Multiple-imputation-particle-filtering for Uncertainty Characterization in Battery State-of-Charge Estimation Problems with Missing Measurement Data: Performance Analysis and Impact on Prognostic Algorithms

The implementation of particle-filtering-based algorithms for state estimation purposes often has to deal with the problem of missing observations. An efficient design requires an appropriate methodology for real-time uncertainty characterization within the estimation process, incorporating knowledg...

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Main Authors: David E. Acuña, Marcos E. Orchard, Jorge F. Silva, Aramis Pérez
Format: Article
Language:English
Published: The Prognostics and Health Management Society 2015-12-01
Series:International Journal of Prognostics and Health Management
Subjects:
Online Access:https://papers.phmsociety.org/index.php/ijphm/article/view/2293
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spelling doaj-69685800630d472d97e017c73752ff7b2021-07-02T18:37:28ZengThe Prognostics and Health Management SocietyInternational Journal of Prognostics and Health Management2153-26482153-26482015-12-0164doi:10.36001/ijphm.2015.v6i4.2293Multiple-imputation-particle-filtering for Uncertainty Characterization in Battery State-of-Charge Estimation Problems with Missing Measurement Data: Performance Analysis and Impact on Prognostic AlgorithmsDavid E. Acuña0Marcos E. Orchard1Jorge F. Silva2Aramis Pérez3Universidad de Chile, Department of Electrical Engineering. Av. Tupper 2007, Santiago, ChileUniversidad de Chile, Department of Electrical Engineering. Av. Tupper 2007, Santiago, ChileUniversidad de Chile, Department of Electrical Engineering. Av. Tupper 2007, Santiago, ChileUniversidad de Chile, Department of Electrical Engineering. Av. Tupper 2007, Santiago, ChileThe implementation of particle-filtering-based algorithms for state estimation purposes often has to deal with the problem of missing observations. An efficient design requires an appropriate methodology for real-time uncertainty characterization within the estimation process, incorporating knowledge from other available sources of information. This article analyzes this problem and presents preliminary results for a multiple imputation strategy that improves the performance of particle-filtering-based state-of-charge (SOC) estimators for lithium-ion (Li-Ion) battery cells. The proposed uncertainty characterization scheme is tested, and validated, in a case study where the state-space model requires both voltage and discharge current measurements to estimate the SOC. A sudden disconnection of the battery voltage sensor is assumed to cause significant loss of data. Results show that the multipleimputation particle filter allows reasonable characterization of uncertainty bounds for state estimates, even when the voltage sensor disconnection continues. Furthermore, if voltage measurements are once more available, the uncertainty bounds adjust to levels that are comparable to the case where data were not lost. As state estimates are used as initial conditions for battery End-of-Discharge (EoD) prognosis modules, we also studied how these multiple-imputation algorithms impact on the quality of EoD estimates.https://papers.phmsociety.org/index.php/ijphm/article/view/2293particle filteringstate of charge estimationmultiple imputations
collection DOAJ
language English
format Article
sources DOAJ
author David E. Acuña
Marcos E. Orchard
Jorge F. Silva
Aramis Pérez
spellingShingle David E. Acuña
Marcos E. Orchard
Jorge F. Silva
Aramis Pérez
Multiple-imputation-particle-filtering for Uncertainty Characterization in Battery State-of-Charge Estimation Problems with Missing Measurement Data: Performance Analysis and Impact on Prognostic Algorithms
International Journal of Prognostics and Health Management
particle filtering
state of charge estimation
multiple imputations
author_facet David E. Acuña
Marcos E. Orchard
Jorge F. Silva
Aramis Pérez
author_sort David E. Acuña
title Multiple-imputation-particle-filtering for Uncertainty Characterization in Battery State-of-Charge Estimation Problems with Missing Measurement Data: Performance Analysis and Impact on Prognostic Algorithms
title_short Multiple-imputation-particle-filtering for Uncertainty Characterization in Battery State-of-Charge Estimation Problems with Missing Measurement Data: Performance Analysis and Impact on Prognostic Algorithms
title_full Multiple-imputation-particle-filtering for Uncertainty Characterization in Battery State-of-Charge Estimation Problems with Missing Measurement Data: Performance Analysis and Impact on Prognostic Algorithms
title_fullStr Multiple-imputation-particle-filtering for Uncertainty Characterization in Battery State-of-Charge Estimation Problems with Missing Measurement Data: Performance Analysis and Impact on Prognostic Algorithms
title_full_unstemmed Multiple-imputation-particle-filtering for Uncertainty Characterization in Battery State-of-Charge Estimation Problems with Missing Measurement Data: Performance Analysis and Impact on Prognostic Algorithms
title_sort multiple-imputation-particle-filtering for uncertainty characterization in battery state-of-charge estimation problems with missing measurement data: performance analysis and impact on prognostic algorithms
publisher The Prognostics and Health Management Society
series International Journal of Prognostics and Health Management
issn 2153-2648
2153-2648
publishDate 2015-12-01
description The implementation of particle-filtering-based algorithms for state estimation purposes often has to deal with the problem of missing observations. An efficient design requires an appropriate methodology for real-time uncertainty characterization within the estimation process, incorporating knowledge from other available sources of information. This article analyzes this problem and presents preliminary results for a multiple imputation strategy that improves the performance of particle-filtering-based state-of-charge (SOC) estimators for lithium-ion (Li-Ion) battery cells. The proposed uncertainty characterization scheme is tested, and validated, in a case study where the state-space model requires both voltage and discharge current measurements to estimate the SOC. A sudden disconnection of the battery voltage sensor is assumed to cause significant loss of data. Results show that the multipleimputation particle filter allows reasonable characterization of uncertainty bounds for state estimates, even when the voltage sensor disconnection continues. Furthermore, if voltage measurements are once more available, the uncertainty bounds adjust to levels that are comparable to the case where data were not lost. As state estimates are used as initial conditions for battery End-of-Discharge (EoD) prognosis modules, we also studied how these multiple-imputation algorithms impact on the quality of EoD estimates.
topic particle filtering
state of charge estimation
multiple imputations
url https://papers.phmsociety.org/index.php/ijphm/article/view/2293
work_keys_str_mv AT davideacuna multipleimputationparticlefilteringforuncertaintycharacterizationinbatterystateofchargeestimationproblemswithmissingmeasurementdataperformanceanalysisandimpactonprognosticalgorithms
AT marcoseorchard multipleimputationparticlefilteringforuncertaintycharacterizationinbatterystateofchargeestimationproblemswithmissingmeasurementdataperformanceanalysisandimpactonprognosticalgorithms
AT jorgefsilva multipleimputationparticlefilteringforuncertaintycharacterizationinbatterystateofchargeestimationproblemswithmissingmeasurementdataperformanceanalysisandimpactonprognosticalgorithms
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