The adaptive smoothing method (ASM) is a standard data-driven technique used in traffic state estimation. The ASM has free parameters which, in practice, are chosen to be some generally acceptable values based on intuition. However, we note that the heuristically chosen values often result in un-physical predictions by the ASM. In this work, we propose a neural network based on the ASM which tunes those parameters automatically by learning from sparse data from road sensors. We refer to it as the adaptive smoothing neural network (ASNN). We also propose a modified ASNN (MASNN), which makes it a strong learner by using ensemble averaging. The ASNN and MASNN are trained and tested two real-world datasets. Our experiments reveal that the ASNN and the MASNN outperform the conventional ASM.
翻译:适应性平滑法(ASM)是一种标准的数据驱动技术,用于交通州估算。ASM具有自由参数,实际上被选择为基于直觉的某种普遍接受的数值。然而,我们注意到,超自然选择的数值往往导致ASM的非物理预测。在这项工作中,我们提议以ASM为基础的神经网络,通过从道路传感器的稀少数据中学习,自动调和这些参数。我们称之为适应性平滑神经网络(ASNNN)。我们还提议了经修改的ASNNN(MANN),通过使用共同平均标准,使其成为一个强大的学习者。ASNNN和MANNN经过培训和测试的两个真实世界数据集。我们的实验显示,ASNN和MAN(MANS)超越了常规的ASM。