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Publicações

Publicações por Paulo Santos

2022

Editorial: Linear Parameter Varying Systems Modeling, Identification and Control

Autores
Lopes Dos Santos, P; Azevedo Perdicoulis, T; Ramos, JA; Fontes, FACC; Sename, O;

Publicação
Frontiers in Control Engineering

Abstract

2022

Energy loss optimisation of a robotic arm

Autores
Salgado, PA; Perdicoulis, TPA; dos Santos, PL;

Publicação
2022 IEEE 22ND INTERNATIONAL SYMPOSIUM ON COMPUTATIONAL INTELLIGENCE AND INFORMATICS AND 8TH IEEE INTERNATIONAL CONFERENCE ON RECENT ACHIEVEMENTS IN MECHATRONICS, AUTOMATION, COMPUTER SCIENCE AND ROBOTICS (CINTI-MACRO)

Abstract
The use of robots is widely spread across the industry. It is paramount that the robot end-effector tracks a pre-defined trajectory with the lowest energy loss. To contribute to the solution of this problem, the robot trajectory is defined using a tracking parameter which is optimised using the Matlab (R) fminunc function and the Particle Swam Optimisation algorithm. This approach was tested for a case study with the energy loss being reduced in approximately 96.15%.

2011

Indirect continuous-time LPV system identification through a downsampled subspace approach

Autores
Santos, PL; Perdicoúlis, TPA; Ramos, JA; Carvalho, JLM;

Publicação
Linear Parameter-varying System Identification: New Developments And Trends

Abstract
The successive approximation Linear Parameter Varying systems subspace identification algorithm for discrete-time systems is based on a convergent sequence of linear time invariant deterministic-stochastic state-space approximations. In this chapter, this method is modified to cope with continuous-time LPV state-space models. To do this, the LPV system is discretised, the discrete-time model is identified by the successive approximations algorithm and then converted to a continuous-time model. Since affine dependence is preserved only for fast sampling, a subspace downsampling approach is used to estimate the linear time invariant deterministic-stochastic state-space approximations. A second order simulation example, with complex poles, illustrates the effectiveness of the new algorithm. © 2012 by World Scientific Publishing Co. Pte. Ltd.

2011

FRONT MATTER

Autores
Santos, PLd; Perdicoúlis, TPA; Novara, C; Ramos, JA; Rivera, DE;

Publicação
Linear Parameter-Varying System Identification - New Developments and Trends

Abstract

2011

Subspace System Identification of Separable-in-Denominator 2-D Stochastic Systems

Autores
Ramos, JA; Lopes dos Santos, PJL;

Publicação
2011 50TH IEEE CONFERENCE ON DECISION AND CONTROL AND EUROPEAN CONTROL CONFERENCE (CDC-ECC)

Abstract
The fitting of a causal dynamic model to an image is a fundamental problem in image processing, pattern recognition, and computer vision. There are numerous other applications that require a causal dynamic model, such as in scene analysis, machined parts inspection, and biometric analysis, to name only a few. There are many types of causal dynamic models that have been proposed in the literature, among which the autoregressive moving average (ARMA) and state-space models are the most widely known. In this paper we introduce a 2-D stochastic state-space system identification algorithm for obtaining stochastic 2-D, causal, recursive, and separable-in-denominator (CRSD) models in the Roesser state-space form. The algorithm is tested with a real image and the reconstructed image is shown to be almost indistinguishable to the true image.

2011

A Subspace Algorithm for Identifying 2-D CRSD Systems with Deterministic Inputs

Autores
Ramos, JEA; Alenany, A; Shang, H; Lopes dos Santos, PJL;

Publicação
2011 50TH IEEE CONFERENCE ON DECISION AND CONTROL AND EUROPEAN CONTROL CONFERENCE (CDC-ECC)

Abstract
In this paper, the class of subspace system identification algorithms is used to derive a new identification algorithm for 2-D causal, recursive, and separable-in-denominator (CRSD) state space systems in the Roesser model form. The algorithm take a given deterministic input-output pair of 2-D signals and computes the system order (n) and system parameter matrices {A, B, C, D}. Since the CRSD model can be treated as two 1-D systems, the proposed algorithm first separates the vertical component from the state and output equations and then formulates an equivalent set of 1-D horizontal subspace equations. The solution to the horizontal subspace identification subproblem contains all the information necessary to compute the system order and parameter matrices, including those from the vertical subsystem.

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