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Artificial Intelligence for Connected and Automated Vehicles

A special issue of Applied Sciences (ISSN 2076-3417). This special issue belongs to the section "Mechanical Engineering".

Deadline for manuscript submissions: closed (10 November 2021) | Viewed by 25149

Special Issue Editors


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Guest Editor
1. School of Mechanical, Aerospace and Automotive Engineering, Faculty of Engineering, Environment and Computing, Coventry University, Coventry CV1 5FB, UK
2. Head of School of Engineering, Coventry University Egypt branch
Interests: motion control; active dynamics and self-learning systems; artificial intelligence
Special Issues, Collections and Topics in MDPI journals

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Guest Editor
Transportation Systems, Aristotle University of Thessaloniki, 54124 Thessaloniki, Greece
Interests: intelligent transport systems

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Guest Editor
School of Civil Engineering, Faculty of Engineering, Aristotle University of Thessaloniki, P.O. Box 452, 541 24 Thessaloniki, Greece
Interests: transportation; mobility; road safety; accessibility; intelligent transportation systems; traffic psychology
Special Issues, Collections and Topics in MDPI journals

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Co-Guest Editor
Head of Functional Safety Arrival/Roborace, Saint Petersburg, Russia
Interests: functional safety; autonomous driving; vehicle & lightweight truck design; safety; reliability

Special Issue Information

Dear Colleagues,

Connected and automated vehicles (CAVs) will provide greater transport convenience and interconnectivity, increase mobility options for young and elderly people, and reduce traffic accidents, congestion and emissions by exploiting Artificial Intelligence and communication technologies. At the same time, major barriers towards the public deployment of CAVs and the realization of smart cities exist, including the safety evaluation and validation of Artificial Intelligence-based vehicle functions. This Special Issue aims to bring together recent advances in methods and tools in the areas of deep learning, knowledge discovery and forecasting, as well as testing and validation, to make connected and automated vehicles efficient and safe. Particularly, we invite contributions that identify and provide insight into the limitations of Artificial Intelligence-based functions for connected and automated vehicles and/or advance the state of the art by breaking existing limitations.

Prof. Dr. Stratis Kanarachos
Prof. Dr. Aristotelis Naniopoulos
Dr. Dimitrios Nalmpantis
Dr. Vasile Palade
Guest Editors

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Keywords

  • Deep Learning
  • Deep Neural Networks
  • Connected Vehicles
  • Automated Vehicles
  • Big Data
  • Smart Cities

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Published Papers (6 papers)

