通过智能称重优化南非货运走廊的交通控制中心

Q3 Social Sciences
Arno De Coning, A. Hoffman, Francois Mouton
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引用次数: 0

摘要

高质量的道路基础设施对支持任何地区的经济增长都至关重要。对于南非这个内陆经济中心来说,79%的货物是通过公路基础设施运输的。道路基础设施的保护是通过在货运走廊上的交通控制中心进行超载控制监测来实现的。从TCC运营中收集的统计数据表明,75%至85%的静态称重车辆是合法装载的,这意味着这些车辆浪费了不必要的时间。因此,本文提出了一种称为智能动态称重(IWIM)算法的算法,目的是通过在货运走廊上的TC之间实现数据共享,并结合对这些数据的智能解释,来减少车辆的静态称重。所选算法是在测试了多个人工智能(AI)模型(逻辑回归、随机森林树和人工神经网络)后选择的,以实现最佳性能,减少车辆的静态称重,同时不增加允许在走廊上行驶的超载车辆数量。与当前部队派遣国采用的基于规则的系统相比,区分超载车辆和合法车辆的最佳模型随机森林树在静态称重车辆方面实现了65,83%的平均改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Traffic control centre optimisation on South African freight corridors through intelligent weigh-in-motion
High quality road infrastructure is essential to support economic growth for any region. For South Africa’s landlocked economic hub 79% of goods are transported using roads infrastructure. Protection of the road infrastructure is implemented by means of overload control monitoring at traffic control centres (TCCs) on freight corridors. Statistics collected from TCC operations indicate that 75% to 85% of statically weighed vehicles are legally loaded, with the implication that unnecessary time was wasted for these vehicles. This paper therefore proposes an algorithm, called the intelligent weigh-in-motion (IWIM) algorithm, with the purpose to decrease static weighing of vehicles by implementing data sharing between TCCs on the freight corridor, combined with intelligent interpretation of this data. The selected algorithm was chosen after testing multiple artificial intelligence (AI) models (logistic regression, random forest tree, and artificial neural network) to achieve the best performance to decrease static weighing of vehicles while not increasing the number of overloaded vehicles allowed to proceed on the corridor. The best performing model to differentiate between overloaded and legal vehicles, random forest tree, achieved an average improvement of 65,83% in terms of vehicles to be statically weighed when compared to the current rule-based system employed at TCCs.
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来源期刊
South African Computer Journal
South African Computer Journal Social Sciences-Education
CiteScore
1.30
自引率
0.00%
发文量
10
审稿时长
24 weeks
期刊介绍: The South African Computer Journal is specialist ICT academic journal, accredited by the South African Department of Higher Education and Training SACJ publishes research articles, viewpoints and communications in English in Computer Science and Information Systems.
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