Postprocessing of Accidental Scenarios by Semi-Supervised Self-Organizing Maps

Integrated Deterministic and Probabilistic Safety Analysis (IDPSA) of dynamic systems calls for the development of efficient methods for accidental scenarios generation. The necessary consideration of failure events timing and sequencing along the scenarios requires the number of scenarios to be gen...

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Main Authors: Francesco Di Maio, Roberta Rossetti, Enrico Zio
Format: Article
Language:English
Published: Hindawi Limited 2017-01-01
Series:Science and Technology of Nuclear Installations
Online Access:http://dx.doi.org/10.1155/2017/2709109
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spelling doaj-426015398141457e905daf842474f5002020-11-24T23:40:46ZengHindawi LimitedScience and Technology of Nuclear Installations1687-60751687-60832017-01-01201710.1155/2017/27091092709109Postprocessing of Accidental Scenarios by Semi-Supervised Self-Organizing MapsFrancesco Di Maio0Roberta Rossetti1Enrico Zio2Energy Department, Politecnico di Milano, Via La Masa 34, 20156 Milano, ItalyEnergy Department, Politecnico di Milano, Via La Masa 34, 20156 Milano, ItalyEnergy Department, Politecnico di Milano, Via La Masa 34, 20156 Milano, ItalyIntegrated Deterministic and Probabilistic Safety Analysis (IDPSA) of dynamic systems calls for the development of efficient methods for accidental scenarios generation. The necessary consideration of failure events timing and sequencing along the scenarios requires the number of scenarios to be generated to increase with respect to conventional PSA. Consequently, their postprocessing for retrieving safety relevant information regarding the system behavior is challenged because of the large amount of generated scenarios that makes the computational cost for scenario postprocessing enormous and the retrieved information difficult to interpret. In the context of IDPSA, the interpretation consists in the classification of the generated scenarios as safe, failed, Near Misses (NMs), and Prime Implicants (PIs). To address this issue, in this paper we propose the use of an ensemble of Semi-Supervised Self-Organizing Maps (SSSOMs) whose outcomes are combined by a locally weighted aggregation according to two strategies: a locally weighted aggregation and a decision tree based aggregation. In the former, we resort to the Local Fusion (LF) principle for accounting the classification reliability of the different SSSOM classifiers, whereas in the latter we build a classification scheme to select the appropriate classifier (or ensemble of classifiers), for the type of scenario to be classified. The two strategies are applied for the postprocessing of the accidental scenarios of a dynamic U-Tube Steam Generator (UTSG).http://dx.doi.org/10.1155/2017/2709109
collection DOAJ
language English
format Article
sources DOAJ
author Francesco Di Maio
Roberta Rossetti
Enrico Zio
spellingShingle Francesco Di Maio
Roberta Rossetti
Enrico Zio
Postprocessing of Accidental Scenarios by Semi-Supervised Self-Organizing Maps
Science and Technology of Nuclear Installations
author_facet Francesco Di Maio
Roberta Rossetti
Enrico Zio
author_sort Francesco Di Maio
title Postprocessing of Accidental Scenarios by Semi-Supervised Self-Organizing Maps
title_short Postprocessing of Accidental Scenarios by Semi-Supervised Self-Organizing Maps
title_full Postprocessing of Accidental Scenarios by Semi-Supervised Self-Organizing Maps
title_fullStr Postprocessing of Accidental Scenarios by Semi-Supervised Self-Organizing Maps
title_full_unstemmed Postprocessing of Accidental Scenarios by Semi-Supervised Self-Organizing Maps
title_sort postprocessing of accidental scenarios by semi-supervised self-organizing maps
publisher Hindawi Limited
series Science and Technology of Nuclear Installations
issn 1687-6075
1687-6083
publishDate 2017-01-01
description Integrated Deterministic and Probabilistic Safety Analysis (IDPSA) of dynamic systems calls for the development of efficient methods for accidental scenarios generation. The necessary consideration of failure events timing and sequencing along the scenarios requires the number of scenarios to be generated to increase with respect to conventional PSA. Consequently, their postprocessing for retrieving safety relevant information regarding the system behavior is challenged because of the large amount of generated scenarios that makes the computational cost for scenario postprocessing enormous and the retrieved information difficult to interpret. In the context of IDPSA, the interpretation consists in the classification of the generated scenarios as safe, failed, Near Misses (NMs), and Prime Implicants (PIs). To address this issue, in this paper we propose the use of an ensemble of Semi-Supervised Self-Organizing Maps (SSSOMs) whose outcomes are combined by a locally weighted aggregation according to two strategies: a locally weighted aggregation and a decision tree based aggregation. In the former, we resort to the Local Fusion (LF) principle for accounting the classification reliability of the different SSSOM classifiers, whereas in the latter we build a classification scheme to select the appropriate classifier (or ensemble of classifiers), for the type of scenario to be classified. The two strategies are applied for the postprocessing of the accidental scenarios of a dynamic U-Tube Steam Generator (UTSG).
url http://dx.doi.org/10.1155/2017/2709109
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