DocumentCode :
489066
Title :
Memory-Based Learning Control
Author :
Atkeson, Christopher G.
Author_Institution :
The Artificial Intelligence Laboratory and the Brain and Cognitive Sciences Department, Massachusetts Institute of Technology, NE43-771, 545 Technology Square, Cambridge, MA 02139, cga@ai.mit.edu, 617-253-0788
fYear :
1991
fDate :
26-28 June 1991
Firstpage :
2131
Lastpage :
2136
Abstract :
A challenge for learning control systems is to build a model of a nonlinear plant from samples of the plant´s inputs and outputs. We have used a memory-based technique to approach this problem. Samples of the plant´s inputs and outputs are stored in a memory. Predictions of the plant´s outputs given an input vector (or vice versa) are made by constructing a local model from nearby samples, and using the local model to interpolate between and extrapolate from samples in the database. This approach implements a philosophy of modeling a complex plant with many simple local models. A local model is constructed by performing a regression of a polynomial surface on the data. The regression is locally weighted by a weighting function of the distance between the desired vector and each vector stored in memory. In order to find relevant information in the memory and to perform the locally weighted regression a distance metric, weight function shape parameter, and ridge regression parameters are required. These parameters are found using a cross-validation approach. The parameters indicate which variables and terms in the local model are relevant to modeling the plant.
Keywords :
Artificial intelligence; Brain modeling; Control system synthesis; Databases; Function approximation; Laboratories; Learning; Nonlinear control systems; Polynomials; Predictive models;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
American Control Conference, 1991
Conference_Location :
Boston, MA, USA
Print_ISBN :
0-87942-565-2
Type :
conf
Filename :
4791774
Link To Document :
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