Share

Modeling of Specific Safety-critical Driving Scenarios for Data Synthesis in the Context of Autonomous Driving Software

Download Modeling of Specific Safety-critical Driving Scenarios for Data Synthesis in the Context of Autonomous Driving Software PDF Online Free

Author :
Release : 2020
Genre :
Kind : eBook
Book Rating : 469/5 ( reviews)

GET EBOOK


Book Synopsis Modeling of Specific Safety-critical Driving Scenarios for Data Synthesis in the Context of Autonomous Driving Software by : Nico Schick

Download or read book Modeling of Specific Safety-critical Driving Scenarios for Data Synthesis in the Context of Autonomous Driving Software written by Nico Schick. This book was released on 2020. Available in PDF, EPUB and Kindle. Book excerpt:

Analysis of suitable generative algorithms for the generation of safety-critical driving data in the field of autonomous driving

Download Analysis of suitable generative algorithms for the generation of safety-critical driving data in the field of autonomous driving PDF Online Free

Author :
Release : 2021-06-21
Genre : Computers
Kind : eBook
Book Rating : 536/5 ( reviews)

GET EBOOK


Book Synopsis Analysis of suitable generative algorithms for the generation of safety-critical driving data in the field of autonomous driving by : Nico Schick

Download or read book Analysis of suitable generative algorithms for the generation of safety-critical driving data in the field of autonomous driving written by Nico Schick. This book was released on 2021-06-21. Available in PDF, EPUB and Kindle. Book excerpt: Approximately 3700 people die in traffic accidents each day. The most frequent cause of accidents is human error. Autonomous driving can significantly reduce the number of traffic accidents. To prepare autonomous vehicles for road traffic, the software and system components must be thoroughly validated and tested. However, due to their criticality, there is only a limited amount of data for safety-critical driving scenarios. Such driving scenarios can be represented in the form of time series. These represent the corresponding kinematic vehicle movements by including vectors of time, position coordinates, velocities, and accelerations. There are several ways to provide such data. For example, this can be done in the form of a kinematic model. Alternatively, methods of artificial intelligence or machine learning can be used. These are already being widely used in the development of autonomous vehicles. For example, generative algorithms can be used to generate safety-critical driving data. A novel taxonomy for the generation of time series and suitable generative algorithms will be described in this paper. In addition, a generative algorithm will be recommended and used to demonstrate the generation of time series associated with a typical example of a driving-critical scenario.

Analysis and comparison of similarity measures for validation of generative algorithms in the context of probability density functions

Download Analysis and comparison of similarity measures for validation of generative algorithms in the context of probability density functions PDF Online Free

Author :
Release : 2021-06-21
Genre : Computers
Kind : eBook
Book Rating : 544/5 ( reviews)

GET EBOOK


Book Synopsis Analysis and comparison of similarity measures for validation of generative algorithms in the context of probability density functions by : Roberto Corlito

Download or read book Analysis and comparison of similarity measures for validation of generative algorithms in the context of probability density functions written by Roberto Corlito. This book was released on 2021-06-21. Available in PDF, EPUB and Kindle. Book excerpt: About 3700 people die in traffic accidents every day. Human error is the number one cause of accidents. Autonomous driving can greatly reduce the occurrence of traffic accidents. To release self-driving cars for road traffic, the system including software must be validated and tested efficiently. However, due to their criticality, the amount of data corresponding to safety-critical driving scenarios are limited. These driving scenes can be expressed as a time series. They represent the corresponding movement of the vehicle, including time vector, position coordinates, speed and acceleration. Such data can be provided on different ways. For example, in the form of a kinematic model. Alternatively, artificial intelligence or machine learning methods can be used. They have been widely used in the development of autonomous vehicles. For example, generative algorithms can be used to generate such safety-critical driving data. However, the validation of generative algorithms is a challenge in general. In most cases, their quality is assessed by means of expert knowledge (qualitative). In order to achieve a higher degree of automation, a quantitative validation approach is necessary. Generative algorithms are based on probability distributions or probability density functions. Accordingly, similarity measures can be used to evaluate generative algorithms. In this publication, such similarity measures are described and compared on the basis of defined evaluation criteria. With respect to the use case mentioned, a recommended similarity measure is implemented and validated for an example of a typical safety-critical driving scenario.

