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Short-term Traffic Flow Prediction Based on Grid Computing Pool Model

机译:基于网格计算池模型的短期交通流量预测

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Traffic flow prediction is one of the important research areas in intelligent transportation system. The key point of dynamic route guidance system is the accurate and prompt information about transportation prediction. The article analyses the characteristics of short-term traffic flow prediction, proposes an optimal resource service method that based on grid computing pool model, builds a traffic flow prediction model based on this method, and predicts the traffic by using genetic algorithm based on higher-order generalized neural networks. In the traffic flow prediction process, the optimal resource service method on the basis of grid computing pool model is utilized to automatically request the best CPU under the current status in traffic information platform to perform the prediction, in order to enhance the service quality and efficiency.
机译:交通流量预测是智能运输系统中的重要研究领域之一。动态路线引导系统的关键点是有关运输预测的准确和迅速的信息。本文分析了短期业务流预测的特性,提出了一种基于网格计算池模型的最佳资源服务方法,基于该方法构建业务流预测模型,并通过基于更高的遗传算法预测流量订购广义​​神经网络。在业务流预测过程中,利用基于网格计算池模型的最佳资源服务方法来在交通信息平台中的当前状态下自动请求最佳CPU以执行预测,以提高服务质量和效率。

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