49 research outputs found
07061 Abstracts Collection -- Autonomous and Adaptive Web Services
From 4.2.2007 to 9.2.2007, the Dagstuhl Seminar 07061 ``Autonomous and Adaptive Web Services\u27\u27 was held in the International Conference and Research Center (IBFI), Schloss Dagstuhl.
During the seminar, several participants presented their current
research, and ongoing work and open problems were discussed. Abstracts of
the presentations given during the seminar as well as abstracts of
seminar results and ideas are put together in this paper. The first section
describes the seminar topics and goals in general.
Links to extended abstracts or full papers are provided, if available
Assessing self-organization and emergence in Evolvable Assembly Systems (EAS)
Dissertação para obtenção do Grau de Mestre em
Engenharia Electrotécnica e de ComputadoresThere is a growing interest from industry in the applications of distributed IT. Currently, most modern plants use distributed controllers either to control production processes, monitor them or both.
Despite the efforts on the last years to improve the implementation of the new manufacturing paradigms, the industry is still mainly using traditional controllers. Now, more than ever, with an economic crisis the costumers are searching for cheap and customized products, which represents a great opportunity for the new paradigms to claim their space in the market.
Most of the research on distributed manufacturing is regarding the control and communication infrastructure. They are key aspects for self-organization and there is a lack of study on the metrics that regulate the self-organization and autonomous response of modern production paradigms.
This thesis presents a probabilistic framework that promotes self-organization on a multiagent system based on a new manufacturing concept, the Evolvable Assembly Systems/Evolvable Production Systems. A methodology is proposed to assess the impact of self-organization on the system behavior, by the application of the probabilistic framework that has the dual purpose of controlling and explaining the system dynamics.
The probabilistic framework shows the likelihood of some resources being allocated
to the production process. This information is constantly updated and exchanged by the
agents that compose the system. The emergent effect of this self-organization dynamic is
an even load balancing across the system without any centralized controller.
The target systems of this work are therefore small systems with small production
batches but with a high variability of production conditions and products.
The agents that compose the system originated in the agent based architecture of the FP7-IDEAS proejct. This work has extended these agents and the outcome has been tested in the IDEAS demonstrators, as the changes have been incorporated in the latest version of the architecture, and in a simulation and more controlled environment were the proposed metric and its influence were assessed
An Industrial Data Analysis and Supervision Framework for Predictive Manufacturing Systems
Due to the advancements in the Information and Communication Technologies field in the
modern interconnected world, the manufacturing industry is becoming a more and more
data rich environment, with large volumes of data being generated on a daily basis, thus
presenting a new set of opportunities to be explored towards improving the efficiency and
quality of production processes.
This can be done through the development of the so called Predictive Manufacturing
Systems. These systems aim to improve manufacturing processes through a combination
of concepts such as Cyber-Physical Production Systems, Machine Learning and real-time
Data Analytics in order to predict future states and events in production. This can be used
in a wide array of applications, including predictive maintenance policies, improving quality
control through the early detection of faults and defects or optimize energy consumption,
to name a few.
Therefore, the research efforts presented in this document focus on the design and development
of a generic framework to guide the implementation of predictive manufacturing
systems through a set of common requirements and components. This approach aims
to enable manufacturers to extract, analyse, interpret and transform their data into actionable
knowledge that can be leveraged into a business advantage. To this end a list
of goals, functional and non-functional requirements is defined for these systems based
on a thorough literature review and empirical knowledge. Subsequently the Intelligent
Data Analysis and Real-Time Supervision (IDARTS) framework is proposed, along with
a detailed description of each of its main components.
Finally, a pilot implementation is presented for each of this components, followed by the
demonstration of the proposed framework in three different scenarios including several use
cases in varied real-world industrial areas. In this way the proposed work aims to provide
a common foundation for the full realization of Predictive Manufacturing Systems
A formal architecture-centric and model driven approach for the engineering of science gateways
From n-Tier client/server applications, to more complex academic Grids, or even the most recent and promising industrial Clouds, the last decade has witnessed significant developments in distributed computing. In spite of this conceptual heterogeneity, Service-Oriented Architecture (SOA) seems to have emerged as the common and underlying abstraction paradigm, even though different standards and technologies are applied across application domains. Suitable access to data and algorithms resident in SOAs via so-called âScience Gatewaysâ has thus become a pressing need in order to realize the benefits of distributed computing infrastructures.In an attempt to inform service-oriented systems design and developments in Grid-based biomedical research infrastructures, the applicant has consolidated work from three complementary experiences in European projects, which have developed and deployed large-scale production quality infrastructures and more recently Science Gateways to support research in breast cancer, pediatric diseases and neurodegenerative pathologies respectively. In analyzing the requirements from these biomedical applications the applicant was able to elaborate on commonly faced issues in Grid development and deployment, while proposing an adapted and extensible engineering framework. Grids implement a number of protocols, applications, standards and attempt to virtualize and harmonize accesses to them. Most Grid implementations therefore are instantiated as superposed software layers, often resulting in a low quality of services and quality of applications, thus making design and development increasingly complex, and rendering classical software engineering approaches unsuitable for Grid developments.The applicant proposes the application of a formal Model-Driven Engineering (MDE) approach to service-oriented developments, making it possible to define Grid-based architectures and Science Gateways that satisfy quality of service requirements, execution platform and distribution criteria at design time. An novel investigation is thus presented on the applicability of the resulting grid MDE (gMDE) to specific examples and conclusions are drawn on the benefits of this approach and its possible application to other areas, in particular that of Distributed Computing Infrastructures (DCI) interoperability, Science Gateways and Cloud architectures developments
Multi-process modelling approach to complex organisation design
Present day markets require manufacturing enterprises (MEs) to be designed and run in a flexibly
structured yet optimised way. However, contemporary approaches to ME engineering do not
enable this requirement to capture ME attributes such that suitable processes, resource systems
and support services can be readily implemented and changed.
This study has developed and prototyped a model-driven environment for the design,
optimisation and control of MEs with an embedded capability to handle various types of change.
This so called Enriched-Process Modelling (E-MPM) Environment can support the engineering
of strategic, tactical and operational processes and comprises two parts: (1) an E-MPM Method
that informs, structures, and guides modelling activities required at different stages of ME
systems design; and (2) an E-MPM Modelling Framework that specifies interconnections between
modelling concepts necessary for the design and run time operation of ME systems. [Continues.
Tangible user interfaces : past, present and future directions
In the last two decades, Tangible User Interfaces (TUIs) have emerged as a new interface type that interlinks the digital and physical worlds. Drawing upon users' knowledge and skills of interaction with the real non-digital world, TUIs show a potential to enhance the way in which people interact with and leverage digital information. However, TUI research is still in its infancy and extensive research is required in or- der to fully understand the implications of tangible user interfaces, to develop technologies that further bridge the digital and the physical, and to guide TUI design with empirical knowledge. This paper examines the existing body of work on Tangible User In- terfaces. We start by sketching the history of tangible user interfaces, examining the intellectual origins of this ïŹeld. We then present TUIs in a broader context, survey application domains, and review frame- works and taxonomies. We also discuss conceptual foundations of TUIs including perspectives from cognitive sciences, phycology, and philoso- phy. Methods and technologies for designing, building, and evaluating TUIs are also addressed. Finally, we discuss the strengths and limita- tions of TUIs and chart directions for future research