Anomaly Detection in Connected and Automated Vehicles Using an Augmented State Formulation

Dieser Abstract ist zugänglich
Abstract Summary
In this paper we propose a novel observer-based method for anomaly detection in connected and automated vehicles (CAVs). The proposed method utilizes an augmented extended Kalman filter (AEKF) to smooth sensor readings of a CAV based on a nonlinear car-following motion model with time delay, where the leading vehicle's trajectory is used by the subject vehicle to detect sensor anomalies. We use the classic $chi^2$ fault detector in conjunction with the proposed AEKF for anomaly detection. To make the proposed model more suitable for real-world applications, we consider a stochastic communication time delay in the car-following model. Our experiments conducted on real-world connected vehicle data indicate that the AEKF with $chi^2$-detector can achieve a high anomaly detection performance.
Abstract ID :
FOR21
University of Michigan
666 visits

Social Feeds & Share Buttons

Event Dates

Nov 03, 2020
Nov 05, 2020
Add to Calendar 20201103T0900 20201105T1700 IEEE- Forum ISTS2020
https://forumists2020.dryfta.com/
IEEE- Forum ISTS2020 n.fontein@tudelft.nl

Our Event Apps

Using the event app, attendees can:
  • Update their profile
  • Manage their personal schedule and check-in to sessions
  • Set up 1-to-1 meetings with fellow attendees
  • View sponsors and exhibitors and their representatives, send requests to get their contact details
  • Engage in discussions on the forum

Guests can:
  • Sign up using Facebook or registration form
  • View attendees and speakers, and their publicly available details including submitted abstracts and checked-in sessions.

Exhibitors can:
Use the in-built QR code scanner to scan attendees QR code on their badges and save to their list of vCards (leads). Later those vCards can be exported into Phonebook or in Excel format.

Sponsors

PTV Group logo image
Connekt logo image
POLIS logo image
Smart Mobility Embassy logo image
Transaid logo image
Dynniq logo image
TU Delft logo image
Aimsun logo image