Gao Huaikun, Li Xu
School of Instrument Science and Engineering, Southeast University, Sipailou 2, Xuanwu District, Nanjing 210096, China.
Sensors (Basel). 2019 Jun 28;19(13):2867. doi: 10.3390/s19132867.
Reliable and precise vehicle positioning is essential for most intelligent transportation applications as well as autonomous driving. Due to satellite signal blocking, it can be challenging to achieve continuous lane-level positioning in GPS-denied environments such as urban canyons and crossroads. In this paper, a positioning strategy utilizing ultra-wide band (UWB) and low-cost onboard sensors is proposed, aimed at tracking vehicles in typical urban scenarios (such as intersections). UWB tech offers the potential of achieving high ranging accuracy through its ability to resolve multipath and penetrate obstacles. However, not line of sight (NLOS) propagation still has a high occurrence in intricate urban intersections and may significantly deteriorate positioning accuracy. Hence, we present an autoregressive integrated moving average (ARIMA) model to first address the NLOS problem. Then, we propose a tightly-coupled multi sensor fusion algorithm, in which the fuzzy calibration logic (FCL) is designed and introduced to adaptively adjust the dependence on each received UWB measurement to effectively mitigate NLOS and multipath interferences. At last, the proposed strategy is evaluated through experiments. Ground test results validate that this low-cost approach has the potential to achieve accurate, reliable and continuous localization, regardless of the GPS working statue.
可靠且精确的车辆定位对于大多数智能交通应用以及自动驾驶至关重要。由于卫星信号受阻,在诸如城市峡谷和十字路口等GPS信号受限的环境中实现连续的车道级定位可能具有挑战性。本文提出了一种利用超宽带(UWB)和低成本车载传感器的定位策略,旨在跟踪典型城市场景(如十字路口)中的车辆。UWB技术凭借其解决多径和穿透障碍物的能力,具有实现高精度测距的潜力。然而,在复杂的城市十字路口,非视距(NLOS)传播仍然频繁发生,可能会显著降低定位精度。因此,我们首先提出一种自回归积分移动平均(ARIMA)模型来解决NLOS问题。然后,我们提出一种紧密耦合的多传感器融合算法,其中设计并引入了模糊校准逻辑(FCL),以自适应地调整对每个接收到的UWB测量值的依赖,从而有效减轻NLOS和多径干扰。最后,通过实验对所提出的策略进行评估。地面测试结果验证了这种低成本方法无论GPS工作状态如何,都有潜力实现准确、可靠和连续的定位。