Title of article :
Nonlinear prediction of manufacturing systems through explicit and implicit data mining
Author/Authors :
Steven H. Kim.، نويسنده , , Churl Min Lee، نويسنده ,
Issue Information :
ماهنامه با شماره پیاپی سال 1997
Pages :
4
From page :
461
To page :
464
Abstract :
Many processes in the industrial realm exhibit stochastic and nonlinear behavior. Consequently, an intelligent system must be able to ndapt to nonlinear production processes as well as probabilistic phenomena. To this end, an intelligent manufacturing system may draw on techniques from disparate fields, involving knowledge in both explicit and implicit form.In order for a knowledge based system to control a manufacturing process, an important capability is that of prediction: forecasting the future trajectory of a process as well as the consequences of the control action. This paper presents a comparative study of explicitaand implicit methods to predict nonlinear chaotic behavior. The evaluated models include statistica; procedures as well as neural networks and case based reasoning. The concepts are crystallized through a case study in the prediction of chaotic processes adulterated by various patterns of noise.
Keywords :
Learning , Prediction , Data mining , CIM , Chaos
Journal title :
Computers & Industrial Engineering
Serial Year :
1997
Journal title :
Computers & Industrial Engineering
Record number :
924934
Link To Document :
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