eBiltegia

    • Zer da eBiltegia? 
    •   eBiltegiari buruz
    •   Argitaratu irekian zure ikerketa
    • Sarbide Irekia MUn 
    •   Zer da Zientzia Irekia?
    •   Mondragon Unibertsitatearen dokumentu zientifikoetara eta irakaskuntza-materialetara Sarbide Irekia izateko politika instituzionala
    •   Zure argitalpenak jaso eta zabaldu egiten ditu Bibliotekak

Con la colaboración de:

Euskara | Español | English
  • Kontaktua
  • Zientzia Irekia
  • eBiltegiari buruz
  • Hasi saioa
Ikusi itema 
  •   eBiltegia MONDRAGON UNIBERTSITATEA
  • Ekoizpen zientifikoa
  • Artikuluak
  • Artikuluak - Ingeniaritza
  • Ikusi itema
  •   eBiltegia MONDRAGON UNIBERTSITATEA
  • Ekoizpen zientifikoa
  • Artikuluak
  • Artikuluak - Ingeniaritza
  • Ikusi itema
JavaScript is disabled for your browser. Some features of this site may not work without it.
Thumbnail
Ikusi/Ireki
MarMot: Metamorphic Runtime Monitoring of Autonomous Driving Systems (7.265Mb)
Erregistro osoa
Eragina

Web of Science   

Google Scholar
Partekatu
EmailLinkedinFacebookTwitter
Gorde erreferentzia
Mendely

Zotero

untranslated

Mets

Mods

Rdf

Marc

Exportar a BibTeX
Izenburua
MarMot: Metamorphic Runtime Monitoring of Autonomous Driving Systems
Egilea
Ayerdi, Jon JosebaORCID
Iriarte, AsierORCID
Valle Entrena, PabloORCID
Roman Txopitea, IbaiORCID
Illarramendi, MirenORCID
Arrieta, AitorORCID
Ikerketa taldea
Ingeniería del Software y Sistemas
Bertsioa
Postprinta
Dokumentu-mota
Artikulua
Hizkuntza
Ingelesa
Eskubideak
© ACM
Sarbidea
Sarbide irekia
URI
https://hdl.handle.net/20.500.11984/14502
Argitaratzailearen bertsioa
https://doi.org/10.1145/3678171
Non argitaratua
ACM Transactions on Software Engineering and Methodology  Vol. 34 (1). N. art. 18.
Lehenengo orria
1
Azken orria
35
Argitaratzailea
ACM
Gako-hitzak
Software safety
Autonomous Driving System
Runtime Monitoring
Metamorphic Testing ... [+]
Software safety
Autonomous Driving System
Runtime Monitoring
Metamorphic Testing
Cyber-Physical Systems
Deep Neural Networks [-]
Gaia (UNESCO Tesauroa)
Informatika
UNESCO Sailkapena
Informatika
Laburpena
Autonomous driving systems (ADSs) are complex cyber-physical systems (CPSs) that must ensure safety even in uncertain conditions. Modern ADSs often employ deep neural networks (DNNs), which may not pr ... [+]
Autonomous driving systems (ADSs) are complex cyber-physical systems (CPSs) that must ensure safety even in uncertain conditions. Modern ADSs often employ deep neural networks (DNNs), which may not produce correct results in every possible driving scenario. Thus, an approach to estimate the confidence of an ADS at runtime is necessary to prevent potentially dangerous situations. In this article we propose MarMot, an online monitoring approach for ADSs based on metamorphic relations (MRs), which are properties of a system that hold among multiple inputs and the corresponding outputs. Using domain-specific MRs, MarMot estimates the uncertainty of the ADS at runtime, allowing the identification of anomalous situations that are likely to cause a faulty behavior of the ADS, such as driving off the road. We perform an empirical assessment of MarMot with five different MRs, using two different subject ADSs, including a small-scale physical ADS and a simulated ADS. Our evaluation encompasses the identification of both external anomalies, e.g., fog, as well as internal anomalies, e.g., faulty DNNs due to mislabeled training data. Our results show that MarMot can identify up to 65% of the external anomalies and 100% of the internal anomalies in the physical ADS, and up to 54% of the external anomalies and 88% of the internal anomalies in the simulated ADS. With these results, MarMot outperforms or is comparable to other state-of-the-art approaches, including SelfOracle, Ensemble, and MC Dropout-based ADS monitors. [-]
Finantzatzailea
Gobierno Vasco
Programa
Elkartek 2022
Elkartek 2022
Ikertalde Convocatoria 2022-2023
Zenbakia
KK-2022/00119
KK-2022/00007
IT1519-22
Proiektua
Edge Technologies for Industrial Distributed AI Applications (EGIA)
Smart, robust, secure and ethical Industrial Systems for Industry 5.0: advanced paradigms for specification, design, evaluation and monitoring (SIIRSE)
Ingeniería de Software y Sistemas (IKERTALDE 2022-2023)
Bildumak
  • Artikuluak - Ingeniaritza [897]

Zerrendatu honako honen arabera

eBiltegia osoaKomunitateak & bildumakArgitalpen dataren araberaEgileakIzenburuakMateriakIkerketa taldeakNon argitaratuaBilduma hauArgitalpen dataren araberaEgileakIzenburuakMateriakIkerketa taldeakNon argitaratua

Nire kontua

SartuErregistratu

Estatistikak

Ikusi erabilearen inguruko estatistikak

Nork bildua:

OpenAIREBASERecolecta

Nork balioztatua:

OpenAIRERebiun
MONDRAGON UNIBERTSITATEA | Biblioteka
Kontaktua | Iradokizunak
DSpace
 

 

Nork bildua:

OpenAIREBASERecolecta

Nork balioztatua:

OpenAIRERebiun
MONDRAGON UNIBERTSITATEA | Biblioteka
Kontaktua | Iradokizunak
DSpace