Header menu link for other important links
X
A novel approach for benchmarking and assessing the performance of state estimators
Laya Das, Gaurav Kumar, ,
Published in ISA - Instrumentation, Systems, and Automation Society
2018
PMID: 29958650
Volume: 80
   
Pages: 137 - 145
Abstract
State estimation is a widely adopted soft sensing technique that incorporates predictions from an accurate model of the process and measurements to provide reliable estimates of unmeasured variables. The reliability of such estimators is threatened by measurement related challenges and model inaccuracies. In this article, a method for benchmarking of state estimation techniques is proposed. This method can be used to quantify the performance and hence reliability of an estimator. The Hurst exponents of a posteriori filtering errors are analyzed to characterize a benchmark (minimum mean squared error) estimator, similar to the minimum variance control benchmark developed for control loops. A distance metric is then used to quantify the extent of deviation of an estimator from the benchmark. The proposed technique is developed for linear systems and extended to non-linear systems with single as well as multiple measurable variables. Simulation studies are carried out with Kalman based as well as Monte Carlo based estimators whose computational details are significantly different. Results reveal that the technique serves as a tool that can quantify the performance and assess the reliability of a state estimator. The strengths and limitations of the proposed technique are discussed with guidelines on applications and deployment of the technique in a real life system. © 2018 ISA
About the journal
JournalISA Transactions
PublisherISA - Instrumentation, Systems, and Automation Society
ISSN00190578
Open AccessNo
Concepts (15)
  •  related image
    Linear systems
  •  related image
    Mean square error
  •  related image
    Monte carlo methods
  •  related image
    Reliability
  •  related image
    State estimation
  •  related image
    Three term control systems
  •  related image
    Detrended fluctuation analysis
  •  related image
    ESTIMATION TECHNIQUES
  •  related image
    HURST EXPONENTS
  •  related image
    Minimum mean squared error
  •  related image
    MINIMUM VARIANCE CONTROL
  •  related image
    MULTIVARIATE SYSTEMS
  •  related image
    Performance analysis
  •  related image
    SOFT-SENSING TECHNIQUE
  •  related image
    Benchmarking