The growth in intelligent control is among other fuelled by the realization that nonlinear control theory is not yet able to provide practical solutions to present day control challenges. Overdesign is therefore often used as a means to avoid highly nonlinear regions of operation, despite the risk of significant economic penalties both in terms of capital and operating costs. The Symbiotic Adaptive Neuro-Evolution (SANE) algorithm combines the design and controller development functions into a single coherent step through the use of evolutionary reinforcement learning. SANE locates the optimum operating steady state and develops a neurocontroller based on maximising economic considerations. In this paper, the use of SANE to optimize and con...
An evolutionary algorithm for the development of neural networks with arbitrary connectivity is pres...
We would like the behavior of the artificial agents that we construct to be as well-adapted to their...
Abstract. A Layered Evolution (LE) paradigm based method for the generation of a neuron- controller ...
The time cost of first-principles dynamic modelling and the complexity of nonlinear control strategi...
A ball mill grinding circuit is a nonlinear system characterised by significant controller interacti...
We propose a method for evolving neural network controllers robust with respect to variations of the...
Artificial neural networks are means which are, among several other approaches, effectively usable f...
We propose a method for evolving neural network controllers robust with respect to variations of the...
The presented evolutionary algorithm is especially designed to generate recurrent neural networks wi...
textMany complex control problems require sophisticated solutions that are not amenable to traditio...
In this paper authors present the results of a research that had a purpose to develop a method of co...
In this paper, design of a nonlinear controller for a Bioreactor Benchmark Problem is presented. The...
This paper develops novel neural networks suitable for direct embedment within a feedback loop. The ...
An evolutionary algorithm for the development of neural networks with arbitrary connectivity is pres...
The control and optimization of biotechnical processes is a complex task of industrial relevance, du...
An evolutionary algorithm for the development of neural networks with arbitrary connectivity is pres...
We would like the behavior of the artificial agents that we construct to be as well-adapted to their...
Abstract. A Layered Evolution (LE) paradigm based method for the generation of a neuron- controller ...
The time cost of first-principles dynamic modelling and the complexity of nonlinear control strategi...
A ball mill grinding circuit is a nonlinear system characterised by significant controller interacti...
We propose a method for evolving neural network controllers robust with respect to variations of the...
Artificial neural networks are means which are, among several other approaches, effectively usable f...
We propose a method for evolving neural network controllers robust with respect to variations of the...
The presented evolutionary algorithm is especially designed to generate recurrent neural networks wi...
textMany complex control problems require sophisticated solutions that are not amenable to traditio...
In this paper authors present the results of a research that had a purpose to develop a method of co...
In this paper, design of a nonlinear controller for a Bioreactor Benchmark Problem is presented. The...
This paper develops novel neural networks suitable for direct embedment within a feedback loop. The ...
An evolutionary algorithm for the development of neural networks with arbitrary connectivity is pres...
The control and optimization of biotechnical processes is a complex task of industrial relevance, du...
An evolutionary algorithm for the development of neural networks with arbitrary connectivity is pres...
We would like the behavior of the artificial agents that we construct to be as well-adapted to their...
Abstract. A Layered Evolution (LE) paradigm based method for the generation of a neuron- controller ...