Coal-Rock Interface Recognition Based on Multiwavelet Packet Energy

Shuanfeng Zhao, W. Guo
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引用次数: 5

Abstract

The tradition way of recognition of coal-rock interface was usually done by detecting the gamma ray which has several shortcomings such as influence impurities in coal. Moreover, the geological conditions restrictions may have so much influence on the results that may lead this method to out of function. In order to overcome these shortcomings, in this paper the responses of shearer's cutting force was detected to monitor the shearer's cutting state. The response of shearer's cutting force was influenced by multiple factors, such as coal rupture form and working environment. This requires the signal should be processed by using multiple waveforms which can represent multiple factors and finally can find the response of shearer's signal which hide behind the mixed total signal. In order to solve this problem, a multiple scaling functions based multiwavelet algorithm was proposed which can represent the coal-rock interface characteristic signal. A characteristic library was been built by using multiwavelet band energy which can represent the coal-rock response feature of Shearer. By doing numbers of physical simulation tests, it is found that the multiwavelet band energy extract the coal-rock response feature has more advanced than that of the single wavelet analyses. Finally the paper propose a method of detecting the cutting coal-rock state by using Support Vector Machines (SVM) which provide the theoretical basis of the development of simple practical coal-rock Interface Recognition devices.
基于多小波包能量的煤岩界面识别
传统的煤岩界面识别方法通常是通过探测伽马射线来实现的,这种方法存在着煤中杂质影响等缺点。此外,地质条件的限制可能会对结果产生很大的影响,从而导致该方法失效。为了克服这些缺点,本文通过检测采煤机剪切力的响应来监测采煤机的剪切状态。采煤机的剪切力响应受煤的破裂形式和工作环境等多种因素的影响。这就要求对信号进行多种波形处理,这些波形可以表示多种因素,最终找到隐藏在混合总信号后面的采煤机信号的响应。为了解决这一问题,提出了一种基于多尺度函数的煤岩界面特征信号多小波算法。利用多小波带能量建立了能代表采煤机煤岩响应特征的特征库。通过大量的物理模拟试验,发现多小波带能量提取煤岩响应特征比单小波分析更先进。最后提出了一种基于支持向量机的煤岩截割状态检测方法,为开发简单实用的煤岩界面识别装置提供了理论基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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