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Fusing Incomplete Multisensor Heterogeneous Data to Estimate Urban Traffic

机译:融合不完整的多传感器异构数据以估计城市交通

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摘要

Today, data-driven intelligent transportation systems must address data quality challenges, such as the missing data problem. For example, is it possible to improve the performance of traffic state estimation using incomplete data? In this article, an incomplete traffic data fusing method is proposed to estimate traffic state accurately. It improves missing data estimation by extracting data correlations and applying incomplete data fusion, implementing the two approaches in parallel. The main research focus is on extracting the inherent spatio-temporal correlations of traffic states data from road segments based on a multiple linear regression (MLR) model. Computational experiments for accuracy and efficiency demonstrate that this method can use data correlations to implement accurate and real-time traffic state estimation. This article is part of a special issue on quality modeling.
机译:如今,数据驱动的智能运输系统必须解决数据质量挑战,例如数据丢失问题。例如,是否可以使用不完整的数据来提高交通状态估算的性能?本文提出了一种不完整的交通数据融合方法来准确估计交通状态。它通过提取数据相关性和应用不完整的数据融合来改进丢失的数据估计,同时实现这两种方法。主要研究重点是基于多元线性回归(MLR)模型从路段提取交通状态数据的固有时空相关性。针对准确性和效率的计算实验表明,该方法可以使用数据相关性来实现准确和实时的交通状态估计。本文是有关质量建模的特殊问题的一部分。

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