基于驾驶员风险的最高车速曲线数据驱动神经网络模型

IF 5.4 2区 计算机科学 Q1 AUTOMATION & CONTROL SYSTEMS
S. Graffione, A. Bozzi, R. Sacile, E. Zero
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引用次数: 0

摘要

在车辆控制系统领域,首要目标是确保道路使用者的安全。道路车辆的动态特性错综复杂,因此需要高精度的控制。车辆安全包含诸多考虑因素,包括车辆轨迹、当时的交通状况、道路结构和气象因素。本研究使用 SCANeR Studio 软件,利用人类驾驶员数据训练出的人工神经网络(ANN)来评估驾驶员的风险。风险被定义为五级参数,取决于某一情况的潜在危险,其中速度和方向起着至关重要的作用。该系统包含一个模拟器、一个 ANN 和一个显示界面,用于向驾驶员展示周围环境并传达重要信息。这项研究采用了一个模拟驾驶场景,包括一个多车道环形交叉路口,车辆从不同方向行驶,以模拟现实世界中的挑战。风险估计是通过一个时间延迟神经网络(TDNN)来实现的,该网络是根据与所驾驶车辆相关的各种环境信息进行训练的。研究采用积木刀技术进行整体评估,并引入了一种自适应限速设置算法。研究结果证明了延迟神经网络在提高道路安全方面的稳定性、通用性和实际应用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data-driven neural network model for maximum speed profile based on driver risk

In the field of vehicle control systems, the primary objective is to ensure the safety of road users. The intricate dynamics of road vehicles necessitate a high level of precision. Vehicle safety encompasses a multitude of considerations, including vehicle trajectory, prevailing traffic conditions, road structure, and meteorological factors. This study employs an Artificial Neural Network (ANN) trained with human driver data using SCANeR Studio software to evaluate the risk for the driver. The risk has been defined as a five-level parameter, which depends on the potential danger of a situation, where speed and direction play a crucial role. The system incorporates a simulator, an ANN, and a display interface to present the surroundings and communicate important information to the driver. This research employs a simulated driving scenario comprising a multi-lane roundabout with vehicles travelling in different directions to simulate real-world challenges. Risk estimation is achieved through a Time Delay Neural Network (TDNN) trained with various information about the environment in relation to the driven vehicle. The research employs a Jackknife technique for overall evaluation and introduces an adaptive algorithm for speed limit setting. The findings demonstrate the stability, generality, and practical applicability of the ANN in enhancing road safety.

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来源期刊
Control Engineering Practice
Control Engineering Practice 工程技术-工程:电子与电气
CiteScore
9.20
自引率
12.20%
发文量
183
审稿时长
44 days
期刊介绍: Control Engineering Practice strives to meet the needs of industrial practitioners and industrially related academics and researchers. It publishes papers which illustrate the direct application of control theory and its supporting tools in all possible areas of automation. As a result, the journal only contains papers which can be considered to have made significant contributions to the application of advanced control techniques. It is normally expected that practical results should be included, but where simulation only studies are available, it is necessary to demonstrate that the simulation model is representative of a genuine application. Strictly theoretical papers will find a more appropriate home in Control Engineering Practice''s sister publication, Automatica. It is also expected that papers are innovative with respect to the state of the art and are sufficiently detailed for a reader to be able to duplicate the main results of the paper (supplementary material, including datasets, tables, code and any relevant interactive material can be made available and downloaded from the website). The benefits of the presented methods must be made very clear and the new techniques must be compared and contrasted with results obtained using existing methods. Moreover, a thorough analysis of failures that may happen in the design process and implementation can also be part of the paper. The scope of Control Engineering Practice matches the activities of IFAC. Papers demonstrating the contribution of automation and control in improving the performance, quality, productivity, sustainability, resource and energy efficiency, and the manageability of systems and processes for the benefit of mankind and are relevant to industrial practitioners are most welcome.
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