Design of an intelligent post-diagnosis decision support system for highly automated trucks

Xin Tao , Lina Rylander , Jonas Mårtensson
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引用次数: 0

Abstract

In recent years, advancements in autonomous driving technologies have accelerated the commercialization of highly automated trucks. This shift away from human drivers raises concerns about the loss of critical functions, particularly in post-diagnosis decision-making, which relies on human inputs in the current practice. This paper outlines the current post-diagnosis decision-making process for human-driven trucks, drawing on insights from industry practitioners, and systematically identifies gaps between these practices and the requirements for highly automated trucks. We propose a comprehensive design of an intelligent decision support system (DSS) to address these gaps. The design includes conducting a system impact analysis to identify new stakeholders, proposing a new DSS architecture with review and learning functions, and concretizing various potentially effective decision-making models and information inputs. Using a real-world freight delivery scenario and a risk-based decision-making approach, we present a case study to instantiate the DSS design, including graphical user interface designs and a step-by-step use case scenario. This work aims to adapt post-diagnosis decision-making for automated trucks at both technological and managerial levels, thereby enhancing vehicle reliability and transport efficiency.
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高度自动化卡车智能诊断后决策支持系统设计
近年来,自动驾驶技术的进步加速了高度自动化卡车的商业化。这种远离人类驾驶员的转变引起了人们对关键功能丧失的担忧,特别是在诊断后决策方面,目前的做法依赖于人类的输入。本文概述了目前人工驾驶卡车的诊断后决策过程,借鉴了行业从业者的见解,并系统地确定了这些实践与高度自动化卡车需求之间的差距。我们提出了一个智能决策支持系统(DSS)的综合设计来解决这些差距。该设计包括进行系统影响分析以识别新的利益相关者,提出具有审查和学习功能的新的决策支持体系结构,并具体化各种可能有效的决策模型和信息输入。使用真实世界的货运场景和基于风险的决策方法,我们提出了一个案例研究来实例化DSS设计,包括图形用户界面设计和一步一步的用例场景。这项工作旨在从技术和管理层面适应自动驾驶卡车的诊断后决策,从而提高车辆的可靠性和运输效率。
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来源期刊
Transportation Research Interdisciplinary Perspectives
Transportation Research Interdisciplinary Perspectives Engineering-Automotive Engineering
CiteScore
12.90
自引率
0.00%
发文量
185
审稿时长
22 weeks
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