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Projects


Projects: Projects for Investigator
Reference Number EP/F041004/1
Title Nonlinear Robust Model Predictive Control
Status Completed
Energy Categories Renewable Energy Sources(Solar Energy, Photovoltaics) 10%;
Not Energy Related 90%;
Research Types Basic and strategic applied research 100%
Science and Technology Fields ENGINEERING AND TECHNOLOGY (Electrical and Electronic Engineering) 100%
UKERC Cross Cutting Characterisation Not Cross-cutting 100%
Principal Investigator Professor RB Vinter
No email address given
Department of Electrical and Electronic Engineering
Imperial College London
Award Type Standard
Funding Source EPSRC
Start Date 15 September 2008
End Date 14 September 2011
Duration 36 months
Total Grant Value £359,718
Industrial Sectors No relevance to Underpinning Sectors
Region London
Programme NC : Engineering
 
Investigators Principal Investigator Professor RB Vinter , Department of Electrical and Electronic Engineering, Imperial College London (99.998%)
  Other Investigator Dr EC Kerrigan , Department of Electrical and Electronic Engineering, Imperial College London (0.001%)
Professor D Mayne , Department of Electrical and Electronic Engineering, Imperial College London (0.001%)
Web Site
Objectives
Abstract Relevance:Model Predictive Control (MPC) is a generic controller design methodology, involving on-line optimisation. MPC has already achieved a greater impact on industrial practice than any other modern control approach, because of its versatility and constraint handling capability. We can expect in the future to see increasingly sophisticated applications of MPC, as computer technology advances extends the scope for intensive on-line computations. This project will broaden the applicabilityof the MPC methodology, by providing new control algorithms to take better account of plant nonlinearities and modelling errors.Background:In many control engineering applications domains, chemical processing for example, the underlying plant dynamics are typically highly complex and the models used for controller design provide at best good approximations to the system response for a limited range of inputs and initial conditions. This is why robustness (the requirement that performance is not significantly degraded by model mismatch and the presence of unknown input signals or 'disturbances') is such a major issue in control systems design. Traditional MPC methodologies do not aim explicitly to achieve robustness. An important development in MPC design is the emergence of robust MPC algorithms. Prominent among the proposed approaches to robust MPC design are tube-based methods, developed for plants with linear models. Here, additional linear feedback (a 'robustifyinginner feedback loop') is introduced to counter the effects of uncertainty and to confine the state trajectory within a narrow tube about the 'stable' trajectory that would be followed under a traditional MPC strategy alone, if there were no uncertainty.Proposed Research:The aim of this project is to design robust MPC algorithms based on fully non-linear plant models. The main idea behind the proposed design methodology is the introduction of an additional optimization stage intoeach controller update step, to replace the robustifying inner feedback loop of the linear tube-based method. A key advantage of this approach is that the on-line computational burden of implementing the new robust MPC algorithms is of the same order of magnitude as that required for traditional 'non-robust' MPC algorithms. (The solution to two similar optimization problems needs to be computed at each step, not one). There is therefore the potential to apply the algorithms to high dimensional plants (involving 20 or more state variables, say).The new algorithms will be provided with an analytical foundation, which will yield precise conditions for closed loop stability, and also assist in systematic selection of algorithm parameters governing tightness of tracking, transients and other aspects of closed loop response.A case study involving the control of a solar collector plant will be undertaken. This will permit the assessment, through simulations, of the new control design techniques in challenging, high-dimensional scenarios, where approximation of the plant model by a linear model, or a family of linear models ('gain scheduling'), is inadequate, and where it hard constraints of state and control variables need to be observed
Publications (none)
Final Report (none)
Added to Database 17/03/08