
Simul8 Corporation
Simul8 Corporation
3 Projects, page 1 of 1
assignment_turned_in Project2006 - 2009Partners:University of Warwick, Simul8 Corporation, University of Warwick, SIM8University of Warwick,Simul8 Corporation,University of Warwick,SIM8Funder: UK Research and Innovation Project Code: EP/D033640/1Funder Contribution: 158,255 GBPSimulation models are used in many organisations for planning and better managing organisational systems e.g. manufacturing plant or service operations. A key part of the process of developing and using a simulation model is to experiment with the model. In order to obtain accurate measures of a model's performance care must be taken to obtain sufficient good data from the model. Particular issues are removing initialisation bias, running the model for long enough and performing sufficient replications (runs with different streams of random numbers). Decisions regarding these issues require statistical skills which many simulation modellers do not possess. As a result, many simulation models may be used poorly and incorrect conclusions reached. This research aims to develop an 'analyser' that will automatically analyse the output from a simulation model and advise the simulation modeller on an appropriate warm-up period, run-length and number of replications. In the first stage of the research existing methods for analysing simulation output will be tested to identify candidate methods for inclusion in the analyser. Candidate methods will then be adapted where necessary to make them suitable for automation. In the final stage of the research a prototype analyser will be developed and tested. The methods and analyser will be tested on example data, using real simulation models and with simulation users.
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For further information contact us at helpdesk@openaire.euassignment_turned_in Project2021 - 2025Partners:Babcock International Group Plc, Babcock International Group (United Kingdom), ubisense, Babcock International Group Plc (UK), University of Edinburgh +3 partnersBabcock International Group Plc,Babcock International Group (United Kingdom),ubisense,Babcock International Group Plc (UK),University of Edinburgh,SIM8,Ubisense,Simul8 CorporationFunder: UK Research and Innovation Project Code: EP/V051113/1Funder Contribution: 1,146,220 GBPThe ambition of this project is to use a mix of factory activity data to optimise industrial operations, and to identify opportunities and deliver improvements in efficiency, productivity and sustainability. The rapid advance of digital sensing technologies, is making the real time recording of activities in a manufacturing environment both practical and affordable. However, the availability of diverse, real time data about movement and activity does not automatically help engineers manage the complex, dynamic environments typical of modern industrial operations. To do this they need tools that support their interpretation of constantly changing data in ways that enhance productivity and sustainability. In other words, the research challenge posed by digital manufacturing is not the capture of data, but rather the lack of computational methods to analyse large flows of diverse (i.e. multimodal) sensor data and recognise the patterns that allow engineers to assess the current state of the shop floor, understand the impact of past events and predict the consequences of incidents on a range measures. Motivated by this need, the following proposal details a program of work to investigate if the forms of probabilistic networks that have been employed to generate computational models from location tracking data in other contexts (e.g. vehicles movements in traffic models and the daily routines of individuals in domestic environments) can be extended to work with multiple forms of industrial activity data recorded on a factory floor. Such a model would allow diverse signals of manufacturing activity (e.g. material transport, staff movement, vibration, electrical current and air quality etc.) to be used to infer the behaviour of an industrial workplace and generate quantitative measures that support decisions which impact on a sites' production and sustainability performance.
