DocumentCode
116091
Title
Interval predictor models with a formal characterization of uncertainty and reliability
Author
Crespo, Luis G. ; Giesy, Daniel P. ; Kenny, Sean P.
Author_Institution
NIA, NASA Langley Res. Center, Hampton, VA, USA
fYear
2014
fDate
15-17 Dec. 2014
Firstpage
5991
Lastpage
5996
Abstract
This paper develops techniques for constructing empirical predictor models based on observations. By contrast to standard models, which yield a single predicted output at each value of the model´s inputs, Interval Predictors Models (IPM) yield an interval into which the unobserved output is predicted to fall. The IPMs proposed prescribe the output as an interval valued function of the model´s inputs, render a formal description of both the uncertainty in the model´s parameters and of the spread in the predicted output. Uncertainty is prescribed as a hyper-rectangular set in the space of model´s parameters. The propagation of this set through the empirical model yields a range of outputs of minimal spread containing all (or, depending on the formulation, most) of the observations. Optimization-based strategies for calculating IPMs and eliminating the effects of outliers are proposed. Outliers are identified by evaluating the extent by which they degrade the tightness of the prediction. This evaluation can be carried out while the IPM is calculated. When the data satisfies mild stochastic assumptions, and the optimization program used for calculating the IPM is convex (or, when its solution coincides with the solution to an auxiliary convex program), the model´s reliability (that is, the probability that a future observation would be within the predicted range of outputs) can be bounded rigorously by a non-asymptotic formula.
Keywords
identification; optimisation; predictive control; IPM; auxiliary convex program; formal characterization; interval predictor models; interval predictors models; interval valued function; nonasymptotic formula; optimization program; optimization-based strategies; Mathematical model; Optimization; Polynomials; Predictive models; Reliability; Uncertainty; Vectors;
fLanguage
English
Publisher
ieee
Conference_Titel
Decision and Control (CDC), 2014 IEEE 53rd Annual Conference on
Conference_Location
Los Angeles, CA
Print_ISBN
978-1-4799-7746-8
Type
conf
DOI
10.1109/CDC.2014.7040327
Filename
7040327
Link To Document