Smart Automotive Technology Adherence to the Law: (De)Constructing Road Rules for Autonomous System Development, Verification and Safety
Scott McLachlan, Martin Neil, Kudakwashe Dube, Ronny Bogani, Norman, Fenton, and Burkhard Schaffer

TL;DR
This paper introduces a structured approach to translating complex traffic laws into formal logic and visual models to aid in developing and validating autonomous vehicle systems that comply with legal requirements.
Contribution
It presents a novel method for deconstructing legal traffic rules into structured English logic and visual models, facilitating AI development and validation for autonomous vehicles.
Findings
Constructed legal rules using Boolean logic and Lawmaps
Validated the approach with a Bayesian Network model
Tools are accessible for programmers and the public
Abstract
Driving is an intuitive task that requires skills, constant alertness and vigilance for unexpected events. The driving task also requires long concentration spans focusing on the entire task for prolonged periods, and sophisticated negotiation skills with other road users, including wild animals. These requirements are particularly important when approaching intersections, overtaking, giving way, merging, turning and while adhering to the vast body of road rules. Modern motor vehicles now include an array of smart assistive and autonomous driving systems capable of subsuming some, most, or in limited cases, all of the driving task. The UK Department of Transport's response to the Safe Use of Automated Lane Keeping System consultation proposes that these systems are tested for compliance with relevant traffic rules. Building these smart automotive systems requires software developers…
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