efficiently choose where and when quality checks need to be performed. The presented case study indicates the benefit of analyzing whole process data instead of considering only selected production samples. The use of machine data enables additional insights to be drawn about process stability and the associated product quality.
Das Forschungsprojekt Data Sharing Framework untersuchte Data Sharing im Kontext von datenbasierten Services und Produkten in Ökosystemen aus fünf Perspektiven: Kultur, Vertrauen, Wert, Recht & Governance, Sicherheit. Die Forschungsergebnisse bestätigen die Relevanz dieser Perspektiven und es hat sich gezeigt, dass diese Aspekte sowohl Barrieren als auch Treiber für Datennutzung und -austausch zwi- schen Unternehmen darstellen.
Ausgangspunkt waren die folgenden forschungs- und praxisleitenden Annahmen:
• These 1: KMU können durch die Nutzung und das
Teilen von Daten Mehrwerte in Form neuer Produkte und Services generieren. Aus wissenschaftlicher Sicht liegt der Fokus des Themas Daten und Data Science bisher überwiegend auf der technischen Umsetzung datenintensiver Geschäftsmodelle und Kooperationen durch die Unternehmen.
• These 2: Die technische Umsetzung ist eine notwendige Bedingung für die datenbasierte Leistun- gen, sie reicht jedoch nicht aus, um eine Kooperations- und Teilbereitschaft bei KMU hinsichtlich ihrer Daten (Daten-Teilbereitschaft) auszulösen. Zahlreiche Stakeholder zögern, Daten zu teilen, vor allem in einem grenzüberschreitenden Kontext, wie z.B. in der Programmregion.
• These 3: KMU benötigen Data Access und Data Trust Strukturen, um mögliche Kooperationspotenziale tatsächlich zu heben. Dies erfordert u.a. gemeinsa- me Standards, ein annäherndes Verständnis vom Wert der Daten, Data-Governance in Kombination mit zu definierenden Trust-Standards, welche die erforderliche formelle und informelle Sicherheit bieten.
Nachfolgend wird ein Überblick über die hieraus hervorgegangenen Ergebnisse gegeben:
Kultur
Die Perspektive der Organisationskultur stellt das Denken und Handeln im Unternehmen und im Ökosystem in den Mittelpunkt. Eine Organisationskultur, welche die Arbeit mit Daten, Data Science Praktiken und vor allem das Teilen von Daten ermöglicht, stellt Daten in den Mittelpunkt des Wertschöpfungsprozesses. Dies erfordert eine generelle Sensibilisierung
für das Thema Daten, durchlässige Grenzen im und zwischen Unternehmen, ebenso wie ein neues Verständnis von Rollen, Strukturen und Prozessen im Unternehmen.
Vertrauen
Das Vertrauen ist im Ökosystem von großer Bedeutung. Das Einbeziehen von internen Stakeholdern und das Starten mit kleineren Pilotprojekten wird vorgeschlagen, um Vertrauen innerhalb der Organisation und mit externen Partnern zu schaffen.
Wert
Als notwendige Voraussetzung wird der Wert der Daten hervorgehoben. Unternehmen sollten den potenziellen Wert der Datenflüsse kennen, bevor sie sich entscheiden, ob sie diese Daten teilen und nutzen möchten. Es wird empfohlen, eine grobe Quanti- fizierung des Wertflusses vorzunehmen oder gegebe- nenfalls eine detailliertere Analyse durchzuführen.
Recht & Governance
Für die Berücksichtigung rechtlicher Rahmenbedingungen gemeinsamer Datennutzung sollten Organisationen zunächst eine interne Data Governance etablieren, um auf neue regulatorische Entwicklungen reagieren zu können. Die Einrichtung von Data-Asset-Management, Data-IP und -Compliance-Ma-nagement und Data-Contract-Management wird hier empfohlen.
Datensicherheit
Im Sicherheitskontext sind Methoden zur Gewährleistung der Datenintegrität, Privatsphäre und Sicherheit entscheidend. Es wird empfohlen, einen kollaborativen Ansatz zur Implementierung von Sicherheitsstandards zu verfolgen und dabei IKT-Experten einzubeziehen. Anfänglich können Best Practices ausreichen, aber längerfristig sollte eine kontinuierliche Sicherheitsrisikobewertung und Ge- schäftsprozessintegration angestrebt werden.