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For further information contact us at helpdesk@openaire.euassignment_turned_in Project2014 - 2023Partners:Intel Corporation (UK) Ltd, Imperial Cancer Research Fund, University of Oxford, Rolls-Royce (United Kingdom), Smith Institute +106 partnersIntel Corporation (UK) Ltd,Imperial Cancer Research Fund,University of Oxford,Rolls-Royce (United Kingdom),Smith Institute,University of Rostock,Maritime Research Inst Netherlands MARIN,BT Group (United Kingdom),Vanderbilt University,CIC nanoGUNE,University of Southampton,Intel UK,Boeing (United Kingdom),iVec,EADS Airbus (to be replaced),STFC - Laboratories,Simul8 Corporation,Numerical Algorithms Group (United Kingdom),Nvidia (United States),EADS UK Ltd,McLaren Honda (United Kingdom),Simula Research Laboratory,Lloyd's Register Foundation,The Welding Institute,MICROSOFT RESEARCH LIMITED,nVIDIA,HGST,BAE Systems (UK),Microsoft Research (United Kingdom),Hitachi Global Storage Technologies (United States),University of Southampton,Energy Exemplar Pty Ltd,Science and Technology Facilities Council,BAE Systems (Sweden),Lloyds Banking Group (United Kingdom),RNLI,Boeing United Kingdom Limited,General Electric (Germany),Qinetiq (United Kingdom),Royal National Lifeboat Institution,BT Innovate,Rolls-Royce (United Kingdom),Seagate (United States),University of California, Berkeley,Airbus (United Kingdom),Seagate (United Kingdom),CIC nanoGUNE Consolider,Procter & Gamble (United Kingdom),BT Innovate,Helen Wills Neuroscience Institute,Numerical Algorithms Group Ltd (NAG) UK,National Grid (United Kingdom),iSys,NATS Ltd,Cancer Research UK,Kitware (United States),Agency for Science Technology-A Star,JGU,Microsoft Research,General Electric,Agency for Science, Technology and Research,McLaren Honda (United Kingdom),Sandia National Laboratories California,NAG,IBM UNITED KINGDOM LIMITED,NIST (Nat. Inst of Standards and Technol,Associated British Ports (United Kingdom),HONEYWELL INTERNATIONAL INC,Lloyd's Register of Shipping (Naval),National Grid PLC,BAE Systems (United Kingdom),Seagate Technology,Software Sustainability Institute,Kitware Inc.,ABP Marine Env Research Ltd (AMPmer),ABP Marine Env Research Ltd (AMPmer),Software Carpentry,Software Carpentry,National Institute of Standards and Technology,Airbus Group Limited (UK),National Air Traffic Services (United Kingdom),Qioptiq Ltd,Smith Institute,EADS Airbus,Microsoft (United States),Chemring Technology Solutions (United Kingdom),Rolls-Royce Plc (UK),Honeywell (United States),MBDA (United Kingdom),STFC - LABORATORIES,Helen Wills Neuroscience Institute,RMRL,iSys,CANCER RESEARCH UK,SIM8,MBDA UK Ltd,XYRATEX,IBM (United Kingdom),Procter and Gamble UK,Simula Research Laboratory,Vanderbilt University,Software Sustainability Institute,The Welding Institute,Lloyds Banking Group,University of Rostock,Maritime Research Institute Netherlands,[no title available],Sandia National Laboratories,iVec,Procter and Gamble UK (to be replaced),IBM (United Kingdom)Funder: UK Research and Innovation Project Code: EP/L015382/1Funder Contribution: 3,992,780 GBPThe achievements of modern research and their rapid progress from theory to application are increasingly underpinned by computation. Computational approaches are often hailed as a new third pillar of science - in addition to empirical and theoretical work. While its breadth makes computation almost as ubiquitous as mathematics as a key tool in science and engineering, it is a much younger discipline and stands to benefit enormously from building increased capacity and increased efforts towards integration, standardization, and professionalism. The development of new ideas and techniques in computing is extremely rapid, the progress enabled by these breakthroughs is enormous, and their impact on society is substantial: modern technologies ranging from the Airbus 380, MRI scans and smartphone CPUs could not have been developed without computer simulation; progress on major scientific questions from climate change to astronomy are driven by the results from computational models; major investment decisions are underwritten by computational modelling. Furthermore, simulation modelling is emerging as a key tool within domains experiencing a data revolution such as biomedicine and finance. This progress has been enabled through the rapid increase of computational power, and was based in the past on an increased rate at which computing instructions in the processor can be carried out. However, this clock rate cannot be increased much further and in recent computational architectures (such as GPU, Intel Phi) additional computational power is now provided through having (of the order of) hundreds of computational cores in the same unit. This opens up potential for new order of magnitude performance improvements but requires additional specialist training in parallel programming and computational methods to be able to tap into and exploit this opportunity. Computational advances are enabled by new hardware, and innovations in algorithms, numerical methods and simulation techniques, and application of best practice in scientific computational modelling. The most effective progress and highest impact can be obtained by combining, linking and simultaneously exploiting step changes in hardware, software, methods and skills. However, good computational science training is scarce, especially at post-graduate level. The Centre for Doctoral Training in Next Generation Computational Modelling will develop 55+ graduate students to address this skills gap. Trained as future leaders in Computational Modelling, they will form the core of a community of computational modellers crossing disciplinary boundaries, constantly working to transfer the latest computational advances to related fields. By tackling cutting-edge research from fields such as Computational Engineering, Advanced Materials, Autonomous Systems and Health, whilst communicating their advances and working together with a world-leading group of academic and industrial computational modellers, the students will be perfectly equipped to drive advanced computing over the coming decades.
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