The main goal of this paper is to predict the chamber pressures in hydraulic cylinder of a servo-valve controlled hydraulic system accurately using advanced modeling tools like artificial neural networks. After showing that the black-box modeling approaches are not sufficient for long-term prediction of pressures, a structured neural network model is proposed to capture the pressure dynamics of this inherently non-linear system. The paper shows that the proposed network model could be easily trained to predict the pressure dynamics of an experimental hydraulic test setup provided that the training session is initiated with the weights of the developed model
In a myriad of engineering situations, we often hope to establish a model which can acquire load con...
The ANN model trained on experimental datasets is developed, especially based on the characteristics...
Thesis (M.Ing.)--North-West University, Potchefstroom Campus, 2004.A reliable and practical method o...
This paper presents a study to predict the pressures in the cylinder chambers of a variable-speed pu...
The traditional method of modeling dynamics of a nonlinear hydraulic system is to develop mathemati...
Many control schemes, simple or sophisticated, utilize high performance electro-hydraulic components...
"The definitive peer-reviewed and edited version of this article is published in Journal of Hydroinf...
In this work neural network models are used to reconstruct in-cylinder pressure from a vibration sig...
This work will attempt to construct a fast and robust pressure estimator, which has inputs of piston...
In this study, the hydromechanical and general efficiencies have been examined experimentally and th...
Part 11: Engineering Applications of AI and Artificial Neural NetworksInternational audienceIn a wet...
The behavior of a multivariable predictive control scheme based on neural networks applied to a mode...
An effective way for the testing of a large number of systems is using single and multi-axis shaking...
Computation of steady-state flow rates and the pressure distribution in a hydraulic network of give...
In this paper, an analysis of volumetric efficiency of hydrostatic pumps in a variety conditions is ...
In a myriad of engineering situations, we often hope to establish a model which can acquire load con...
The ANN model trained on experimental datasets is developed, especially based on the characteristics...
Thesis (M.Ing.)--North-West University, Potchefstroom Campus, 2004.A reliable and practical method o...
This paper presents a study to predict the pressures in the cylinder chambers of a variable-speed pu...
The traditional method of modeling dynamics of a nonlinear hydraulic system is to develop mathemati...
Many control schemes, simple or sophisticated, utilize high performance electro-hydraulic components...
"The definitive peer-reviewed and edited version of this article is published in Journal of Hydroinf...
In this work neural network models are used to reconstruct in-cylinder pressure from a vibration sig...
This work will attempt to construct a fast and robust pressure estimator, which has inputs of piston...
In this study, the hydromechanical and general efficiencies have been examined experimentally and th...
Part 11: Engineering Applications of AI and Artificial Neural NetworksInternational audienceIn a wet...
The behavior of a multivariable predictive control scheme based on neural networks applied to a mode...
An effective way for the testing of a large number of systems is using single and multi-axis shaking...
Computation of steady-state flow rates and the pressure distribution in a hydraulic network of give...
In this paper, an analysis of volumetric efficiency of hydrostatic pumps in a variety conditions is ...
In a myriad of engineering situations, we often hope to establish a model which can acquire load con...
The ANN model trained on experimental datasets is developed, especially based on the characteristics...
Thesis (M.Ing.)--North-West University, Potchefstroom Campus, 2004.A reliable and practical method o...