Summarization: A neural network approach to the manufacturing cell modelling problem is discussed. A recurrent high-order neural network structure (RHONN) is employed to identify cell dynamics, which is supposed to be unknown. The model is constructed in such a way that enables the design of a controller which will force the model and thus the original cell to display the required behaviour. The control input signal is transformed to a continuous one so as to conform with the RHONN assumptions, thus converting the original discrete-event system to a continuous one. A case study demonstrates the approximation capabilities of the proposed architecture.Presented on
The goal of this article is to study the interest of neural networks to simulate the dynamic behavio...
This work discusses three methods that incorporate a priori process knowledge into recurrent neural ...
International audienceDesign a neural network to learn the dynamical behaviour of hyperelastic syste...
Μη διαθέσιμη περίληψηNot available summarizationΠαρουσιάστηκε στο: ASI’96 Conferenc
Summarization: This paper presents a neural network approach in determining the appropriate manufact...
Summarization: In this paper, a control aspect of the non-acyclic FMS scheduling problem is consider...
The pharmaceutical industry has witnessed exponential growth in transforming operations towards cont...
A novel approach, which uses intrinsically dynamic neurons inspired from biological control systems,...
Abstract:- The recent trends in optimisation of sustainability of production processes requires, amo...
In this paper, we show how to extend our previously proposed novel continuous time Recurrent Neural ...
doi:10.1016/j.cie.2008.08.003 Manufacturing cell formation with production data using neural network
Neural networks have been applied within manufacturing domains, in particular electronics industries...
M.Ing.This dissertation discusses the results of a literature survey into the theoretical aspects an...
High-level production planning decisions are required for identifying basic courses of actions that ...
Abstract: The continuous detection and correction of unnatural process behaviours, due to special ca...
The goal of this article is to study the interest of neural networks to simulate the dynamic behavio...
This work discusses three methods that incorporate a priori process knowledge into recurrent neural ...
International audienceDesign a neural network to learn the dynamical behaviour of hyperelastic syste...
Μη διαθέσιμη περίληψηNot available summarizationΠαρουσιάστηκε στο: ASI’96 Conferenc
Summarization: This paper presents a neural network approach in determining the appropriate manufact...
Summarization: In this paper, a control aspect of the non-acyclic FMS scheduling problem is consider...
The pharmaceutical industry has witnessed exponential growth in transforming operations towards cont...
A novel approach, which uses intrinsically dynamic neurons inspired from biological control systems,...
Abstract:- The recent trends in optimisation of sustainability of production processes requires, amo...
In this paper, we show how to extend our previously proposed novel continuous time Recurrent Neural ...
doi:10.1016/j.cie.2008.08.003 Manufacturing cell formation with production data using neural network
Neural networks have been applied within manufacturing domains, in particular electronics industries...
M.Ing.This dissertation discusses the results of a literature survey into the theoretical aspects an...
High-level production planning decisions are required for identifying basic courses of actions that ...
Abstract: The continuous detection and correction of unnatural process behaviours, due to special ca...
The goal of this article is to study the interest of neural networks to simulate the dynamic behavio...
This work discusses three methods that incorporate a priori process knowledge into recurrent neural ...
International audienceDesign a neural network to learn the dynamical behaviour of hyperelastic syste...