OPTIMAL ADAPTIVE ESTIMATION OF SAMPLED STOCHASTIC PROCESSES

Abstract

An adaptive approach is presented to the problem of estimating a sampled, scalar-valued, stochastic process described by an initially unknown parameter vector. Knowledge of this quantity completely specifies the statistics of the process, and consequently the optimal estimator must learn the value of the parameter vector. In order that construction of the optimal estimator be feasible it is necessary to consider only those processes whose parameter vector comes from a finite set of a priori known values. Fortunately, many practical problems may be represented or adequately approximated by such a model. The optimal estimator is found to be composed of a set of elemental estimators and corresponding set of weighting coefficients, one pair for each possible value of the parameter vector. This structure is derived using properties of the conditional mean operator. For gaussmarkov processes the elemental estimators are linear, dynamic systems, and evaluation of the weighting coefficients involves relatively simple, nonlinear calculations. The resulting system is optimum in the sense that it minimizes the expected value of a positive- definite, quadratic form in terms of the error (a generalized meansquare-error criterion).

Open PDF

Document Details

Document Type
Technical Report
Publication Date
Dec 01, 1963
Accession Number
AD0436021

Entities

People

  • David Thomas Magill

Organizations

  • Stanford University

Tags

Communities of Interest

  • Advanced Electronics
  • Air Platforms
  • Energy and Power Technologies
  • Weapons Technologies

DTIC Thesaurus Topics

  • Adaptive Filters
  • Adaptive Systems
  • Air Force
  • Calculators
  • Data Science
  • Difference Equations
  • Gaussian Processes
  • Hilbert Space
  • Information Retrieval
  • Information Science
  • Markov Processes
  • Military Research
  • Optimal Estimators
  • Probability
  • Random Variables
  • Statistics
  • Stochastic Processes

Fields of Study

  • Engineering
  • Mathematics

Readers

  • Adaptive Control and Estimation with Uncertainty in Dynamic Systems.
  • Statistical inference.