Abstract:
The author presents a learning algorithm and capabilities of perceptron-like neural networks whose outputs and inputs are directly connected to plants just like ordinary ...Show MoreMetadata
Abstract:
The author presents a learning algorithm and capabilities of perceptron-like neural networks whose outputs and inputs are directly connected to plants just like ordinary feedback controllers. This simple configuration includes the difficulty of teaching the network. In addition, it is preferable to let the network learn so that a global and arbitrary evaluation of the total responses of the plant will be optimized eventually. In order to satisfy these needs, genetic algorithms are modified to accommodate the network learning procedure. This procedure is a kind of simulated evolution process in which a group of networks gradually improves as a whole, by crossing over connection weights among them, or by mutational changes of the weights, according to fitness values assigned to each network by a global evaluation. Simulations demonstrate that these networks can be optimized in terms of various evaluations, and they can discover schemes by themselves, such as state estimation and nonlinear control.<>
Published in: IEEE Transactions on Neural Networks ( Volume: 3, Issue: 2, March 1992)
DOI: 10.1109/72.125863
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Neural Network ,
- Objective Function ,
- Value Function ,
- State Variables ,
- Population Of Individuals ,
- Optimal Control ,
- Equations Of Motion ,
- Control Problem ,
- Learning Ability ,
- Global Rate ,
- Direct Control ,
- Standard Algorithm ,
- Objective Function Value ,
- Linear Control ,
- Average Fitness ,
- Plant Dynamics ,
- Linear Network ,
- Nonlinear Network ,
- Constant Gain ,
- Teaching Signal ,
- Network Behavior ,
- Connection Weights ,
- Nonlinear Control ,
- Sampling Period ,
- Linear Feedback Control ,
- Breeding Pairs ,
- Neural Network Control
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Neural Network ,
- Objective Function ,
- Value Function ,
- State Variables ,
- Population Of Individuals ,
- Optimal Control ,
- Equations Of Motion ,
- Control Problem ,
- Learning Ability ,
- Global Rate ,
- Direct Control ,
- Standard Algorithm ,
- Objective Function Value ,
- Linear Control ,
- Average Fitness ,
- Plant Dynamics ,
- Linear Network ,
- Nonlinear Network ,
- Constant Gain ,
- Teaching Signal ,
- Network Behavior ,
- Connection Weights ,
- Nonlinear Control ,
- Sampling Period ,
- Linear Feedback Control ,
- Breeding Pairs ,
- Neural Network Control