Predicting Autonomous Vehicle Collision Injury Severity Levels for Ethical Decision Making and Path Planning

12/16/2022
by   James E. Pickering, et al.
0

Developments in autonomous vehicles (AVs) are rapidly advancing and will in the next 20 years become a central part to our society. However, especially in the early stages of deployment, there is expected to be incidents involving AVs. In the event of AV incidents, decisions will need to be made that require ethical decisions, e.g., deciding between colliding into a group of pedestrians or a rigid barrier. For an AV to undertake such ethical decision making and path planning, simulation models of the situation will be required that are used in real-time on-board the AV. These models will enable path planning and ethical decision making to be undertaken based on predetermined collision injury severity levels. In this research, models are developed for the path planning and ethical decision making that predetermine knowledge regarding the possible collision injury severities, i.e., peak deformation of the AV colliding into the rigid barrier or the impact velocity of the AV colliding into a pedestrian. Based on such knowledge and using fuzzy logic, a novel nonlinear weighted utility cost function for the collision injury severity levels is developed. This allows the model-based predicted collision outcomes arising from AV peak deformation and AV-pedestrian impact velocity to be examined separately via weighted utility cost functions with a common structure. The general form of the weighted utility cost function exploits a fuzzy sets approach, thus allowing common utility costs from the two separate utility cost functions to be meaningfully compared. A decision-making algorithm, which makes use of a utilitarian ethical approach, ensures that the AV will always steer onto the path which represents the lowest injury severity level, hence utility cost to society.

READ FULL TEXT
research
08/02/2023

Ethical Decision-making for Autonomous Driving based on LSTM Trajectory Prediction Network

The development of autonomous vehicles has brought a great impact and ch...
research
07/07/2019

Time Distance: A Novel Collision Prediction and Path Planning Method

Motion planning is an active field of research in robot navigation and a...
research
12/06/2019

A pedestrian path-planning model in accordance with obstacle's danger with reinforcement learning

Most microscopic pedestrian navigation models use the concept of "forces...
research
10/24/2022

Informed Sampling-based Collision Avoidance with Least Deviation from the Nominal Path

This paper addresses local path re-planning for n-dimensional systems by...
research
11/26/2020

Predictive Collision Management for Time and Risk Dependent Path Planning

Autonomous agents such as self-driving cars or parcel robots need to rec...
research
06/01/2022

Logic-Based Ethical Planning

In this paper we propose a framework for ethical decision making in the ...
research
09/14/2021

Grounding-aware RRT* for Path Planning and Safe Navigation of Marine Crafts in Confined Waters

The paper presents a path planning algorithm based on RRT* that addresse...

Please sign up or login with your details

Forgot password? Click here to reset