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物联网(IoT)平台用于道路能效监测。

Internet-of-Things (IoT) Platform for Road Energy Efficiency Monitoring.

机构信息

Environmental and Resource Engineering, Technical University of Denmark, Nordvej, B119, 2800 Kongens Lyngby, Denmark.

Applied Mathematics and Computer Science, Technical University of Denmark, Richard Petersens Plads, 2800 Kongens Lyngby, Denmark.

出版信息

Sensors (Basel). 2023 Mar 2;23(5):2756. doi: 10.3390/s23052756.

Abstract

The road transportation sector is a dominant and growing energy consumer. Although investigations to quantify the road infrastructure's impact on energy consumption have been carried out, there are currently no standard methods to measure or label the energy efficiency of road networks. Consequently, road agencies and operators are limited to restricted types of data when managing the road network. Moreover, initiatives meant to reduce energy consumption cannot be measured and quantified. This work is, therefore, motivated by the desire to provide road agencies with a road energy efficiency monitoring concept that can provide frequent measurements over large areas across all weather conditions. The proposed system is based on measurements from in-vehicle sensors. The measurements are collected onboard with an Internet-of-Things (IoT) device, then transmitted periodically before being processed, normalized, and saved in a database. The normalization procedure involves modeling the vehicle's primary driving resistances in the driving direction. It is hypothesized that the energy remaining after normalization holds information about wind conditions, vehicle-related inefficiencies, and the physical condition of the road. The new method was first validated utilizing a limited dataset of vehicles driving at a constant speed on a short highway section. Next, the method was applied to data obtained from ten nominally identical electric cars driven over highways and urban roads. The normalized energy was compared with road roughness measurements collected by a standard road profilometer. The average measured energy consumption was 1.55 Wh per 10 m. The average normalized energy consumption was 0.13 and 0.37 Wh per 10 m for highways and urban roads, respectively. A correlation analysis showed that normalized energy consumption was positively correlated to road roughness. The average Pearson correlation coefficient was 0.88 for aggregated data and 0.32 and 0.39 for 1000-m road sections on highways and urban roads, respectively. An increase in IRI of 1 m/km resulted in a 3.4% increase in normalized energy consumption. The results show that the normalized energy holds information about the road roughness. Thus, considering the emergence of connected vehicle technologies, the method seems promising and can potentially be used as a platform for future large-scale road energy efficiency monitoring.

摘要

道路运输部门是主要的能源消耗者和不断增长的能源消耗者。尽管已经进行了量化道路基础设施对能源消耗影响的调查,但目前还没有衡量或标注道路网络能效的标准方法。因此,道路管理机构和运营商在管理道路网络时仅限于有限类型的数据。此外,旨在减少能源消耗的举措无法进行衡量和量化。因此,这项工作的动机是为道路管理机构提供一个道路能效监测概念,该概念可以在所有天气条件下对大面积进行频繁测量。所提出的系统基于车载传感器的测量。使用物联网 (IoT) 设备在车载收集测量值,然后定期传输,在进行处理、标准化和保存在数据库中之前进行传输。标准化过程涉及在行驶方向上对车辆的主要行驶阻力进行建模。假设标准化后的能量剩余信息包含有关风况、车辆相关效率低下以及道路物理状况的信息。该新方法首先使用在短高速公路上以恒定速度行驶的车辆的有限数据集进行验证。然后,该方法应用于在高速公路和城市道路上行驶的十辆名义上相同的电动汽车获得的数据。将归一化能量与标准道路轮廓仪收集的道路粗糙度测量值进行比较。平均测量的能耗为每 10 米 1.55 Wh。高速公路和城市道路的归一化能耗平均值分别为每 10 米 0.13 和 0.37 Wh。相关分析表明,归一化能耗与道路粗糙度呈正相关。汇总数据的平均皮尔逊相关系数为 0.88,高速公路和城市道路上每 1000 米路段的相关系数分别为 0.32 和 0.39。IRI 增加 1 m/km 会导致归一化能耗增加 3.4%。结果表明,归一化能量包含道路粗糙度信息。因此,考虑到联网车辆技术的出现,该方法似乎很有前景,并且可以潜在地用作未来大规模道路能效监测的平台。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a163/10007403/de7f0e227135/sensors-23-02756-g001.jpg

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