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Adaptive Supply Networks

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Operations Research

CMIS staff with OR interests

See here for office locations.

Researcher Location Phone
Simon Dunstall Melbourne 03 9545 8022
Andreas Ernst Melbourne 03 9545 8044
Rodolfo Garcia-Flores Melbourne 03 9545 8059
Olena Gavriliouk Melbourne 03 9545 8473
Mark Horn Sydney 02 9325 3236
Thaung Lwin Melbourne 03 9545 8016
Leorey Marquez Melbourne 03 9545 8258
Melissa Winnel Melbourne 03 9545 8071
Bowie Owens Melbourne 03 9545 8055
Geoff Robinson Melbourne 03 9545 8014
David Sier Melbourne 03 9545 8043
Gaurav Singh Melbourne 03 9545 8467
Stuart Woodman Melbourne 03 9545 8259

Staff Profiles

Dr Simon Dunstall has been involved in CMIS R&D addressing staff rostering, itinerary planning, machine scheduling and supply networks since joining the CMIS OR Group in April 2000. He currently leads the CMIS Adaptive Supply Networks stream.
Dr Andreas Ernst is the research leader of the Modelling, Optimisation and Simulation group that includes 12 researchers from the areas of Operations Research, Applied Statistics and Computer Science, working together to develop solutions for mining, manufacturing and service industries to improve efficiency and effectiveness of Australian companies. He has a PhD from The University of Western Australia in the area of network optimisation. He has made significant research contributions to the field of hub location.
Bowie Owens is our computer science specialist. He has completed an Honours degree in Computer Science at Monash University. His studies in computer science centred on computer programming (in all major paradigms), computing theory, software engineering, and artificial intelligence. His main interests are in programming (especially functional and logic), and artificial intelligence. Bowie's main focus for the past two years has been on the implementation of statistical methods, as part of the Signal Analysis project within the Light Metals flagship.
David Sier is a principal scientist at CSIRO Mathematics, Informatics and Statistics . He has 16 years experience in industrial optimisation and simulation and has carried out consulting work for a wide range of companies and government organisations. His clients have included Southern Health, ACT Health, South Australian Ambulance Service, Southcorp, Dalrymple Bay Coal Terminal, Ricegrowers Co-operative Ltd, Fuji Xerox, Roads and Traffic Authority of NSW, Cathay Pacific, The Preston Group, Holden Engine Company, Britz Australia, Dampier Salt, Murray Goulburn, BlueScope Steel, Tomago Aluminium ,Comlabs systems, Mincom, Kumba Iron Ore SA, Hunter Valley Coal Chain Logistics Team, Port Waratah Coal Services, and Gladstone Ports Corporation. His current areas of consulting and research are in supply chain optimisation with a focus on collaborative and adaptive strategies for improving efficiency in supply chains with multiple, and often competing, players.
Gaurav Singh is a research scientist who joined the CMIS Adaptive Supply Networks team in 2004. He has a BA (Honors) in Mathematics from Delhi University, India, an MA in Mathematics from Indore University, India, an MSc in Operations Research from University of Technology Sydney (UTS), Australia and a PhD in Operations Research from UTS. He also holds a Graduate certificate in higher education teaching and learning from UTS. Before joining CSIRO, Gaurav worked as a lecturer in Operations Research/Mathematics for several years at the University of Western Sydney and UTS. His research interests lie mainly in the design, development, and analysis of algorithms for machine scheduling problems, combinatorial optimization problems, rostering and heuristics. He has published in Australian and International Journals as well as in Conference Proceedings.
  Dr. Leorey Marquez is a Senior Research Scientist with CSIRO. He has specialist expertise in mathematical modelling and land-use transport environment modelling and has developed numbers of software packages for such analysis, for example TOPAZ2000, LAIRDW and STEAM (Spatial and Transport Emissions Assessment Module). Prior to joining the CSIRO in 1993, he lectured at the Department of Decision Sciences at the University of Hawaii for 6 years. He received degrees in Statistics and Operations Research from the University of the Philippines and a Ph.D. in Communications and Information Science from the University of Hawaii. His areas of research include land use-transport-environment modelling, network optimisation, expert systems, and object-oriented analysis and design. He was responsible for modelling traffic congestion and population exposure to pollution in the BTRE-commissioned Study on GHG Abatement Measures for Urban Freight and also in the 1997 National Inquiry in Urban Air Quality.
  Melissa Winnel is a System Engineer at CSIRO Mathematics, Informatics and Statistics . Her primary experience has been in System Dynamic Modelling for the Critical Infrastructure Protection Modelling and Analysis (CIPMA) Program. CIPMA is a key component of Australian Government efforts to enhance the protection of our critical infrastructure and to strengthen the resilience of our economy and society. CIPMA examines the relationships and dependencies between critical infrastructure systems and shows how a failure in one sector can greatly affect the operations of other critical infrastructure sectors.
Mark Horn has research interests in the analysis of urban and environmental systems, advanced public transport systems, design of decision-support systems, and optimisation and modelling procedures.

 

Page last updated October 29, 2009 04:06 PM
OR sub-site maintained by Simon Dunstall

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