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Research

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23 pages, 3995 KiB  
Article
Learning to Localise Automated Vehicles in Challenging Environments Using Inertial Navigation Systems (INS)
by Uche Onyekpe, Vasile Palade and Stratis Kanarachos
Appl. Sci. 2021, 11(3), 1270; https://doi.org/10.3390/app11031270 - 30 Jan 2021
Cited by 24 | Viewed by 4109
Abstract
An approach based on Artificial Neural Networks is proposed in this paper to improve the localisation accuracy of Inertial Navigation Systems (INS)/Global Navigation Satellite System (GNSS) based aided navigation during the absence of GNSS signals. The INS can be used to continuously position [...] Read more.
An approach based on Artificial Neural Networks is proposed in this paper to improve the localisation accuracy of Inertial Navigation Systems (INS)/Global Navigation Satellite System (GNSS) based aided navigation during the absence of GNSS signals. The INS can be used to continuously position autonomous vehicles during GNSS signal losses around urban canyons, bridges, tunnels and trees, however, it suffers from unbounded exponential error drifts cascaded over time during the multiple integrations of the accelerometer and gyroscope measurements to position. More so, the error drift is characterised by a pattern dependent on time. This paper proposes several efficient neural network-based solutions to estimate the error drifts using Recurrent Neural Networks, such as the Input Delay Neural Network (IDNN), Long Short-Term Memory (LSTM), Vanilla Recurrent Neural Network (vRNN), and Gated Recurrent Unit (GRU). In contrast to previous papers published in literature, which focused on travel routes that do not take complex driving scenarios into consideration, this paper investigates the performance of the proposed methods on challenging scenarios, such as hard brake, roundabouts, sharp cornering, successive left and right turns and quick changes in vehicular acceleration across numerous test sequences. The results obtained show that the Neural Network-based approaches are able to provide up to 89.55% improvement on the INS displacement estimation and 93.35% on the INS orientation rate estimation. Full article
(This article belongs to the Special Issue Artificial Intelligence for Connected and Automated Vehicles)
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23 pages, 644 KiB  
Article
Scenario Optimisation and Sensitivity Analysis for Safe Automated Driving Using Gaussian Processes
by Felix Batsch, Alireza Daneshkhah, Vasile Palade and Madeline Cheah
Appl. Sci. 2021, 11(2), 775; https://doi.org/10.3390/app11020775 - 15 Jan 2021
Cited by 16 | Viewed by 3638
Abstract
Assuring the safety of automated vehicles is essential for their timely introduction and acceptance by policymakers and the public. To assess their safe design and robust decision making in response to all possible scenarios, new methods that use a scenario-based testing approach are [...] Read more.
Assuring the safety of automated vehicles is essential for their timely introduction and acceptance by policymakers and the public. To assess their safe design and robust decision making in response to all possible scenarios, new methods that use a scenario-based testing approach are needed, as testing on public roads in normal traffic would require driving millions of kilometres. We make use of the scenario-based testing approach and propose a method to model simulated scenarios using Gaussian Process based models to predict untested scenario outcomes. This enables us to efficiently determine the performance boundary, where the safe and unsafe scenarios can be evidently distinguished from each other. We present an iterative method that optimises the parameter space of a logical scenario towards the most critical scenarios on this performance boundary. Additionally, we conduct a novel probabilistic sensitivity analysis by efficiently computing several variance-based sensitivity indices using the Gaussian Process models and evaluate the relative importance of the scenario input parameters on the scenario outcome. We critically evaluate and investigate the usefulness of the proposed Gaussian Process based approach as a very efficient surrogate model, which can model the logical scenarios effectively in the presence of uncertainty. The proposed approach is applied on an exemplary logical scenario and shows viability in finding concrete critical scenarios. The reported results, derived from the proposed approach, could pave the way to more efficient testing of automated vehicles and instruct further physical tests on the determined critical scenarios. Full article
(This article belongs to the Special Issue Artificial Intelligence for Connected and Automated Vehicles)
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21 pages, 1080 KiB  
Article
Generation of Pedestrian Crossing Scenarios Using Ped-Cross Generative Adversarial Network
by James Spooner, Vasile Palade, Madeline Cheah, Stratis Kanarachos and Alireza Daneshkhah
Appl. Sci. 2021, 11(2), 471; https://doi.org/10.3390/app11020471 - 6 Jan 2021
Cited by 15 | Viewed by 2901
Abstract
The safety of vulnerable road users is of paramount importance as transport moves towards fully automated driving. The richness of real-world data required for testing autonomous vehicles is limited and furthermore, available data do not present a fair representation of different scenarios and [...] Read more.
The safety of vulnerable road users is of paramount importance as transport moves towards fully automated driving. The richness of real-world data required for testing autonomous vehicles is limited and furthermore, available data do not present a fair representation of different scenarios and rare events. Before deploying autonomous vehicles publicly, their abilities must reach a safety threshold, not least with regards to vulnerable road users, such as pedestrians. In this paper, we present a novel Generative Adversarial Networks named the Ped-Cross GAN. Ped-Cross GAN is able to generate crossing sequences of pedestrians in the form of human pose sequences. The Ped-Cross GAN is trained with the Pedestrian Scenario dataset. The novel Pedestrian Scenario dataset, derived from existing datasets, enables training on richer pedestrian scenarios. We demonstrate an example of its use through training and testing the Ped-Cross GAN. The results show that the Ped-Cross GAN is able to generate new crossing scenarios that are of the same distribution from those contained in the Pedestrian Scenario dataset. Having a method with these capabilities is important for the future of transport, as it will allow for the adequate testing of Connected and Autonomous Vehicles on how they correctly perceive the intention of pedestrians crossing the street, ultimately leading to fewer pedestrian casualties on our roads. Full article
(This article belongs to the Special Issue Artificial Intelligence for Connected and Automated Vehicles)
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18 pages, 2002 KiB  
Article
Data-Driven Test Scenario Generation for Cooperative Maneuver Planning on Highways
by Christian Knies and Frank Diermeyer
Appl. Sci. 2020, 10(22), 8154; https://doi.org/10.3390/app10228154 - 18 Nov 2020
Cited by 13 | Viewed by 3048
Abstract
Future automated vehicles will have to meet the challenge of anticipating the intentions of other road users in order to plan their own behavior without compromising safety and efficiency of the surrounding road traffic. Therefore, the research area of cooperative driving deals with [...] Read more.
Future automated vehicles will have to meet the challenge of anticipating the intentions of other road users in order to plan their own behavior without compromising safety and efficiency of the surrounding road traffic. Therefore, the research area of cooperative driving deals with maneuver-planning algorithms that enable vehicles to behave cooperatively in interactive traffic scenarios. To prove the functionality of these algorithms, single test scenarios are used in the current body of literature. The use of a single, exemplary scenario bears the risk that the presented approach only works in the presented scenario and thus no general statement can be made about the performance of the algorithm. Furthermore, there is a risk that fictitious traffic scenarios may be solved which do not occur in reality. Therefore, we present a procedure for generating test scenarios based on real-world traffic datasets that require cooperation of at least one of the involved vehicles and thus are challenging from the perspective of cooperation. This procedure is applied to a large highway traffic dataset, resulting in a test scenario catalog that allows a comprehensive performance evaluation. The extracted scenarios are clustered according to the cooperative actions used to solve the respective scenario, which enables a more detailed understanding of the underlying cooperative mechanisms. In order to serve as a basis for making comparisons between different behavior planners and thus contribute to the development of future maneuver planning algorithms, a tool to extract the test scenarios from the used traffic dataset is made publicly available. Full article
(This article belongs to the Special Issue Artificial Intelligence for Connected and Automated Vehicles)
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20 pages, 6471 KiB  
Article
A Steering-Following Dynamic Model with Driver’s NMS Characteristic for Human-Vehicle Shared Control
by Hanbing Wei, Yanhong Wu, Xing Chen and Jin Xu
Appl. Sci. 2020, 10(7), 2626; https://doi.org/10.3390/app10072626 - 10 Apr 2020
Cited by 5 | Viewed by 3013
Abstract
For investigating driver characteristic as well as control authority allocation during the process of human–vehicle shared control (HVSC) for an autonomous vehicle (AV), a HVSC dynamic mode with a driver’s neuromuscular (NMS) state parameters was proposed in this paper. It takes into account [...] Read more.
For investigating driver characteristic as well as control authority allocation during the process of human–vehicle shared control (HVSC) for an autonomous vehicle (AV), a HVSC dynamic mode with a driver’s neuromuscular (NMS) state parameters was proposed in this paper. It takes into account the driver’s NMS characteristics such as stretch reflection and reflex stiffness. By designing a model predictive control (MPC) controller, the vehicle’s state feedback and driver’s state are incorporated to construct the HVSC dynamic model. For the validation of the model, a field experiment was conducted. The vehicle state signals are collected by V-BOX, and the driver’s state signals are obtained with the electromyography instrument. Subsequently, the hierarchical least square (HLS) parameter identification algorithm was implemented to identify the parameters of the model based on the experimental results. Moreover, the Unscented Kalman Filter (UKF) was utilized to estimate the important NMS parameters which cannot be measured directly. The experimental results showed that the model we proposed has excellent accuracy in characterizing the vehicle’s dynamic state and estimating the driver’s NMS parameter. This paper will serve as a theoretical basis for the new control strategy allocation between human and vehicle for L3 class AVs. Full article
(This article belongs to the Special Issue Artificial Intelligence for Connected and Automated Vehicles)
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Review

