为智能车辆的一套代表性要求提供理由的特殊性

S. V. Garbuk
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引用次数: 0

摘要

导言(问题陈述和相关性)。确保对具有人工智能元素的机动车辆(人工智能车辆)的信心的关键任务是形成一套具有代表性的要求,遵守这些要求可确保人工智能车辆的功能和安全性得到必要的保证。本研究的目的是分析形成一套具有代表性的人工智能车辆要求的原则。研究方法。本文使用了基于机器学习算法的信息系统质量测量原理,还使用了系统分析、数理统计、组合学、集合论和命题微积分原理等方法。科学新颖性和成果。该方法的制定是为了证明人工智能汽车的一套具有统计代表性的要求,并允许对这些系统是否符合客户、开发商、供应商、监管机构和其他利益相关者的期望进行充分和准确的评估。考虑到人工智能系统的创建和应用,我们对这些期望和优先事项的结构进行了研究。结果表明,利益相关者的要求既适用于人工智能汽车生命周期流程,也适用于考虑到特定(给定)运行条件的系统本身。我们考虑了不同的重要因素,这些因素的变化设定了预期的运行条件,并制定了用于人工智能汽车试验的测试数据集的代表性条件。研究表明,为了降低预期运行条件空间的维度,可以将人工智能汽车分解为独立的功能子系统,然后再分解为单独的人工智能算法。还提出了进行这种功能分解的方法。实践意义:本文提供的要求内容的合理性原则可用于高度自动驾驶汽车中使用的人工智能算法的认证测试。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Peculiarities of justification of a representative set of requirements for intelligent vehicles
Introduction (problem statement and relevance). The key task of ensuring confidence in motor vehicles with elements of artificial intelligence (AI vehicles) is forming of a representative set of requirements compliance with which ensures the necessary guarantees of AI vehicle functionality and safety.Absence of generally accepted and statutory approaches to justification of the requirements content constrains application of artificial intelligence technologies in motor vehicles and, respectively, impedes creation and improvement of highly automated vehicles. The purpose of the study is to analyze the principles of forming of a representative set of requirements for AI vehicles. Methodology and research methods. The paper uses the principles of qualimetry adapted for the information systems based on machine learning algorithms, it also uses the methods of system analysis, mathematical statistics, combinatorics, set theory and propositional calculus principles. Scientific novelty and results. The approach is formulated to justify the statistically representative set of requirements for AI vehicles, and that allows adequate and accurate assessment of compliance of these systems with the expectations of the customers, developers, suppliers, regulatory authorities and other stakeholders. The structure of such expectations and priorities has been considered taking into account creation and application of AI systems. It is shown that stakeholder requirements apply to both the AI vehicle life cycle processes and the systems per se taking into account particular (given) conditions of their operation. Different significant factors, which variability sets the intended operating conditions, have been considered and conditions of representativeness of test data sets used for AI vehicle trials have been formulated. It is shown that, in order to reduce the dimensionality of space of the intended operating conditions, AI vehicles can be decomposed into separate functional subsystems and then into individual AI algorithms. The ways to perform such functional decomposition have been suggested. Practical significance.The principles of justification of the requirements content offered in the paper can be used in certification testing of artificial intelligence algorithms that are used in highly automated vehicles.
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