Hostname: page-component-76fb5796d-wq484 Total loading time: 0 Render date: 2024-04-26T21:38:39.564Z Has data issue: false hasContentIssue false

Integrating knowledge-based systems and artificial neural networks for engineering

Published online by Cambridge University Press:  27 February 2009

Nabil Kartam
Affiliation:
Assistant Professor, Department of Civil Engineering, University of Maryland, College Park, MD 20742, USA
Ian Flood
Affiliation:
Assistant Professor, Department of Civil Engineering, University of Maryland, College Park, MD 20742, USA
Tanit Tongthong
Affiliation:
Graduate Research Assistant, Department of Civil Engineering, University of Maryland, College Park, MD 20742, USA

Abstract

The feasibility and relative merits of integrating knowledge-based systems (KBSs) and artificial neural networks (ANNs) for application to engineering problems are presented and evaluated. The strength of KBSs lies in their ability to represent human judgment and solve problems by providing explanations from and reasoning with heuristic knowledge. ANNs demonstrate problem solving characteristics not inherent in KBSs, including an ability to learn from example, develop a generalized solution applicable to a range of examples of the problem, and process information extremely rapidly. In this respect, KBSs and ANNs are complementary, rather than alternatives, and may be integrated into a system that exploits the advantages of both technologies. The scope of application and quality of solutions produced by such a hybrid extend beyond the boundaries of the individual technologies. This paper identifies and describes how KBSs and ANNs can be integrated, and provides an evaluation of the advantages that will accrue in engineering applications.

Type
Articles
Copyright
Copyright © Cambridge University Press 1995

Access options

Get access to the full version of this content by using one of the access options below. (Log in options will check for institutional or personal access. Content may require purchase if you do not have access.)

