APRICOIN: An Adaptive Approach for Prioritizing High-Risk Containers Inspections

Risk evaluation of the containers remains a difficult task, often due to incomplete or ambiguous information on containers. In addition, the evaluation process needs to be adapted on an ongoing basis to cope with emerging risk factors. Furthermore, high-risk container inspection is commonly hindered...

Full description

Bibliographic Details
Main Authors: Mohamed Yassine Samiri, Mehdi Najib, Abdelaziz Elfazziki, Mohamed Nezar Abourraja, Dalila Boudebous, Abdelhadi Bouain
Format: Article
Language:English
Published: IEEE 2017-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/8039285/
id doaj-003e3187f99044c09fb321c2ab9e0672
record_format Article
spelling doaj-003e3187f99044c09fb321c2ab9e06722021-03-29T20:17:20ZengIEEEIEEE Access2169-35362017-01-015182381824910.1109/ACCESS.2017.27468388039285APRICOIN: An Adaptive Approach for Prioritizing High-Risk Containers InspectionsMohamed Yassine Samiri0https://orcid.org/0000-0002-6572-8313Mehdi Najib1Abdelaziz Elfazziki2Mohamed Nezar Abourraja3Dalila Boudebous4Abdelhadi Bouain5Université Cadi Ayyad, Marrakesh, MoroccoPrivate University of Marrakesh, Marrakesh, MoroccoUniversité Cadi Ayyad, Marrakesh, MoroccoUniversité Cadi Ayyad, Marrakesh, MoroccoUniversity of Normandy of Le Havre, Le Havre, FranceUniversité Cadi Ayyad, Marrakesh, MoroccoRisk evaluation of the containers remains a difficult task, often due to incomplete or ambiguous information on containers. In addition, the evaluation process needs to be adapted on an ongoing basis to cope with emerging risk factors. Furthermore, high-risk container inspection is commonly hindered by a low inspection capacity, which leads to a major issue: how can we prioritize the container inspection if the number of suspect containers exceeds the inspection capacity? Container inspection prioritizing may be the answer. In this paper, we propose a novel approach for adaptively prioritizing container inspection (APRICOIN). First, we enhance the container information flow to alleviate the problem of incomplete information by proposing an enhanced container descriptive. Second, we introduce the APRICOIN algorithm, which combines frequent pattern mining and a fuzzy logic system, to assess the container's risk score. The frequent pattern growth algorithm is proposed to retrieve the key criteria for evaluating container risk. This is done through mining frequent criteria sets within the historic data set of container inspections by customs. The mined frequent criteria sets are used to assess fuzzy inference rules which are periodically readjusted to integrate new key criteria. Thereafter, the fuzzy logic system uses the obtained fuzzy inference rules to calculate a container's risk score. Our major contribution consists of providing a new adaptive approach for assessing a container's risk through combining frequent criteria mining and fuzzy logic. An illustrative study and a comparison with alternative approaches are performed to validate the proposed algorithm.https://ieeexplore.ieee.org/document/8039285/Risk assessmentmarine transportationrisk analysiscomputational and artificial intelligenceintelligent container
collection DOAJ
language English
format Article
sources DOAJ
author Mohamed Yassine Samiri
Mehdi Najib
Abdelaziz Elfazziki
Mohamed Nezar Abourraja
Dalila Boudebous
Abdelhadi Bouain
spellingShingle Mohamed Yassine Samiri
Mehdi Najib
Abdelaziz Elfazziki
Mohamed Nezar Abourraja
Dalila Boudebous
Abdelhadi Bouain
APRICOIN: An Adaptive Approach for Prioritizing High-Risk Containers Inspections
IEEE Access
Risk assessment
marine transportation
risk analysis
computational and artificial intelligence
intelligent container
author_facet Mohamed Yassine Samiri
Mehdi Najib
Abdelaziz Elfazziki
Mohamed Nezar Abourraja
Dalila Boudebous
Abdelhadi Bouain
author_sort Mohamed Yassine Samiri
title APRICOIN: An Adaptive Approach for Prioritizing High-Risk Containers Inspections
title_short APRICOIN: An Adaptive Approach for Prioritizing High-Risk Containers Inspections
title_full APRICOIN: An Adaptive Approach for Prioritizing High-Risk Containers Inspections
title_fullStr APRICOIN: An Adaptive Approach for Prioritizing High-Risk Containers Inspections
title_full_unstemmed APRICOIN: An Adaptive Approach for Prioritizing High-Risk Containers Inspections
title_sort apricoin: an adaptive approach for prioritizing high-risk containers inspections
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2017-01-01
description Risk evaluation of the containers remains a difficult task, often due to incomplete or ambiguous information on containers. In addition, the evaluation process needs to be adapted on an ongoing basis to cope with emerging risk factors. Furthermore, high-risk container inspection is commonly hindered by a low inspection capacity, which leads to a major issue: how can we prioritize the container inspection if the number of suspect containers exceeds the inspection capacity? Container inspection prioritizing may be the answer. In this paper, we propose a novel approach for adaptively prioritizing container inspection (APRICOIN). First, we enhance the container information flow to alleviate the problem of incomplete information by proposing an enhanced container descriptive. Second, we introduce the APRICOIN algorithm, which combines frequent pattern mining and a fuzzy logic system, to assess the container's risk score. The frequent pattern growth algorithm is proposed to retrieve the key criteria for evaluating container risk. This is done through mining frequent criteria sets within the historic data set of container inspections by customs. The mined frequent criteria sets are used to assess fuzzy inference rules which are periodically readjusted to integrate new key criteria. Thereafter, the fuzzy logic system uses the obtained fuzzy inference rules to calculate a container's risk score. Our major contribution consists of providing a new adaptive approach for assessing a container's risk through combining frequent criteria mining and fuzzy logic. An illustrative study and a comparison with alternative approaches are performed to validate the proposed algorithm.
topic Risk assessment
marine transportation
risk analysis
computational and artificial intelligence
intelligent container
url https://ieeexplore.ieee.org/document/8039285/
work_keys_str_mv AT mohamedyassinesamiri apricoinanadaptiveapproachforprioritizinghighriskcontainersinspections
AT mehdinajib apricoinanadaptiveapproachforprioritizinghighriskcontainersinspections
AT abdelazizelfazziki apricoinanadaptiveapproachforprioritizinghighriskcontainersinspections
AT mohamednezarabourraja apricoinanadaptiveapproachforprioritizinghighriskcontainersinspections
AT dalilaboudebous apricoinanadaptiveapproachforprioritizinghighriskcontainersinspections
AT abdelhadibouain apricoinanadaptiveapproachforprioritizinghighriskcontainersinspections
_version_ 1724194844325183488