Analyzing the take-over performance in an automated vehicle in terms of cognitive control modes (notice n° 2057346)

détails MARC
000 -LEADER
fixed length control field 03482cam a2200265 4500500
005 - DATE AND TIME OF LATEST TRANSACTION
control field 20260405002408.0
041 ## - LANGUAGE CODE
Language code of text/sound track or separate title fre
042 ## - AUTHENTICATION CODE
Authentication code dc
100 10 - MAIN ENTRY--PERSONAL NAME
Personal name Chauvin, Christine
Relator term author
245 00 - TITLE STATEMENT
Title Analyzing the take-over performance in an automated vehicle in terms of cognitive control modes
260 ## - PUBLICATION, DISTRIBUTION, ETC.
Date of publication, distribution, etc. 2020.<br/>
500 ## - GENERAL NOTE
General note 15
520 ## - SUMMARY, ETC.
Summary, etc. Several studies have pointed out that inter-individual differences could exist in the way drivers interact with an automated vehicle. Some of them revealed that drivers can be classified into different groups according to their behaviour. In line with these studies, the present paper aims at identifying different classes of drivers using clustering methods, according to their behaviour after a Take-Over Request (TOR). It uses the concept of “cognitive control modes” to interpret them.This concept was defined by Hollnagel (1993, 2002) who distinguished different modes of cognitive control, from the most reactive to the most proactive. These modes are associated with different kinds of performance (pattern of actions), which are more or less efficient.This study relies on data collected in a driving simulator experiment, during which 36 participants experienced automated driving at SAE level 3 (SAE J3016, 2018). They were invited to play a game on a tablet placed under the windscreen. The TOR took place in a lane-changing situation. Participants had 10 s to resume control and afterwards had to perform a lane change. The study focused on a condition in which the drivers used an Augmented Reality Head Up Display which aimed to help them build a satisfying awareness of the situation quickly by drawing their attention to the most important features of the driving scene, and to facilitate their understanding. Several kinds of data were considered in order to classify the participants and to explain the resulting classes, these were: drivers’ reactions using in-vehicle data (related to driver control and vehicle movement), eye-tracking data, and verbal data from post-activity interviews.Clustering methods were used to process in-vehicle data. They helped to identify three patterns of data, or “behavioural classes”. Class 1 is related to smooth actions, a positive user experience; participants in this class spent more time looking at the driving scene compared with other classes. Also characterised by smooth actions, Class 2 is related to a more mitigated experience. On the other hand, Class 3 is associated with: abrupt braking actions, a faster lane change, negative user experience; with eye fixations on the game tablet persisting after the TOR, as well as with difficulties in understanding the information displayed.These classes of behaviours have been interpreted in terms of different cognitive control modes: a “tactical” control mode implemented when drivers give themselves enough time to analyse the situation, a “scrambled” or “opportunistic” control mode when they do not.
690 ## - LOCAL SUBJECT ADDED ENTRY--TOPICAL TERM (OCLC, RLIN)
Topical term or geographic name as entry element autonomous cars
690 ## - LOCAL SUBJECT ADDED ENTRY--TOPICAL TERM (OCLC, RLIN)
Topical term or geographic name as entry element crossing decisions
690 ## - LOCAL SUBJECT ADDED ENTRY--TOPICAL TERM (OCLC, RLIN)
Topical term or geographic name as entry element message content
690 ## - LOCAL SUBJECT ADDED ENTRY--TOPICAL TERM (OCLC, RLIN)
Topical term or geographic name as entry element pedestrian
690 ## - LOCAL SUBJECT ADDED ENTRY--TOPICAL TERM (OCLC, RLIN)
Topical term or geographic name as entry element road safety
690 ## - LOCAL SUBJECT ADDED ENTRY--TOPICAL TERM (OCLC, RLIN)
Topical term or geographic name as entry element virtual reality
700 10 - ADDED ENTRY--PERSONAL NAME
Personal name Said, Farida
Relator term author
700 10 - ADDED ENTRY--PERSONAL NAME
Personal name Rauffet, Philippe
Relator term author
700 10 - ADDED ENTRY--PERSONAL NAME
Personal name Langlois, Sabine
Relator term author
786 0# - DATA SOURCE ENTRY
Note Le travail humain | 83 | 4 | 2020-11-26 | p. 379-405 | 0041-1868
856 41 - ELECTRONIC LOCATION AND ACCESS
Uniform Resource Identifier <a href="https://shs.cairn.info/journal-le-travail-humain-2020-4-page-379?lang=en&redirect-ssocas=7080">https://shs.cairn.info/journal-le-travail-humain-2020-4-page-379?lang=en&redirect-ssocas=7080</a>

Pas d'exemplaire disponible.

PLUDOC

PLUDOC est la plateforme unique et centralisée de gestion des bibliothèques physiques et numériques de Guinée administré par le CEDUST. Elle est la plus grande base de données de ressources documentaires pour les Étudiants, Enseignants chercheurs et Chercheurs de Guinée.

Adresse

627 919 101/664 919 101

25 boulevard du commerce
Kaloum, Conakry, Guinée

Réseaux sociaux

Powered by Netsen Group @ 2025