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A predictive data-driven model for traffic-jams forecasting in smart santader city-scale testbed

机译:智能圣诞老人城市规模测试平台中的交通拥堵预测的预测数据驱动模型

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In this paper, a model for traffic jam prediction using data about traffic, weather and noise is presented. It is based on data coming from a Smart City in Spain called Santander. The project in this city is called ”Smart Santander” and provides a platform for large-scale experiment based on realtime data. This paper demonstrates the possibility of predicting traffic jams and is a basis to integrate in projects to improve the quality of services. In this work, a cross validation method to ratify our training set is proposed. Data intelligence analysis techniques are used for the prediction with an implementation of Neural Network and Decision Tree algorithms. These algorithms are using different parameters coming from Smart Santander and other external sources. Furthermore, a cross validation process is also integrated to improve the final result. The traffic jam prediction for the next 15 minutes reached an accuracy of 99.95%.
机译:在本文中,提出了一种使用交通,天气和噪声数据预测交通拥堵的模型。它基于来自西班牙智慧城市桑坦德的数据。这个城市的项目称为“智能桑坦德”,它为基于实时数据的大规模实验提供了平台。本文演示了预测交通拥堵的可能性,并且是集成到项目中以提高服务质量的基础。在这项工作中,提出了一种交叉验证方法来批准我们的训练集。数据智能分析技术通过神经网络和决策树算法的实现用于预测。这些算法使用的是来自Smart Santander和其他外部来源的不同参数。此外,还集成了交叉验证过程以改善最终结果。接下来15分钟的交通拥堵预测准确度达到99.95%。

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