Im vorliegenden Paper wird ein Vergleich zwischen Produktions-und Simulationsdaten präsentiert welches im Rahmen einer größeren Initiative zur Verwendung von Shopfloor Daten bei einem Projektpartner in der Automobilindustrie umgesetzt wurde. In diesem Projekt wurden die Daten die während der Füllbildsimulation entstehen mit den Daten aus der finalen Werkzeugabnahme verglichen um zu analysieren, wie genau diese miteinander über einstimmen. Je besser die Simulation ist, desto schneller kann der gesamte Werkzeugentwicklungsprozess abgewickelt werden, welcher als Kernprozess massives Einsparungspotenzial und damit Wettbewerbsvorteil mit sich bringt.
A step change is needed in the deployment of renewable energy if the triple challenge of ensuring climate change mitigation, energy security, and energy affordability is to be met. Yet, social acceptance of infrastructure projects and policies remains a key concern. While there has been decades of fruitful research on the social acceptance of wind energy and other renewables, much of the extant research is cross-sectional in nature, failing to capture the important dynamic processes that can make or break renewable energy projects. This paper introduces a Special Issue of Energy Policy which focuses on the neglected topic of the dynamics of social acceptance of renewable energy, drawing on contributions made at an international research conference held in St. Gallen (Switzerland) in June 2022. In addition to introducing these papers and drawing out common themes, we also seek to offer some conceptual clarity on the issue of dynamics in social acceptance, taking into account the influence of time, power, and scale in shaping decision-making processes. We conclude by highlighting a number of avenues of potential future research.
In 2021, a prominent Austria dairy producer suffered from an IT attack and was completely paralysed. Without clearly defined mitigation measures in place, major disruptions were caused alongside the whole supply chain, including logistics service providers, governmental food safety bodies, as well as retailers (i.e., supermarkets and convenience stores). In this paper, we ask the question how digitisation and digital transformation impact IT security, especially when considering the complex company ecosystems of food production and food supply chains in Austria. The problem statement stems from a gap in knowledge of key differences in approaches towards IT security, resilience, risk management and especially business interfaces between food suppliers, supermarkets, distributors, logistics and other service providers. In order to answer related research questions, firstly, the authors conduct literature research, and highlight common guidelines and standardisation as well as look at state-based recommendations for critical infrastructure. In a second step, the paper describes a quantitative and qualitative survey with Austrian food companies (producers and retailers) which is described in detail in the paper. A description of recommended measures for the industry, further steps, as well as an outlook conclude the paper.
A model is presented that allows for the calculation of the success probability by which a vanilla Evolution Strategy converges to the global optimizer of the Rastrigin test function. As a result a population size scaling formula will be derived that allows for an estimation of the population size needed to ensure a high convergence security depending on the search space dimensionality.
The role of entrepreneurs and intrapreneurs in the current zeitgeist is to drive innovation, re-shape rigid, established processes in business as well as for consumers. They use new viewpoints to pioneer new (business) models which focus on ‘smartness’ rather than the purely monetary and short-sighted models of yesteryear. Fostering and supporting the culture of this current zeitgeist is a mayor challenge for entre- and intrapreneurial support infrastructures, namely startup centres and innovation hubs of universities and other public institutions as well as innovation centres of private companies. Hereby, support may range from access to funding over provision of resources such as offices or computing hardware to coaching in the development of business ideas and strategic roadmaps for product and service deployment. In this paper, we focus on describing the status-quo of afore- mentioned support infrastructures in Vorarlberg and the Lake Constance region, then extend the scope to existing (international) approaches for aiding founders and inno- vators in the development of smart services. An analysis of success stories of the Vorarlberg startup centre ‘startupstube’ and other initiatives including their compar- ison to international counterparts builds the basis for a methodological framework for (service science) coaching in entre- and intrapreneurial support infrastructures. The paper is concluded by the description of a framework for choosing the right methods and tools to create service value in entre-/intrapreneurship based upon tested, proven know-how and for defining support infrastructure needs based upon pre-defined stakeholder and target groups as well as the (industry) sectors of the innovators.
Through mandatory ESG (environmental, social, governance) reporting large companies must disclose their ESG activities showing how sustainability risks are incorporated in their decision-making and production processes. This disclosure obligation, however, does not apply to small and medium-sized enterprises (SME), creating a gap in the ESG dataset. Banks are therefore required to collect sustainability data of their SME customers independently to ensure complete ESG integration in the risk analysis process for loans. In this paper, we examine ESG risk analysis through a smart science approach laying the focus on possible value outcomes of sustainable smart services for banks as well as for their (SME) customers. The paper describes ESG factors, how services can be derived from them, targeted metrics of ESG and an ESG Service Creation Framework (business ecosystem building, process model, and value creation). The description of an exemplary use case highlighting the necessary ecosystem for service creation as well as the created value concludes the paper.