Abstract:
Successful industrial applications and favorable comparisons with conventional alternatives have motivated the development of a large number of schemes for neural-network...Show MoreMetadata
Abstract:
Successful industrial applications and favorable comparisons with conventional alternatives have motivated the development of a large number of schemes for neural-network-based control. Each scheme is usually composed of several independent functional features, which makes it difficult to identify precisely what is new in the scheme. Help from available overviews is therefore often inadequate, since they usually discuss only the most important overall schemes. This work breaks the available schemes down to their essential functional features and organizes the latter into a multi-level classification. The classification reveals that similar schemes often get placed in different categories, fundamentally different features often get lumped into a single category, and proposed new schemes are often merely permutations and combinations of the well-established fundamental features. The classification has two main sections: neural network only as an aid; and neural network as controller.
Published in: IEEE Control Systems Magazine ( Volume: 17, Issue: 2, April 1997)
DOI: 10.1109/37.581297
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- IEEE Keywords
- Index Terms
- Neural Network ,
- Use Of Models ,
- Objective Function ,
- Performance Indicators ,
- Prediction Error ,
- Optimal Control ,
- Adaptive Control ,
- Network Output ,
- Control Objective ,
- Network Input ,
- Inverse Model ,
- Proportional-integral-derivative ,
- Neural Control ,
- Control Goal ,
- Long-term Objectives ,
- Model-based Control ,
- Short-term Performance ,
- Analytical Gradient ,
- Inverted Pendulum ,
- Conventional Control Strategy ,
- Finite Difference Method ,
- Active Control ,
- Model Predictive Control ,
- Control Strategy ,
- Inequality Constraints ,
- Simulation Model ,
- Computational Effort ,
- Artificial Neural Network ,
- Control Variables ,
- Stochastic Optimization
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Neural Network ,
- Use Of Models ,
- Objective Function ,
- Performance Indicators ,
- Prediction Error ,
- Optimal Control ,
- Adaptive Control ,
- Network Output ,
- Control Objective ,
- Network Input ,
- Inverse Model ,
- Proportional-integral-derivative ,
- Neural Control ,
- Control Goal ,
- Long-term Objectives ,
- Model-based Control ,
- Short-term Performance ,
- Analytical Gradient ,
- Inverted Pendulum ,
- Conventional Control Strategy ,
- Finite Difference Method ,
- Active Control ,
- Model Predictive Control ,
- Control Strategy ,
- Inequality Constraints ,
- Simulation Model ,
- Computational Effort ,
- Artificial Neural Network ,
- Control Variables ,
- Stochastic Optimization