Increasing use of sensor data in intelligent transportation systems calls for accurate imputation algorithms that can enable reliable traffic management in the occasional absence of data. As one of the effective imputation approaches, generative adversarial networks (GANs) are implicit generative models that can be used for data imputation, which is formulated as an unsupervised learning problem. This work introduces a novel iterative GAN architecture, called Iterative Generative Adversarial Networks for Imputation (IGANI), for data imputation. IGANI imputes data in two steps and maintains the invertibility of the generative imputer, which will be shown to be a sufficient condition for the convergence of the proposed GAN-based imputation. The performance of our proposed method is evaluated on (1) the imputation of traffic speed data collected in the city of Guangzhou in China, and (2) the training of short-term traffic prediction models using imputed data. It is shown that our proposed algorithm mostly produces more accurate results compared to those of previous GAN-based imputation architectures.
翻译:在智能运输系统中越来越多地使用传感器数据要求精确的估算算法,以便能够在有时缺乏数据的情况下进行可靠的交通管理。作为有效的估算方法之一,基因对抗网络(GANs)是可用于数据估算的隐含的基因模型,这种模型是作为无人监督的学习问题而拟订的。这项工作为数据估算引入了一个新型的迭代GAN结构,称为“自动生成反向网络(IGANI ) 。IGANI 将数据分为两个步骤进行精确的估算法,并保持基因化浸泡器的不可逆性,这将证明这是使拟议的基于GAN的估算方法趋同的充分条件。我们拟议方法的性能评估依据:(1) 中国广州市收集的交通速度数据的估算,(2) 利用估算数据对短期交通预测模型进行培训。我们的拟议算法显示,与以前基于GAN的估算结构相比,多数产生更准确的结果。