The paper compares the performance of two embedded controllers applied in electrohydraulic steering systems – model predictive controller (MPC) and linear-quadratic Gaussian (LQG) controller with Kalman filtering for state estimation. Both controllers are designed on the basis of single input multiple output “black box” model obtained via identification approach. The controllers are implemented into industrial logic controller for mobile applications and their workability is experimentally checked with a laboratory model of a steering system for non-road mobile machinery. The results corresponding to investigation of performance of the closed-loop system are presented
The paper deals with a Model Predictive Control (MPC) algorithm applied to electrical drives. The ma...
Abstract This paper shows a comparison between two linear controllers, a PI-LQR and a Soft-Constrai...
This paper presents the develop and analysis of four control techniques implemented in an embedded s...
Electro-Hydraulic (EH) systems are commonly used in the industry for applications that require high ...
144 p.This thesis addresses the control problems in linear motion system and parallel connected inve...
This paper deals with the implementation of the Linear Quadratic Gaussian (LQG) with an Extended Kal...
The purpose of this article is to evaluate the performances of the three different controllers such...
Model predictive control (MPC), manly based on a direct use of an explicit and identifiable model, h...
The purpose of this article is to evaluate the performances of the three different controllers such ...
Various systems and instrumentation use auto tuning techniques in their operations. For example, aud...
This paper presents a comparison of the performance of different control algorithms in two types of ...
Article history: In this paper, a robust MRAC (model reference adaptive control) scheme is applied t...
This work deals with the predictive control algorithms of the AC drives. The introductory section co...
Electro-hydraulic servo actuator (EHA) system consists of several dynamic parts which are widely use...
The paper deals with a Model Predictive Control (MPC) algorithm applied to electrical drives. The ma...
The paper deals with a Model Predictive Control (MPC) algorithm applied to electrical drives. The ma...
Abstract This paper shows a comparison between two linear controllers, a PI-LQR and a Soft-Constrai...
This paper presents the develop and analysis of four control techniques implemented in an embedded s...
Electro-Hydraulic (EH) systems are commonly used in the industry for applications that require high ...
144 p.This thesis addresses the control problems in linear motion system and parallel connected inve...
This paper deals with the implementation of the Linear Quadratic Gaussian (LQG) with an Extended Kal...
The purpose of this article is to evaluate the performances of the three different controllers such...
Model predictive control (MPC), manly based on a direct use of an explicit and identifiable model, h...
The purpose of this article is to evaluate the performances of the three different controllers such ...
Various systems and instrumentation use auto tuning techniques in their operations. For example, aud...
This paper presents a comparison of the performance of different control algorithms in two types of ...
Article history: In this paper, a robust MRAC (model reference adaptive control) scheme is applied t...
This work deals with the predictive control algorithms of the AC drives. The introductory section co...
Electro-hydraulic servo actuator (EHA) system consists of several dynamic parts which are widely use...
The paper deals with a Model Predictive Control (MPC) algorithm applied to electrical drives. The ma...
The paper deals with a Model Predictive Control (MPC) algorithm applied to electrical drives. The ma...
Abstract This paper shows a comparison between two linear controllers, a PI-LQR and a Soft-Constrai...
This paper presents the develop and analysis of four control techniques implemented in an embedded s...