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Novel method of data compression for the online detection signal of coal mine wire rope

机译:煤矿线绳在线检测信号的数据压缩新方法

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摘要

Coal mine wire rope detection is related to personnel and production safety. With the Chinese coal mining trend tending towards deep mining, a considerable amount of data is critical for the online detection of deep well lifting wire rope. To improve the sampling rate, decrease the analysis processing time and realise real-time online detection, this paper proposes an online detection data compression processing method. The study focuses on the distortion compression method for the online detection signal of deep well hoisting wire rope. The set partitioning in hierarchical trees (SPIHT) algorithm is one of the most advanced methods in the field of image transformation coding. Compared with other coding algorithms, the SPIHT algorithm demonstrates desired characteristics such as a high signal-to-noise ratio, lower complexity and decreased computational load, among others. This paper discusses how, in combination with the image processing method, a compression coding method for the one-dimensional signal of the magnetic leakage detection of the mining wire rope is developed. Furthermore, the set partitioning sorting algorithm is investigated and analysed, the temporal orientation tree structure of the one-dimensional signal of the wavelet coefficient is defined for wire rope magnetic leakage detection and the SPIHT algorithm is presented, in addition to an example of the one-dimensional signal from the magnetic leakage detection of the wire rope. The results reveal that under the condition of the normalised mean square error (NMSE; NMSE <0.01) of distortion, the compression ratio improved by 30%. The online detection signal lossy compression method proposed in this study has a considerable influence on the recovery of the original signal, in addition to a higher compression ratio and a reduced computation time, compared to the existing method.
机译:煤矿钢丝绳检测与人员和生产安全有关。随着中国煤炭采矿趋势趋向于深度挖掘,大量数据对于深井升降钢丝绳的在线检测至关重要。为了提高采样率,降低分析处理时间并实现实时在线检测,本文提出了一种在线检测数据压缩处理方法。该研究侧重于深井吊丝绳的在线检测信号的变形压缩方法。分层树(SPIHT)算法中的SET分区是图像变换编码领域中最先进的方法之一。与其他编码算法相比,SPIHT算法显示了所需的特性,例如高信噪比,更低的复杂性和降低的计算负载等。本文讨论了如何结合图像处理方法,开发了用于采矿钢丝绳的磁漏检测的一维信号的压缩编码方法。此外,研究并分析了集合分区分选算法,为线绳磁漏检测定义了小波系数的一维信号的时间取向树结构,除了一个示例之外,还呈现了SPIHT算法 - 来自钢丝绳的磁泄漏检测的二维信号。结果表明,在归一化均线误差(NMSE; NMSE <0.01)的变形条件下,压缩比提高了30%。除了现有方法相比,该研究中提出的在该研究中提出的在线检测信号有损压缩方法对原始信号的恢复具有相当大的影响,以及更高的压缩比和降低的计算时间。

著录项

  • 来源
    《Insight》 |2020年第10期|600-608|共9页
  • 作者单位

    School of Mechanical Electronic and Information Engineering China University of Mining and Technology Beijing 100083 China;

    School of Mechanical Electronic and Information Engineering China University of Mining and Technology Beijing 100083 China;

    School of Mechanical Electronic and Information Engineering China University of Mining and Technology Beijing 100083 China;

    College of Engineering The Pennsylvania State University University Park Pennsylvania 16802 USA;

    College of Engineering The Pennsylvania State University University Park Pennsylvania 16802 USA;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);美国《化学文摘》(CA);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    coal mine wire rope; lossy compression; temporal orientation tree;

    机译:煤矿钢丝绳;有损压缩;时间方向树;

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