Abstract
This paper presents an architecture which combines artificial neural networks (ANNs) and an expert system (ES) into a hybrid, self-improving artificial intelligence (AI) system. The purpose of this project is to explore methods of combining multiple AI technologies into a hybrid intelligent diagnostic and advisory system. ANNs and ESs have different strengths and weaknesses, which can be exploited in such a way that they are complementary to each other: strengths in one system make up for weaknesses in the other, andvice versa. There is, presently, considerable interest in ways to exploit the strengths of these methodologies to produce an intelligent system which is more robust and flexible than one using either technology alone. Any process which involves both data-driven (bottom-up) and concept-driven (top-down) processing is especially well suited to displaying the capabilities of such a hybrid system. The system can take an incoming pattern of signals, as from various points in an automated manufacturing process, and make intelligent process control decisions on the basis of the pattern as preprocessed by the ANNs, with rule-based heuristic help or corroboration from the ES. Patterns of data from the environment which can be classified by either the ES or a human consultant can result in a high-level ANN being created and trained to recognize that pattern on future occurrences. In subsequent cases in which the ANN and the ES fail to agree on a decision concerning the environmental situation, the system can resolve those differences and retrain the networks and/or modify the models of the environment stored in the ES. Work on a hybrid system for perception in machine vision has been funded initially by an Oak Ridge National Laboratory seed grant, and most of the system components are operating presently in a parallel distributed computer environment.
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Bailey, S. J. (1990) Using alarms and annunciators to assess fault significance.Control Engineering,37, 101–3.
Carpenter, G. A. and Grossberg, S. (1987) A massively parallel architecture for a self-organizing neural pattern recognition machine.Computer Vision, Graphics and Image Processing,37, 54–115.
Cohen, M. A. and Grossberg, S. (1987) Masking fields: a massively parallel neural architecture for learning, recognizing, and predicting multiple groupings of patterned data.Applied Optics,26, 1866–91.
Glover, C. W. and Spelt, P. F. (1990) Hybrid intelligent perception system: intelligent perception through combining artificial neural networks and an expert system.Proceedings of the First Workshop on Neural Networks. WNN-AIND 1990, Auburn.
Glover, C. W. and Walker, M. (1990) A study on automatic artificial neural network training procedures in anOak Ridge National Laboratory Technical Memorandum.
Jakob, F. and Suslenschi, P. (1990) Situation assessment for process control.IEEE Expert 5, 49–59.
Masory, O. and Aguirre, L. (1990) Neural network calibrates a displacement sensor.Sensors,7, 48–56.
McAllister, L. (1990) Twenty five tough integration problems and solutions.Systems Integration,23, 31–50.
McCusker, T. (1990) Neural networks and fuzzy logic, tools of promise for controls.Control Engineering,37, 84–5.
Rao, N. S. V. and Glover, C. W. (1989) Symbolic pattern processing system for planar spatial structures.Old Dominion University, Technical Report no. TR-89-037.
Roscoe, B. J. and Weston, L. M. (1986) Human factors in annunciator/alarm systems: annunciator experiment plan I,NUREG/CR-4463, SAND85-2545.
Rumelhart, D. E. and McClelland, J. L. (1986)Parallel distributed processing: explorations in the microstructure of cognition, Vol. 1. MIT Press, Cambridge, MA.
Sawhney, R. S., Schryver, J. C. and Dodds, H. L. (1990) An operator model-based filtering scheme, inProceedings of the ANS Topical Meeting on Advances in Human Factors Research on Man-Computer Interactions: Nuclear and Beyond, Nashville American Nuclear Society Inc., pp. 111–15.
Schryver, J. C. (1988) Operator model-based design and evaluation of advanced systems: computational models inProceedings of the IEEE Fourth Conference on Human Factors and Power Plants, Monterey, CA, Institute of Electrical & Electronic Engineers, pp. 121–7.
Schryver, J. C. and Palko, L. E. (1988) Knowledge-enhanced network simulation modeling of the nuclear power plant operator inProceedings of the SCS Multiconference on Power Plant Simulation, San Diego, CA, Society for Computer Simulation, pp. 93–8.
Smolensky, P. (1988) On the proper treatment of connectionism.Behavioral and Brain Sciences,II, 1–74.
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Spelt, P.F., Knee, H.E. & Glover, C.W. Hybrid artificial intelligence architecture for diagnosis and decision-making in manufacturing. J Intell Manuf 2, 261–268 (1991). https://doi.org/10.1007/BF01471174
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DOI: https://doi.org/10.1007/BF01471174