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Application of wavelet technique to freeway incident detection

机译:小波技术在高速公路事故检测中的应用

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This paper presents an application of the wavelet technique to freeway incident detection because wavelet techniques have demonstrated superior performance in detecting changes in signals in electrical engineering. Unlike the existing wavelet incident detection algorithm, where the wavelet technique is utilized to denoise data before the data is input into an algorithm, this paper presents a different approach in the application of the wavelet technique to incident detection. In this approach, the features that are extracted from traffic measurements by using wavelet transformation are directly utilized in detecting changes in traffic flow. It is shown in the paper that the extracted features from traffic measurements in incident conditions are significantly different from those in normal conditions. This characteristic of the wavelet technique was used in developing the wavelet incident detection algorithm in this study. The algorithm was evaluated in comparison with the multi-layer feed-forward neural network, probabilistic neural network, radial basis function neural network, California and low-pass filtering algorithms. The test results indicate that the wavelet incident detection algorithm performs better than other algorithms, demonstrating its potential for practical application.
机译:本文提出了小波技术在高速公路事故检测中的应用,因为小波技术在电气工程中表现出了优异的检测信号变化的性能。与现有的小波事件检测算法不同,在数据输入到算法之前,先采用小波技术对数据进行去噪,本文提出了一种将小波技术应用于事件检测的不同方法。在这种方法中,通过使用小波变换从交通量测量中提取的特征直接用于检测交通量的变化。本文表明,在事故情况下从流量测量中提取的特征与正常情况下的特征有很大不同。本研究将小波技术的这一特性用于开发小波事件检测算法。与多层前馈神经网络,概率神经网络,径向基函数神经网络,加利福尼亚和低通滤波算法进行了比较。测试结果表明,小波事件检测算法的性能优于其他算法,证明了其在实际应用中的潜力。

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