Bao Xu, Li Haijian, Qin Lingqiao, Xu Dongwei, Ran Bin, Rong Jian
Key Laboratory for Traffic and Transportation Security of Jiangsu Province, Huaiyin Institute of Technology, Huai'an 223003, China.
Beijing Key Laboratory of Traffic Engineering, Beijing University of Technology, Beijing 100124, China.
Sensors (Basel). 2016 Oct 27;16(11):1790. doi: 10.3390/s16111790.
To obtain adequate traffic information, the density of traffic sensors should be sufficiently high to cover the entire transportation network. However, deploying sensors densely over the entire network may not be realistic for practical applications due to the budgetary constraints of traffic management agencies. This paper describes several possible spatial distributions of traffic information credibility and proposes corresponding different sensor information credibility functions to describe these spatial distribution properties. A maximum benefit model and its simplified model are proposed to solve the traffic sensor location problem. The relationships between the benefit and the number of sensors are formulated with different sensor information credibility functions. Next, expanding models and algorithms in analytic results are performed. For each case, the maximum benefit, the optimal number and spacing of sensors are obtained and the analytic formulations of the optimal sensor locations are derived as well. Finally, a numerical example is proposed to verify the validity and availability of the proposed models for solving a network sensor location problem. The results show that the optimal number of sensors of segments with different model parameters in an entire freeway network can be calculated. Besides, it can also be concluded that the optimal sensor spacing is independent of end restrictions but dependent on the values of model parameters that represent the physical conditions of sensors and roads.
为了获取足够的交通信息,交通传感器的密度应足够高,以覆盖整个交通网络。然而,由于交通管理机构的预算限制,在整个网络上密集部署传感器在实际应用中可能并不现实。本文描述了交通信息可信度的几种可能空间分布,并提出了相应的不同传感器信息可信度函数来描述这些空间分布特性。提出了一个最大效益模型及其简化模型来解决交通传感器位置问题。效益与传感器数量之间的关系通过不同的传感器信息可信度函数来表述。接下来,对分析结果中的模型和算法进行扩展。对于每种情况,都能得到最大效益、传感器的最优数量和间距,并推导出最优传感器位置的解析公式。最后,给出一个数值例子来验证所提模型在解决网络传感器位置问题方面的有效性和实用性。结果表明,可以计算出整个高速公路网络中具有不同模型参数的路段的最优传感器数量。此外,还可以得出结论,最优传感器间距与端点限制无关,但取决于代表传感器和道路物理条件的模型参数值。