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考虑路边停车带影响的非机动车压缩交通波模型 被引量:6
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作者 陈峻 王紫 《哈尔滨工业大学学报》 EI CAS CSCD 北大核心 2013年第6期114-118,共5页
为了解析设置于物理分隔非机动车道的路内停车带对于非机动车交通运行的影响,以非机动车集群通行和压缩特性为基础,基于流体力学中的气流分析理论,分别提出了描述机动车辆停放过程影响条件下的非机动车流减速-跟驰和停车的压缩系数计算... 为了解析设置于物理分隔非机动车道的路内停车带对于非机动车交通运行的影响,以非机动车集群通行和压缩特性为基础,基于流体力学中的气流分析理论,分别提出了描述机动车辆停放过程影响条件下的非机动车流减速-跟驰和停车的压缩系数计算方法,进而建立了非机动车压缩交通波模型.应用该模型,提出了非机动车流由于路内停车带设置引起的最不利时刻的排队长度计算方法,并以此为依据,建立了路内停车泊位与上游交叉口最短距离设置方法.以苏州市东中市路实测交通数据为基础,将压缩交通波模型与实际停车波速进行对比,发现相对误差的平均值为8.57%,而合理控制非机动车停车干扰的时间及非机动车流密度两个参数,可以有效降低排队自行车流延伸至上游交叉口,从而缓解交通拥堵和降低交通安全隐患. 展开更多
关键词 非机动车道 路内停车 非机动车交通 压缩交通波
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DENOISING AND HARMONIC DETECTION USING NONORTHOGONAL WAVELET PACKETS IN INDUSTRIAL APPLICATIONS 被引量:1
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作者 P.MERCORELLI 《Journal of Systems Science & Complexity》 SCIE EI CSCD 2007年第3期325-343,共19页
New industrial applications call for new methods and new ideas in signal analysis. Wavelet packets are new tools in industrial applications and they have just recently appeared in projects and patents. In training neu... New industrial applications call for new methods and new ideas in signal analysis. Wavelet packets are new tools in industrial applications and they have just recently appeared in projects and patents. In training neural networks, for the sake of dimensionality and of ratio of time, compact information is needed. This paper deals with simultaneous noise suppression and signal compression of quasi-harmonic signals. A quasi-harmonic signal is a signal with one dominant harmonic and some more sub harmonics in superposition. Such signals often occur in rail vehicle systems, in which noisy signals are present. Typically, they are signals which come from rail overhead power lines and are generated by intermodulation phenomena and radio interferences. An important task is to monitor and recognize them. This paper proposes an algorithm to differentiate discrete signals from their noisy observations using a library of nonorthonormal bases. The algorithm combines the shrinkage technique and techniques in regression analysis using Shannon Entropy function and Cross Entropy function to select the best discernable bases. Cosine and sine wavelet bases in wavelet packets are used. The algorithm is totally general and can be used in many industrial applications. The effectiveness of the proposed method consists of using as few as possible samples of the measured signal and in the meantime highlighting the difference between the noise and the desired signal. The problem is a difficult one, but well posed. In fact, compression reduces the level of the measured noise and undesired signals but introduces the well known compression noise. The goal is to extract a coherent signal from the measured signal which will be "well represented" by suitable waveforms and a noisy signal or incoherent signal which cannot be "compressed well" by the waveforms. Recursive residual iterations with cosine and sine bases allow the extraction of elements of the required signal and the noise. The algorithm that has been developed is utilized as a filter to extract features for training neural networks. It is currently integrated in the inferential modelling platform of the unit for Advanced Control and Simulation Solutions within ABB's industry division. An application using real measured data from an electrical railway line is presented to illustrate and analyze the effectiveness of the proposed method. Another industrial application in fault detection, in which coherent and incoherent signals are univocally visible, is also shown. 展开更多
关键词 Data compression DENOISING rail vehicle control trigonometric bases wavelet packets.
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