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融合PCA-LPP与DBSCAN的道路交通事故分类及风险等级预测方法

Classifying Road Accidents and Forecasting Level of Risk Based on a Combined PCA-LPP and DBSCAN Method
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摘要 道路交通事故是全球范围内造成大量人员伤亡和财产损失的重大问题之一,通过对道路交通事故进行分类和风险等级预测,能够锁定高风险车辆,以减小事故的发生和人员伤亡的概率。交通事故往往由环境、天气、道路条件、路段设施等多维特征相互作用形成,现有的事故影响分析方法缺乏对交通事故数据的综合研究。为此本文提出1种交通事故分类模型,在传统PCA算法的基础上通过衡量各等级数据间的相似性对数据集进行二次降维,采用改进后降维算法PCA-LPP处理大规模交通事故数据集;利用DBSCAN算法对事故数据划分风险区域,根据迭代训练出的各等级空间对模拟车辆环境进行风险划分。试验结果表明:在大规模交通数据降至不同维度的对比实验中,证明PCA-LPP算法使降维后的特征与样本的类别相关程度更高;同时,利用基于密度的DBSCAN聚类算法处理复杂且伴有偶发性的交通事故数据时,算法的纯度为0.942 9、兰德指数为0.946 2,互信息指数为0.678 4,与K-means、谱聚类等传统算法结果相比,DBSCAN算法的各项评估指标均高于其他算法,从分类效果图发现该模型减少了噪声数据的影响;最后,通过消融实验验证了带有二次降维的PCA-LPP算法的各项评估指标均为最高。其预测结果的混淆矩阵显示该模型对各风险等级的精确率分别为85.77%、70.78%、80.65%,验证了模型的有效性与实用性。 Road traffic accidents are one of the major problems causing large numbers of casualties and property losses worldwide.By classifying road traffic accidents and predicting risk levels,it becomes possible to identify high-risk vehicles and reduce the probability of accidents and casualties.Traffic accidents are often influenced by multiple factors such as environment,weather,road conditions,and infrastructure,but existing accident impact analysis methods lack comprehensive research on traffic accident data.Therefore,this paper proposes a traffic accident classification model that incorporates an improved dimensionality reduction algorithm called PCA-LPP,which measures the similarity between data of different levels to achieve secondary dimensionality reduction.The model utilizes a large-scale traffic accident dataset and applies the DBSCAN algorithm to partition the accident data into risk areas.By training the spatial representations of different risk levels iteratively,the model could assess the risk levels in simulated vehicle environments.Experimental results demonstrate the effectiveness of the proposed approach.Comparative experiments on large-scale traffic data reduced to different dimensions show that the PCA-LPP algorithm achieves higher correlation between the reduced features and sample categories compared to traditional PCA.Moreover,when handling complex and sporadic traffic accident data,the density-based DBSCAN clustering algorithm achieves a purity of 0.9429,a Rand index of 0.9462,and a mutual information index of 0.6784.Comparing these results with traditional algorithms like K-means and spectral clustering,DBSCAN consistently outperforms them in various evaluation metrics.Additionally,visual analysis of the classification results indicates that the proposed model reduces the influence of noisy data.Finally,an ablation experiment confirms that the PCA-LPP algorithm with secondary dimensionality reduction achieves the highest evaluation metrics.The confusion matrix of the prediction results shows that the model achieves precision rates of 85.77%,70.78%,and 80.65%for different risk levels,further validating its effectiveness and practicality.
作者 辛怡 李刚 邓有为 张生鹏 周盼 刘怡阳 XIN Yi;LI Gang;DENG Youwei;ZHANG Shengpeng;ZHOU Pan;LIU Yiyang(School of Electronic and Control Engineering Chang'an University,Xi'an 710064,China;School of Energy and Electrical Engineering,Chang'an University,Xi'an 710064,China)
出处 《交通信息与安全》 CSCD 北大核心 2023年第4期44-54,共11页 Journal of Transport Information and Safety
基金 国家重点研发计划项目(2021YFB2601301) 陕西省重点研发计划项目(2020ZDLGY09-03) 广西重点研发计划项目(桂科AB20159032)资助。
关键词 交通安全 事故等级分类 风险预测 PCA-LPP算法 DBSCAN算法 机器学习 traffic safety accident class classification risk prediction PCA-LPP algorithm DBSCAN algorithm machine learning
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