Forecasts Modeling in Industrial Applications Based on Artificial Intelligence Techniques
p. 245-258
Abstract
The management of industrial systems involves decision making with respect to complex processes that are often stochastic in nature. Simulation is frequently the only effective mean to model the complexity of such industrial processes. Simulation enables detailed scenario testing and, thus, is well suited for "what if" analysis. However, industrial users often need to solve inverse problems, such as optimization or decision analysis, which cannot be handled by simulation alone. This paper proposes the integrated use of simulation and Artificial Intelligence techniques in hybrid system architectures for advanced industrial problem solving. Hybrid Decision Support Systems (DSSs), combine the complementary strengths of different techniques for integrated forecasting ,modeling, and optimization.
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References
Bibliographical reference
Agostino Bruzzone, Roberto Mosca, Alessandra Orsoni and Roberto Revetria, « Forecasts Modeling in Industrial Applications Based on Artificial Intelligence Techniques », CASYS, 11 | 2002, 245-258.
Electronic reference
Agostino Bruzzone, Roberto Mosca, Alessandra Orsoni and Roberto Revetria, « Forecasts Modeling in Industrial Applications Based on Artificial Intelligence Techniques », CASYS [Online], 11 | 2002, Online since 16 July 2024, connection on 10 November 2024. URL : http://popups.lib.uliege.be/1373-5411/index.php?id=1798
Authors
Agostino Bruzzone
DIP University of Genoa - Via Opera Pia 15, 16145 Genova-Italy
Roberto Mosca
DIP University of Genoa - Via Opera Pia 15, 16145 Genova-Italy
Alessandra Orsoni
DIP University of Genoa - Via Opera Pia 15, 16145 Genova-Italy
Roberto Revetria
DIP University of Genoa - Via Opera Pia 15, 16145 Genova-Italy