Cookies Policy
The website need some cookies and similar means to function. If you permit us, we will use those means to collect data on your visits for aggregated statistics to improve our service. Find out More
Accept Reject
  • Menu
Publications

Publications by CRAS

2019

Proceedings of the 1st International Workshop on Data-Driven Personalisation of Television co-located with the ACM International Conference on Interactive Experiences for Television and Online Video, DataTV@TVX 2019, Manchester, UK, June 5, 2019

Authors
Foss, JD; Nixon, LJB; Shirley, B; Philipp, B; Malheiro, B; Mezaris, V; Kepplinger, S; Ulisses, A;

Publication
DataTV@TVX

Abstract

2019

Reply to AMT-2019-378-AC3-supplement

Authors
Barbosa, S;

Publication

Abstract

2019

Interactive comment on “Inter-comparison study of atmospheric 222 Rn and 222 Rn progeny monitors” by Grossi et al

Authors
Barbosa, S;

Publication

Abstract

2019

Shoreline and Coastal Terrain Mapping

Authors
Pérez-Alberti A.; Pires A.; Chaminé H.I.;

Publication
Encyclopedia of Earth Sciences Series

Abstract

2019

A Dynamic Mode Decomposition Approach With Hankel Blocks to Forecast Multi-Channel Temporal Series

Authors
Vasconcelos, E; dos Santos, PL;

Publication
IEEE CONTROL SYSTEMS LETTERS

Abstract
Forecasting is a task with many concerns, such as the size, quality, and behavior of the data, the computing power to do it, etc. This letter proposes the dynamic mode decomposition (DMD) as a tool to predict the annual air temperature and the sales of a stores' chain. The DMD decomposes the data into its principal modes, which are estimated from a training data set. It is assumed that the data is generated by a linear time-invariant high order autonomous system. These modes are useful to find the way the system behaves and to predict its future states, without using all the available data, even in a noisy environment. The Hankel block allows the estimation of hidden oscillatory modes, by increasing the order of the underlying dynamical system. The proposed method was tested in a case study consisting of the long term prediction of the weekly sales of a chain of stores. The performance assessment was based on the best fit percentage index. The proposed method is compared with three neural networkbased predictors.

2019

A Kernel Principal Component Regressor for LPV System Identification

Authors
dos Santos, PL; Perdicoulis, TPA;

Publication
IFAC PAPERSONLINE

Abstract
This article describes a Kernel Principal Component Regressor (KPCR) to identify Auto Regressive eXogenous (ARX) Linear Parmeter Varying (LPV) models. The new method differs from the Least Squares Support Vector Machines (LS-SVM) algorithm in the regularisation of the Least Squares (LS) problem, since the KPCR only keeps the principal components of the Gram matrix while LS-SVM performs the inversion of the same matrix after adding a regularisation factor. Also, in this new approach, the LS problem is formulated in the primal space but it ends up being solved in the dual space overcoming the fact that the regressors are unknown. The method is assessed and compared to the LS-SVM approach through 2 Monte Carlo (MC) experiments. Every experiment consists of 100 runs of a simulated example, and a different noise level is used in each experiment,with Signal to Noise Ratios of 20db and 10db, respectively. The obtained results are twofold, first the performance of the new method is comparable to the LS-SVM, for both noise levels, although the required calculations are much faster for the KPCR. Second, this new method reduces the dimension of the primal space and may convey a way of knowing the number of basis functions required in the Kernel. Furthermore, having a structure very similar to LS-SVM makes it possible to use this method in other types of models, e.g. the LPV state-space model identification.

  • 67
  • 168