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Traffic Flow Prediction using SUMO Application with K-Nearest Neighbor (KNN) Method

机译:利用K-Collect邻(KNN)方法的SUMO应用程序的流量预测

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In Indonesia, the density of traffic flow occurs at the time of leaving and returning to work, long holidays or national holidays such as the end of the year (New Year). This annual routine activity is mostly carried out especially in big cities in Indonesia such as Bandung. Because Bandung is a city that has a lot of tourism, Bandung is therefore always the center of visitors to enjoy weekends or long holidays. So from this problem, we want to create a traffic prediction application that can help to solve congestion problems that have become an annual routine. The several types of vehicles used in the prediction are private cars, motorcycles, taxis, public transportation, large buses, mini buses, and mini trucks. Research conducted using the K-Nearest Neighbor method is a prediction of short-term traffic flow on Jl. Riau Bandung. The input used in making predictions is historical data on the number of vehicles going on Jl. Riau Bandung. The output generated from the use of the K-Nearest Neighbor method is the level of the jam class that runs on Jl. Riau Bandung in 2018 used a simulation on the SUMO (Simulation of Urban Mobility) application. The resulting performance of KNN with k = 3 has an accuracy of 99.21%, k = 5 has an accuracy of 99.60%, and k = 7 has an accuracy rate of 99.21% on 90% training data and 10% testing data.
机译:在印度尼西亚,在离开和返回工作,长假或国庆节(如年底)时发生交通流量的密度。这项年度常规活动主要是在印度尼西亚等大城市进行的,如万通。因为万隆是一个有很多旅游的城市,因此万隆永远是游客的中心,可以享受周末或长期假期。因此,从这个问题来看,我们希望创建一个流量预测应用程序,可以帮助解决已成为年程的拥塞问题。预测中使用的几种类型的车辆是私家车,摩托车,出租车,公共交通,大型巴士,迷你巴士和迷你卡车。使用K-CORMATE邻邻方法进行的研究是对JL的短期交通流量的预测。 Riau Bandung。用于制定预测的输入是关于JL上的车辆数量的历史数据。 Riau Bandung。从使用k-collect邻方法生成的输出是在JL上运行的卡纸类的级别。 Riau Bandung于2018年使用了Sumo(城市移动性模拟)应用程序的模拟。 knn的knn的结果具有99.21%的精度,k = 5的精度为99.60%,k = 7的精度率为90%的培训数据和10%的测试数据的准确率为99.21%。

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