The accurate estimation of time delays is crucial in traffic congestion analysis, as this information can be used to address fundamental questions regarding the origin and propagation of traffic congestion. However, the exact measurement of time delays during congestion remains a challenge owing to the complex propagation process between roads and high uncertainty regarding future behavior. To overcome this challenge, we propose a novel time delay estimation method for the propagation of traffic congestion due to accidents using lag-specific transfer entropy (TE). The proposed method adopts Markov bootstrap techniques to quantify uncertainty in the time delay estimator. To the best of our knowledge, our proposed method is the first to estimate time delays based on causal relationships between adjacent roads. We validated the method's efficacy using simulated data, as well as real user trajectory data obtained from a major GPS navigation system in South Korea.
翻译:准确估计延误时间对于交通拥堵分析至关重要,因为这一信息可用于解决交通拥堵的根源和传播的根本问题;然而,由于道路之间的传播过程复杂,未来行为的不确定性很大,因此准确衡量拥堵时间的延误仍然是一项挑战;为克服这一挑战,我们提出了一个新的时间延迟估计方法,用于利用具体滞后的传输加密(TE)事故造成交通拥堵传播。拟议方法采用Markov靴套技术,在时间延迟的测算器中量化不确定性。据我们所知,我们提出的方法首先根据相邻道路之间的因果关系来估计时间延误。我们利用模拟数据以及从韩国主要全球定位系统导航系统中获取的实际用户轨迹数据验证了该方法的功效。