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The application of machine learning techniques for driving behavior analysis: A conceptual framework and a systematic literature review

机译:机器学习技术在驾驶行为分析中的应用:概念框架和系统文献综述

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Driving Behavior (DB) is a complex concept describing how the driver operates the vehicle in the context of the driving scene and surrounding environment. Recently, DB assessment has become an emerging topic of great importance. However, in view of to the stochastic nature of driving, measuring and modeling, DB continues to be a challenging topic today. As such, this paper argues that to move forward in understanding the individual and organizational mechanisms influencing DB, a conceptual framework is outlined whereby DB is viewed in terms of different dimensions established within the Driver-Vehicle-Environment (DVE) system. Moreover, DB assessment has been approached by various machine learning (ML) models. Still, there has been no attempt to analyze the empirical evidence on ML models in a systematic way, furthermore, ML based DB models often face problems and raise questions that must be resolved. This article presents a systematic literature review (SLR) of the DB investigation concept; In the first phase, a framework for conceptualizing a holistic approach of the different facets in DB analysis is presented, as well as a scheme to guide the future development and implementation of DB assessment strategies. In the second phase, an overview of the literature on ML is designed, revealing a premier and unbiased survey of the existing empirical research of ML techniques that have been applied to DB analysis. The results of this study identify an interpretive framework incorporating multiple dimensions influencing the driver's conduct, in an attempt to achieve a thorough understanding of the DB concept within the DVE system in which the drivers operate. Additionally, 82 primary studies published during the last decade and eight broadly used ML models were identified. The findings of this review prove the performance capability of the ML techniques for assessing DB. The models using the ML techniques outperform other conventional approaches. However, the application of ML models in DB analysis is still limited and more effort is needed to obtain well-formed and generalizable results. To this end, and based on the outcomes obtained in this work, future guidelines have been provided to practitioners and researchers to grasp the major contributions and challenges in the state-of-the-art research.
机译:驾驶行为(DB)是一个复杂的概念,描述驾驶员在驾驶场景和周围环境中如何操作车辆。最近,数据库评估已成为一个新兴的重要课题。但是,考虑到驾驶,测量和建模的随机性,DB在今天仍然是一个具有挑战性的话题。因此,本文认为,为了进一步理解影响DB的个人和组织机制,概述了一个概念框架,从而可以根据驾驶员-车辆-环境(DVE)系统中建立的不同维度来查看DB。此外,各种机器学习(ML)模型都已采用DB评估。仍然没有尝试以系统的方式分析ML模型的经验证据,此外,基于ML的DB模型经常面临问题并提出必须解决的问题。本文介绍了有关DB调查概念的系统文献综述(SLR)。在第一个阶段中,提出了一个用于概念化数据库分析各个方面的整体方法的框架,以及指导未来数据库评估策略的开发和实施的方案。在第二阶段,设计了有关ML的文献概述,揭示了已应用于DB分析的ML技术的现有经验研究的主要而公正的调查。这项研究的结果确定了一个解释性框架,该框架结合了影响驾驶员行为的多个维度,以试图全面理解驾驶员所操作的DVE系统中的DB概念。此外,还确定了过去十年中发表的82项主要研究和8个广泛使用的ML模型。这次审查的结果证明了ML技术评估数据库的性能。使用ML技术的模型优于其他常规方法。然而,机器学习模型在数据库分析中的应用仍然受到限制,需要付出更多的努力才能获得格式正确且可概括的结果。为此,根据这项工作取得的成果,已向从业人员和研究人员提供了今后的指南,以掌握最新研究的主要贡献和挑战。

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