登录    注册    忘记密码

详细信息

基于Spark的多阶空间权重矩阵STARIMA交通流预测分析方法    

Spark-based traffic flow prediction analysis using multi-order spatial weighting matrix STARIMA

文献类型:期刊文献

中文题名:基于Spark的多阶空间权重矩阵STARIMA交通流预测分析方法

英文题名:Spark-based traffic flow prediction analysis using multi-order spatial weighting matrix STARIMA

作者:李欣[1]

第一作者:李欣

机构:[1]河南财经政法大学中原经济区"三化"协调发展河南省协同创新中心∥河南财经政法大学资源与环境学院

第一机构:河南财经政法大学资源与环境学院

年份:2018

卷号:57

期号:6

起止页码:41-49

中文期刊名:中山大学学报:自然科学版

收录:CSTPCD;;Scopus;北大核心:【北大核心2017】;CSCD:【CSCD2017_2018】;

基金:国家自然科学基金(41501178;41771445);河南财经政法大学博士科研基金(800257)

语种:中文

中文关键词:Spark;交通流预测;数据清洗;相关性分析;空间权重矩阵

外文关键词:Spark;traffic flow prediction;data cleaning;correlation analysis;spatial weighting matrix

摘要:为了缓解城市拥堵,建立可以预测交通流量的智能交通管理平台。在Spark框架基础上利用孤立点检测算法对实时海量增长的交通流数据进行清洗统计,设计负载均衡规则对数据进行并行注册与存储,通过语义解析和逻辑优化实现分布式语义查询,并利用基于多阶空间权重矩阵STARIMA模型完成交通流预测。通过对比实验证明:(1)交通流数据清洗、统计、注册和存储方法,有效利用了Spark框架的内存计算和迭代计算优势,在大数据环境下,此方法比基于MPI或MapReduce的方法耗时减少60%左右,可以在预测周期内完成数据预处理工作;(2)语义查询方法将所需数据提供给交通流预测模型,模型中的多阶空间权重矩阵可以更加准确的体现交通流多阶分配规律,与动态STARIMA模型相比预测分析的准确度可提高25%左右,可以为交通诱导信息发布提供参考依据。
In order to alleviate urban congestion,it is necessary to establish an intelligent traffic management platform that can predict traffic flow.In this paper,the outlier detection algorithm based on the Spark is used to clean the real-time massive traffic flow data.Load balancing rules are designed for the parallel data registration and storage.Semantic parsing and logical optimization are used to realize distributed semantic queries.And the STARIMA model based on multi-order spatial weight matrix is designed to realize the traffic flow forecasting.By the comparison experiments,it is proved that:①The traffic flow data cleaning,statistics,registration and storage methods effectively utilize the advantages of memory computing and iterative computing of the Spark framework.In the big data environment,this method reduces the time consumption by about 60%compared with the MPI method or MapReduce method.And it can complete the data preprocessing in one prediction cycle.②The semantic query method provides data to the traffic flow prediction model.The multi-order spatial weight matrix of the model can reflect the multi-order traffic flow assignment law more accurately.Compared with the dynamic STARIMA model,the accuracy of prediction analysis can be increased by about 25%.And the method can provide reference for traffic guidance information publication.

参考文献:

正在载入数据...

版权所有©河南财经政法大学 重庆维普资讯有限公司 渝B2-20050021-8 
渝公网安备 50019002500408号 违法和不良信息举报中心