使用长短期记忆(LSTM)开发乘客人数管理应用程序

Muhammad Davi, Edi Winarko
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引用次数: 0

摘要

公共交通等公共服务与用户满意度密切相关。雅加达巴士之路DKI是东南亚和南亚最早的公共交通服务之一。为了保持乘客的满意度,Busway的管理层不断改善服务,如增加巴士和开辟新的线路。开通新车道或增加公交车也必须随着乘客数量的增加而进行调整。所以要知道未来的乘客数量,就需要通过现有的历史数据来预测乘客数量。历史数据为2015年1月至2016年1月的时间序列数据。在预测中使用的方法是长短期记忆(LSTM),这是机器学习方法之一。使用均方根误差(RMSE)和平均绝对百分比误差(MAPE)来衡量该方法的精度。为了比较LSTM的预测精度,我们还使用了指数平滑方法。根据预测结果,得出RMSE和MAPE的最优和最不优方法是LSTM方法。只有走廊3 LSTM不能提供低于基线值的RMSE和MAPE值。而走廊5 LSTM在数据转换过程中使用指数平滑处理可以得到更好的结果。然而,总体而言,LSTM方法在RMSE和MAPE平均值最低的基础上提供了最好的精度,即RMSE为2640.53,MAPE为9.14%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Rancang Bangun Aplikasi Peramalan Jumlah Penumpang Menggunakan Long Short-Term Memory (LSTM)
Public services such as public transportation are closely related to user satisfaction. Busway DKI Jakarta is one of the first public transportation services in Southeast and South Asia. In order to maintain passenger satisfaction, the management of Busway continues to improve services such as adding buses and opening a new line. Opening a new lane or adding buses must necessarily be adjusted also with the increasing number of passengers. So to know the number of passengers in the future, it is necessary to forecast the number of passengers through existing historical data. The historical data used is time series data from January 2015 to January 2016. The method used in forecasting is Long Short-Term Memory (LSTM), one of the machine learning methods. The method is measured in accuracy using Root Mean Squared Error (RMSE) and Mean Absolute Percentage Error (MAPE). As a comparison of LSTM accuracy in forecasting, we also use the Exponential Smoothing method. Based on the results of forecasting, the most and least dominant method of producing RMSE and MAPE is the LSTM method. Only in corridor 3 LSTM can not provide RMSE and MAPE values below baseline values. While corridor 5 LSTM can give better results after the data transformation process by using exponential smoothing. However, overall the LSTM method provides the best accuracy based on the lowest average RMSE and MAPE values, namely RMSE of 2640.53 and MAPE of 9.14%.
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