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Monitoring Freeway Incident Detection Using a Hotelling T2 Control Chart

Monitoring Freeway Incident Detection Using a Hotelling T2 Control Chart
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摘要 In real-life freeway transportation system, a few number of incident observation (very rare event) is available while there are large numbers of normal condition dataset. Most of researches on freeway incident detection have considered the incident detection problem as classification one. However, because of insufficiency of incident events, most of previous researches have utilized simulated incident events to develop freeway incident detection models. In order to overcome this drawback, this paper proposes a wavelet-based Hotelling 7a control chart for freeway incident detection, which integrates a wavelet transform into an abnormal detection method. Firstly, wavelet transform extracts useful features from noisy original traffic observations, leading to reduce the dimensionality of input vectors. Then, a Hotelling T2 control chart describes a decision boundary with only normal traffic observations with the selected features in the wavelet domain. Unlike the existing incident detection algorithms, which require lots of incident observations to construct incident detection models, the proposed approach can decide a decision boundary given only normal training observations. The proposed method is evaluated in comparison with California algorithm, Minnesota algorithm and conventional neural networks. The experimental results present that the proposed algorithm in this paper is a promising alternative for freeway automatic incident detections.
出处 《Computer Technology and Application》 2012年第5期361-367,共7页 计算机技术与应用(英文版)
关键词 Freeway incident incident detection algorithms Hotelling T2 control chart wavelet transforms feature selection. 高速公路事件 事件检测 控制图 公路交通系统 流量观测 监控 小波变换 异常检测方法
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参考文献16

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