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Details of Grant 

EPSRC Reference: EP/D506743/1
Title: Application of global sensitivity analysis for complexity reduction, parameter estimation and time series forecasting
Principal Investigator: Shah, Professor N
Other Investigators:
Pantelides, Professor CC
Researcher Co-Investigators:
Dr S Kucherenko
Project Partners:
ICI
Department: Chemical Engineering
Organisation: Imperial College London
Scheme: Standard Research (Pre-FEC)
Starts: 01 February 2006 Ends: 31 October 2009 Value (£): 425,008
EPSRC Research Topic Classifications:
Design of Process systems Manufact. Enterprise Ops& Mgmt
Mathematical Aspects of OR
EPSRC Industrial Sector Classifications:
Chemicals
Related Grants:
Panel History:
Panel DatePanel NameOutcome
21 Sep 2005 Engineering Socio-Technical Systems Deferred
Summary on Grant Application Form
Modern processes are so complex that physical experimentation is too time-consuming, too expensive or even impossible. Mathematical or computational models are developed to approximate such processes. Complex models are finding many new and important applications in a variety of engineering spheres, including biosystems, process systems and supply chains. Good modelling practice requires sensitivity analysis (SA) to ensure the model quality by analysing the model structure, selecting the best type of model and effectively identifying the important model parameters. The Sobol' method of global sensitivity indices is superior to other SA methods. It can be applied to any type of models for quantifying and reducing problem complexity without sacrificing accuracy and it is not dependent on a nominal point or differentiability of the functions. However, it has been applied only to low scale models because of the computational limitations of the existing technique. We propose a generalization of the Sobol' method based on efficient high dimensional Quasi Monte Carlo sampling and the advanced high dimensional model representation technique. It will enable to analyse and solve practical large scale problems. By combining the generalized Sobol' method and our novel global optimisation method we will develop a new technique for parameter estimation with improved accuracy. Furthermore, since accurate forecasting is critical in economics, engineering, revenue and supply chain management, we propose to develop a novel approach for identifying the most efficient time series forecasting models for different data sets.
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Organisation Website: http://www.imperial.ac.uk