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Large-scale real-time traffic flow prediction method based on fuzzy logic and deep LSTM

机译:基于模糊逻辑和深层LSTM的大规模实时交通流预测方法

摘要

A large-scale real-time traffic flow prediction method of the present invention is based on fuzzy logic and deep LSTM, which relates to a technical field of urban intelligent traffic management. The method includes steps of: selecting an urban road network scene to collect color images of real-time traffic flow congestion information; obtaining congestion levels of multiple intersections according to the color images, which are used in a data training set; and forming a data sensing end of FDFP through a fuzzy mechanism; establishing a deep LSTM neural network, performing deep learning on the training data set, and constructing a prediction end of the FDFP; construct a graph of road intersections and formulate a k-nearest neighbors-based discounted averaging for obtaining congestion on the edges; and inputting real-time traffic information received from a server into an FDFP model.
机译:本发明的大规模实时业务流预测方法是基于模糊逻辑和深层LSTM,其涉及城市智能交通管理技术领域。该方法包括步骤:选择城市道路网络场景,收集实时交通流动信息的彩色图像;根据数据训练集使用的彩色图像获得多个交叉点的拥塞水平;并通过模糊机制形成FDFP的数据感测结束;建立深层LSTM神经网络,对训练数据集进行深度学习,并构建FDFP的预测结束;构建道路交叉口的图表,并制定基于K-CircleS邻居的折扣平均,以获得边缘的拥塞;并将从服务器接收的实时业务信息输入到FDFP模型中。

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