An Efficient Deterministic Approach to Model-based Prediction Uncertainty Estimation

Abstract

Prognostics deals with the prediction of the end of life (EOL) of a system. EOL is a random variable, due to the presence of process noise and uncertainty in the future inputs to the system. Prognostics algorithms must account for this inherent uncertainty. In addition, these algorithms never know exactly the state of the system at the desired time of prediction, or the exact model describing the future evolution of the system, accumulating additional uncertainty into the predicted EOL. Prediction algorithms that do not account for these sources of uncertainty are misrepresenting the EOL and can lead to poor decisions based on their results. In this paper, we explore the impact of uncertainty in the prediction problem. We develop a general model-based prediction algorithm that incorporates these sources of uncertainty, and propose a novel approach to efficiently handle uncertainty in the future input trajectories of a system by using the unscented transform. Using this approach, we are not only able to reduce the computational load but also estimate the bounds of uncertainty in a deterministic manner, which can be useful to consider during decision-making. Using a lithium-ion battery as a case study, we perform several simulation-based experiments to explore these issues, and validate the overall approach using experimental data from a battery testbed.

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Document Details

Document Type
Technical Report
Publication Date
Sep 01, 2012
Accession Number
ADA588637

Entities

People

  • Abhinav Saxena
  • Kai Goebel
  • Matthew Daigle

Organizations

  • National Aeronautics and Space Administration

Tags

Communities of Interest

  • Biomedical
  • Materials and Manufacturing Processes
  • Space

DTIC Thesaurus Topics

  • Accuracy
  • Aircrafts
  • Algorithms
  • Case Studies
  • Computational Complexity
  • Experimental Data
  • Filters
  • Kalman Filters
  • Lithium Ion Batteries
  • Personal Information Managers
  • Probability
  • Probability Distributions
  • Random Variables
  • Simulations
  • Statistical Sampling
  • Statistics
  • Unmanned Aerial Vehicles

Fields of Study

  • Computer science

Readers

  • Adaptive Control and Estimation with Uncertainty in Dynamic Systems.
  • Computational Modeling and Simulation
  • Organizational Process Management (OPM).

Technology Areas

  • AI & ML
  • AI & ML - Bayesian Inference
  • AI & ML - Machine Learning Algorithms