LONG SHORT-TERM MEMORY RECURRENT NEURAL NETWORKS FOR SHORT-TERM TRAFFIC PREDICTION AT ROAD INTERSECTIONS

Eyotor I. Ihama, A. V. Amenaghawon
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Abstract

The ability to predict short-term traffic designs enables Intelligent Transport Systems to proactively address potential events before they occur. Given the exponential growth in the volume, quality, and granularity of traffic data, novel techniques are necessary to effectively leverage this information to yield better outcomes while accommodating the ever-increasing data volumes and expanding urban areas. This study proposed a Long Short Term Memory (LSTM) Recurrent Neural Network for traffic prediction at road junctions was proposed and designed for short-term road traffic density prediction utilizing Long Short-Term Memory (LSTM) recurrent neural networks in implementation. The model was trained using the following dataset, vehicle ID, time of the day, vehicle type, weather condition, vehicle type and vehicle condition, obtained from road junctions and kaggle online dataset. The model was evaluated using the stated evaluation metrics, RMSE, SSE, R-Square, and R-Square Adjusted. The following results were obtained; RMSE was 0.128, SSE was 11.406357765197754, R-Square was 0.8670005614171354, and Adjusted R-Square was 0.8570256035234206.
用于道路交叉口短期交通预测的长短期记忆递归神经网络
预测短期交通设计的能力使智能交通系统能够在潜在事件发生之前积极应对。鉴于交通数据的数量、质量和粒度呈指数级增长,有必要采用新技术来有效利用这些信息,以获得更好的结果,同时适应不断增长的数据量和不断扩大的城市区域。本研究提出了一种用于路口交通预测的长短期记忆(LSTM)递归神经网络,利用长短期记忆(LSTM)递归神经网络实现短期道路交通密度预测。该模型使用以下数据集进行训练:车辆 ID、一天中的时间、车辆类型、天气状况、车辆类型和车辆状况,这些数据集来自路口和 kaggle 在线数据集。使用所述评价指标 RMSE、SSE、R-Square 和 R-Square Adjusted 对模型进行了评估。结果如下:RMSE 为 0.128,SSE 为 11.406357765197754,R-Square 为 0.8670005614171354,调整后的 R-Square 为 0.8570256035234206。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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