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26 pages, 490 KiB  
Review
Variable Speed Limit and Ramp Metering for Mixed Traffic Flows: A Review and Open Questions
by Filip Vrbanić, Edouard Ivanjko, Krešimir Kušić and Dino Čakija
Appl. Sci. 2021, 11(6), 2574; https://doi.org/10.3390/app11062574 - 13 Mar 2021
Cited by 38 | Viewed by 6729
Abstract
The trend of increasing traffic demand is causing congestion on existing urban roads, including urban motorways, resulting in a decrease in Level of Service (LoS) and safety, and an increase in fuel consumption. Lack of space and non-compliance with cities’ sustainable urban plans [...] Read more.
The trend of increasing traffic demand is causing congestion on existing urban roads, including urban motorways, resulting in a decrease in Level of Service (LoS) and safety, and an increase in fuel consumption. Lack of space and non-compliance with cities’ sustainable urban plans prevent the expansion of new transport infrastructure in some urban areas. To alleviate the aforementioned problems, appropriate solutions come from the domain of Intelligent Transportation Systems by implementing traffic control services. Those services include Variable Speed Limit (VSL) and Ramp Metering (RM) for urban motorways. VSL reduces the speed of incoming vehicles to a bottleneck area, and RM limits the inflow through on-ramps. In addition, with the increasing development of Autonomous Vehicles (AVs) and Connected AVs (CAVs), new opportunities for traffic control are emerging. VSL and RM can reduce traffic congestion on urban motorways, especially so in the case of mixed traffic flows where AVs and CAVs can fully comply with the control system output. Currently, there is no existing overview of control algorithms and applications for VSL and RM in mixed traffic flows. Therefore, we present a comprehensive survey of VSL and RM control algorithms including the most recent reinforcement learning-based approaches. Best practices for mixed traffic flow control are summarized and new viewpoints and future research directions are presented, including an overview of the currently open research questions. Full article
(This article belongs to the Special Issue Artificial Intelligence for Connected and Automated Vehicles)
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