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Author

Katarina Kavsˇek-Biasizzo

Bio: Katarina Kavsˇek-Biasizzo is an academic researcher from University of Ljubljana. The author has contributed to research in topics: Process control & Nonlinear system. The author has an hindex of 1, co-authored 1 publications receiving 62 citations.

Papers
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Journal ArticleDOI
TL;DR: This paper proposes a new approach to predictive control of highly nonlinear processes based on a fuzzy model of the Takagi-Sugeno form and a modified linear DMC algorithm is used.

65 citations


Cited by
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Proceedings ArticleDOI
16 Sep 2004
TL;DR: It is illustrated possible application of Gaussian process models within model-based predictive control, where optimization of control signal takes the variance information into account, on control of pH process benchmark.
Abstract: Gaussian process models provide a probabilistic non-parametric modelling approach for black-box identification of non-linear dynamic systems. The Gaussian processes can highlight areas of the input space where prediction quality is poor, due to the lack of data or its complexity, by indicating the higher variance around the predicted mean. Gaussian process models contain noticeably less coefficients to be optimized. This paper illustrates possible application of Gaussian process models within model-based predictive control. The extra information provided within Gaussian process model is used in predictive control, where optimization of control signal takes the variance information into account. The predictive control principle is demonstrated on control of pH process benchmark.

284 citations

Journal ArticleDOI
TL;DR: This paper addresses the optimization in fuzzy model predictive control with four different methods for the construction of the optimization problem, making difference between the cases when a single linear model or a set of linear models are used.
Abstract: This paper addresses the optimization in fuzzy model predictive control. When the prediction model is a nonlinear fuzzy model, nonconvex, time-consuming optimization is necessary, with no guarantee of finding an optimal solution. A possible way around this problem is to linearize the fuzzy model at the current operating point and use linear predictive control (i.e., quadratic programming). For long-range predictive control, however, the influence of the linearization error may significantly deteriorate the performance. In our approach, this is remedied by linearizing the fuzzy model along the predicted input and output trajectories. One can further improve the model prediction by iteratively applying the optimized control sequence to the fuzzy model and linearizing along the so obtained simulated trajectories. Four different methods for the construction of the optimization problem are proposed, making difference between the cases when a single linear model or a set of linear models are used. By choosing an appropriate method, the user can achieve a desired tradeoff between the control performance and the computational load. The proposed techniques have been tested and evaluated using two simulated industrial benchmarks: pH control in a continuous stirred tank reactor and a high-purity distillation column.

131 citations

Journal ArticleDOI
TL;DR: The feasibility of application and realisation of a control algorithm based on a Gaussian process model for predictive control in industrial practice is demonstrated via the control of a gas–liquid separation plant.

129 citations

Proceedings ArticleDOI
03 Dec 2003
TL;DR: Gaussian process models provide a probabilistic non-parametric modelling approach for black-box identification of nonlinear dynamic systems that offers more insight in variance of obtained model response, as well as fewer parameters to determine than other models.
Abstract: This paper describes model-based predictive control based on Gaussian processes. Gaussian process models provide a probabilistic non-parametric modelling approach for black-box identification of nonlinear dynamic systems. It offers more insight in variance of obtained model response, as well as fewer parameters to determine than other models. The Gaussian processes can highlight areas of the input space where prediction quality is poor, due to the lack of data or its complexity, by indicating the higher variance around the predicted mean. This property is used in predictive control, where optimisation of control signal takes the variance information into account. The predictive control principle is demonstrated on a simulated example of nonlinear system.

79 citations

Journal ArticleDOI
TL;DR: A new approach for constrained multivariable predictive control based on the use of a recurrent neural network as a non-linear prediction model of the plant under control is proposed, and it is a representation of the system in the state-space form.

77 citations