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Integration of Weigh-in-Motion (WIM) and inductive signature data for truck body classification

机译:运动称重(WIM)和归纳签名数据的集成,用于卡车车身分类

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Transportation agencies tasked with forecasting freight movements, creating and evaluating policy to mitigate transportation impacts on infrastructure and air quality, and furnishing the data necessary for performance driven investment depend on quality, detailed, and ubiquitous vehicle data. Unfortunately in the US, currently available commercial vehicle data contain critical gaps when it comes to linking vehicle and operational characteristics. Leveraging existing traffic sensor infrastructure, we developed a novel, readily implementable approach of integrating two complementary data collection devices, Weigh-in-Motion (WIM) systems and advanced inductive loop detectors (ILD), to produce high resolution truck data. For each vehicle traversing a WIM site, an inductive signature was collected along with WIM measurements such as axle spacing and weight which were then used as inputs to a series of truck body classification models that encompass all truck classes in the most common axle-based Federal Highway Administration (FHWA) classification scheme in the US. Since body configuration can be linked to commodity carried, drive and duty cycle, and other distinct operating characteristics, body class data is undeniably useful for freight planning and air quality monitoring. A multiple classifier systems (MCS) method was adopted to increase the classification accuracy for minority body classes. In all, eight separate body classifications models were developed from an extensive data set of 18,967 truck records distinguishing an unprecedented total of 23 single unit truck and 31 single and semi-trailer body configurations, each with over 80% correct classification rates (CCR). Remarkably, the body class model for five axle semi-tractor trailers - the most diverse truck category - achieved MCS CCRs above 85% for several industry specific classes including refrigerated and non-refrigerated intermodal containers, livestock, and logging trailers. (C) 2016 Elsevier Ltd. All rights reserved.
机译:运输机构的任务是预测货运量,制定和评估政策以减轻运输对基础设施和空气质量的影响,并提供基于性能的投资所必需的数据,这些数据取决于质量,详细且无处不在的车辆数据。不幸的是,在美国,当链接车辆和操作特性时,当前可用的商用车辆数据包含严重的差距。利用现有的交通传感器基础设施,我们开发了一种新颖,易于实施的方法,该方法将两个互补的数据收集设备,动态称重(WIM)系统和高级感应式环路检测器(ILD)集成在一起,以生成高分辨率的卡车数据。对于在WIM站点上行驶的每辆车,都会收集归纳签名以及WIM测量值(例如轴距和重量),然后将其用作一系列卡车车身分类模型的输入,该模型涵盖了最常见的基于车桥的联邦制中的所有卡车类别美国的公路管理局(FHWA)分类方案。由于车身配置可以与所携带的商品,驾驶和工作周期以及其他不同的运行特性相关联,因此车身类别数据无疑对货运计划和空气质量监控很有用。采用了多分类器系统(MCS)方法来提高少数群体类别的分类准确性。总共从18,967辆卡车记录的广泛数据集中开发了八个单独的车身分类模型,这些模型区分了空前的23辆单车卡车以及31辆单挂车和半挂车车身配置,每一个都具有80%以上的正确分类率(CCR)。值得注意的是,五轴半挂牵引车的车体类别模型-最多样化的卡车类别-包括冷藏和非冷藏联运集装箱,牲畜和伐木拖车在内的多个行业特定类别的MCS CCR达到了85%以上。 (C)2016 Elsevier Ltd.保留所有权利。

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