References

REFERENCES

Ace, J. (1992). A neural net/ES hybrid. PC AI May/June.Google Scholar
Allen, H.R., Ed. (1992). Expert Systems for Civil Engineers. ASCE, New York.Google Scholar
Barker, D. (1990). Analyzing financial health: Integrating neural net-works and expert systems. PC AI, May/June.Google Scholar
Bochereau, L., Bourcier, D., & Bourgine, P. (1991). Extracting legal knowledge by means of a multilayer neural network application to municipal jurisprudence. In Proc. Third International Conf. Artif. Intell. and Law, 288296.CrossRefGoogle Scholar
Castelaz, P., Angus, J., & Mahoney, J. (1987). Application of neural networks to expert systems and command and control systems. In Proc. IEEE Western Conf. Expert Systems, 118125.Google Scholar
Dagli, C., et al. (1991). Intelligent scheduling in manufacturing using neural networks. J. Neural Network Comput. Spring, 410.Google Scholar
Damarla, T.R., et al. (1991). Neural networks for classification of ultrasonic signals. In Proc. ANNs in Engineering Conf., pp. 377383. ASME Press, New York.Google Scholar
Ferrada, J.J., Grizzaffi, P.A., & Osborne-Lee, I.W. (1990). Applications of Neural Networks in Chemical Engineering—Hybrid Systems. American Inst. of Chemical Engineers Fall Annual Meeting, Chicago, Illinois, 29.Google Scholar
Ferrada, J.J., Osborne-Lee, I.W., & Grizzaffi, P.A. (1991). Hybrid System for Fault Diagnosis Using Scanned Input: A Tutorial. Nat. Amer. Inst. of Chemical Engineers Meeting, Houston, Texas, 37 p.Google Scholar
Flood, I. (1990). Simulating the construction process using neural networks. In Proc. 7th Int. Symp. Automation and Robotics in Construction, Bristol, 9.Google Scholar
Flood, I. (1991). A Gaussian-based neural network architecture and complementary training algorithm. In Proc. Int. Joint Conf. on Neural Networks, Vol. I, Singapore, pp. 171176. IEEE and INNS.Google Scholar
Flood, I., & Kartam, N. (1994a). Neural networks in civil engineering: Principles and understanding. J. Comput. Civ. Eng. 8(2), 131148.CrossRefGoogle Scholar
Flood, I., & Kartam, N. (1994b). Neural networks in civil engineering: Systems and application. J. Comput. Civ. Eng. 8(2), 149162.CrossRefGoogle Scholar
Fu, L., & Fu, L. (1990). Mapping rule-based systems into neural architecture. Knowledge-Based Systems 3(1).Google Scholar
Fu, L. (1991). Translating neural networks into rule-based expert systems. IJCNN, vol. 2, Seattle, WA, pp. 947954.Google Scholar
Gagarine, N., Flood, I., & Albrecht, P. (1992). Weighing trucks in motion using Gaussian-based neural networks. In Proc. Int. Joint Conf. on Neural Networks, vol. II, Baltimore, MD, pp. 484489. IEEE and INNS.Google Scholar
Glover, C.W., & Spelt, P.F. (1990). Hybrid Intelligent Perception System: Intelligent Perception through Combining Artificial Neural Networks and an Expert System, Workshop on Neural Networks: Academic/Industrial/NASA/Defense (1st), 13 p.Google Scholar
Goulding, Jr (1991). Neural network hybrid expert system. National Conf. on Undergraduate Research (5th), Pasadena, California.Google Scholar
Hecht-Nielsen, R. (1989). Theory of the backpropagation neural networks. In Proc. of the Int. Joint Conf. on Neural Networks, vol. I, Washington, D.C., pp. 593605.Google Scholar
Johnston, M. et al. (1990). SPIKE: Artificial intelligence scheduling for Hubble Space Telescope. In Proc. of the 5th Conf. AI for Space Applications, NASA CP 3037, pp. 1118.Google Scholar
Issa, R., Fletcher, D., & Cade, R. (1992). Predicting tower guy protection using neural network. In Proc. of the 8th Conf. Computing in Civil Engineering and Geographic Information System, pp. 10741081. Dallas, Texas.Google Scholar
Kamarthi, S., Sanvido, V., & Kumara, S. (1992). Neuroform-neural network system for vertical formwork selection. J. Comput. Civ. Eng. 6(2).Google Scholar
Kartam, N. (1995). An artificial neural network for resource leveling in construction. J. Constr. Eng. Mgmt. (in press).Google Scholar
Kwasny, S.C., & Faisal, K.A. (1991). Rule-based training of neural networks. J. Expert Syst. Appl. 2(1), 4758.CrossRefGoogle Scholar
Levitt, R., & Kartam, N. (1990). Expert systems in construction engineering and management: State of the art. Knowledge Eng. Rev. 5(2).CrossRefGoogle Scholar
Lapedes, A., & Farber, R. (1987). How neural nets work. In Proc. of the First IEEE Conf. on Neural Information Processing Systems, Denver, CO, pp. 442456.Google Scholar
Liang, T. (1992). A composite approach to including knowledge for expert systems design. Mgmt. Sci. 38, 117.Google Scholar
Mohan, S., Maher, M., Eds. (1989). Expert Systems for Civil Engineers. ASCE, New York.Google Scholar
Moselhi, O., Hegazy, T., & Fazio, P. (1991). Neural networks as tools in construction. J. Const. Eng. Mgmt. 117(4).Google Scholar
Rabelo, L., & Alptekin, S. (1989). Integrating scheduling and control functions in computer integrated manufacturing using artificial intelligence. Comput. Ind. Eng. 17(4), 101106.Google Scholar
Rumelhart, D., Hinton, G.E. & Williams, R.J. (1986). Parallel Distributed Processing, Vol. I. MIT Press, Cambridge, Massachusetts.CrossRefGoogle Scholar
Sherald, M. (1989). Neural networks versus expert systems: Is there room for both? PC AI.Google Scholar
Topping, B.H.V., Ed. (1989). Artificial Intelligence Techniques and Applications for Civil and Structural Engineers. Civil-Corp Press, England.Google Scholar
Vellanki, M., & Dagli, C. (1992). Automated precision assembly through neurovision. Applications of ANNs III. In Int. Soc. Opt. Eng. Proc, Orlando, FL, pp. 493505.Google Scholar
Whiston, G., Wu, C., & Taylor, P. (1990). Using an artificial neural system to determine the knowledge base of an expert system. In Proc. ACM SIGMALL/PC Symp. Small Systems, 268270.Google Scholar
William, T., Khajuria, A., & Balaguru, P. (1992). Neural network for predicting concrete strength. In Proc. 8th Conf. Computing in Civil Engineering and Geographic Information System, pp. 10821087. Dallas, Texas.Google Scholar
Wu, X., & Ghaboussi, J. (1992). Neural network-based modeling of composite material with emphasis on reinforced concrete. In Proc. 8th Conf. Computing in Civil Engineering and Geographic Information System, pp. 11791186. Dallas, Texas.Google Scholar