Optimal Braking Patterns and Forces in Autonomous Safety-Critical Maneuvers

Download Optimal Braking Patterns and Forces in Autonomous Safety-Critical Maneuvers PDF Online Free

Author :
Release : 2019-05-02
Genre :
Kind : eBook
Book Rating : 012/5 ( reviews)

GET EBOOK


Book Synopsis Optimal Braking Patterns and Forces in Autonomous Safety-Critical Maneuvers by : Victor Fors

Download or read book Optimal Braking Patterns and Forces in Autonomous Safety-Critical Maneuvers written by Victor Fors. This book was released on 2019-05-02. Available in PDF, EPUB and Kindle. Book excerpt: The trend of more advanced driver-assistance features and the development toward autonomous vehicles enable new possibilities in the area of active safety. With more information available in the vehicle about the surrounding traffic and the road ahead, there is the possibility of improved active-safety systems that make use of this information for stability control in safety-critical maneuvers. Such a system could adaptively make a trade-off between controlling the longitudinal, lateral, and rotational dynamics of the vehicle in such a way that the risk of collision is minimized. To support this development, the main aim of this licentiate thesis is to provide new insights into the optimal behavior for autonomous vehicles in safety-critical situations. The knowledge gained have the potential to be used in future vehicle control systems, which can perform maneuvers at-the-limit of vehicle capabilities. Stability control of a vehicle in autonomous safety-critical at-the-limit maneuvers is analyzed by the use of optimal control. Since analytical solutions of the studied optimal control problems are intractable, they are discretized and solved numerically. A formulation of an optimization criterion depending on a single interpolation parameter is introduced, which results in a continuous family of optimal coordinated steering and braking patterns. This formulation provides several new insights into the relation between different braking patterns for vehicles in at-the-limit maneuvers. The braking patterns bridge the gap between optimal lane-keeping control and optimal yaw control, and have the potential to be used for future active-safety systems that can adapt the level of braking to the situation at hand. A new illustration named attainable force volumes is introduced, which effectively shows how the trajectory of a vehicle maneuver relates to the attainable forces over the duration of the maneuver. It is shown that the optimal behavior develops on the boundary surface of the attainable force volume. Applied to lane-keeping control, this indicates a set of control principles similar to those analytically obtained for friction-limited particle models in earlier research, but is shown to result in vehicle behavior close to the globally optimal solution also for more complex models and scenarios.

Criticality Assessment of Simulation Based AV/ADAS Test Scenarios

Download Criticality Assessment of Simulation Based AV/ADAS Test Scenarios PDF Online Free

Author :
Release : 2022
Genre : Automated vehicles
Kind : eBook
Book Rating : /5 ( reviews)

GET EBOOK


Book Synopsis Criticality Assessment of Simulation Based AV/ADAS Test Scenarios by : Bo Shian Chen

Download or read book Criticality Assessment of Simulation Based AV/ADAS Test Scenarios written by Bo Shian Chen. This book was released on 2022. Available in PDF, EPUB and Kindle. Book excerpt: With a fast-paced growth of Automated Driving Systems (ADV) and Advanced Driver Assistance Systems (ADAS), simulation-based validation and verification (V&V) has become an essential way to validate the reliability of the safety algorithms and components before performing the field tests. Virtual driving scenarios typically consist of trajectories of surrounding agents, road geometry, environmental effects, lighting conditions, etc. It is necessary to identify the specific region in the scenario parameter space, that makes the scenario 'critical' such that the ADS features could play an essential role to help the driver avoid accidents. The criticality of the scenario could depend on multiple parameters, such as ego vehicle speed, vehicle dynamics, and other actor’s trajectories. However, the definition of criticality should be independent of the ADS controller or driver models. In this thesis, we propose a novel approach to compute criticality using concepts from optimal control which does not require driver models or any specific controller. The key concept is that the value function obtained from the optimal control solution is an indicator of relative ease in the maneuver and the probability of a safe result. The uniqueness of this concept is that the value function is an outcome of optimal ADS control, and it incorporates crash probability and difficulty of maneuver. Moreover, this approach incorporates modeling uncertainty and stochasticity in perception and localization. In this thesis we demonstrate the approach using three optimal control algorithms namely, dynamic programming (DP), Markov Decision Process iii (MDP), and Reinforcement Learning (RL). This approach has three key phases- 1) develop logical scenarios under several highway situations based on the real crash data, 2) develop an optimal control-based strategy to generate safety-critical simulation scenarios for autonomous vehicle obstacle avoidance maneuvers, and 3) extend the approach further to incorporate modeling uncertainties and calculate the crash probability or the value function. To better demonstrate the proposed approach, an obstacle avoidance driving scenario has been used as an example in this thesis.

You may also like...