基于物联网的车辆网络交通管理非线性预测模型

IF 3.6
Zhijie Peng , Lili Yin
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引用次数: 0

摘要

针对物联网驱动的车辆网络交通管理,提出了一种新的非线性预测模型。当前的交通预测系统使用线性模型,不能描述高度非线性的城市交通动态。我们将实时物联网传感器数据与针对流量预测优化的双层长短期记忆(LSTM)神经网络架构集成在一起。系统架构由三个空间分离的层组成:用于数据采集的物联网传感器网络、用于实时数据处理的管道和用于可视化的用户界面。在6个月时,35个战略城市站点的均方误差(0.0842)、平均绝对误差(0.0623)和R²评分(0.9187)的预测精度平均较好。它在早高峰时段实现了92%的预测准确率,在任何负载条件下,98.5%的预测的响应时间保持在200毫秒。系统弹性测试包括99.95%的正常运行时间,即使在15%的传感器故障的情况下也能正常运行。极端天气条件和数据缺口带来的挑战仍然存在;然而,该研究有助于对非线性交通动力学的理论认识和智慧城市发展的实际应用。虽然本文提出的系统为更智能、更自适应的城市交通解决方案铺平了道路,以显著减少拥堵,提高交通管理效率,但在交通数据的获取、通勤行为现象以及乘客暴露的数学模型方面仍存在一些问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Nonlinear prediction model of vehicle network traffic management based on the internet of things
This research presents a novel nonlinear prediction model for Internet of Things (IoT) driven vehicle network traffic management. Current traffic prediction systems use linear models that do not characterize the highly nonlinear urban traffic dynamics. We integrate real-time IoT sensor data with a dual-layer long short-term memory (LSTM) neural network architecture optimised for traffic prediction. System architecture consists of three spatially separated layers: IoT sensor network for data collection, real-time data processing pipeline and the user interface for visualization. The predictive accuracy in terms of Mean Squared Error (0.0842), Mean Absolute Error (0.0623) and the R² score (0.9187) was better on average for 35 strategic urban sites at 6 months. It achieved a 92 % prediction accuracy during morning peak hours and maintained response times <200 ms for 98.5 % of predictions under any load conditions. The system resilience testing involved 99.95 % uptime with robust operation even with 15 % of the sensors failing. Challenges with extreme weather conditions and data gaps still exist; however, this research contributes to theoretical understanding of nonlinear traffic dynamics and practical applications for smart city development. While the system presented here paves the way for more intelligent, adaptive solutions to Urban Mobility to reduce congestion significantly and improve traffic management efficiency, there still exist issues regarding the acquisition of traffic data, the phenomenon of commuting behavior, and only rudimentary efforts to mathematically model passenger exposure.
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