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基于DBO-VMD濾波的煤巖爆破電磁信號時-頻特征

Research on time–frequency characteristics of electromagnetic signals from coal and rock blasting based on DBO-VMD filtering

  • 摘要: 井工開采爆破作業的常規振動監測易受周圍環境或監測系統影響,使煤巖破裂信號提取困難,本文提出一種基于電磁信號的爆破監測方法,并研究了爆破電磁信號時頻特征. 首先,提出了基于蜣螂優化算法(DBO)尋優變分模態分解(VMD)參數的降噪模型,得到了此類信號的最佳適應度函數為包絡熵,該函數可迅速鎖定最優參數組合,避免模態混疊現象,且基于DBO-VMD的降噪模型性能優于基于經驗模態分解(EMD)的降噪模型;其次,提出了基于經驗法的中心頻率準則降噪方法,并證實了該方法降噪性能在信噪比表現上約是EMD的2倍;最后,發現煤巖破裂期的偏度大于0、峭度介于0.9~4.6,脈沖指標介于3.7~6.1,頻段在20 kHz以下,主破裂事件發生時信號能量最大,主頻段在5 kHz以下,并隨著頻率上升信號分量幅值迅速下降,非破裂期的低能脈沖則集中于0~3 kHz頻段. 本文的研究結果明確了爆破電磁輻射信號的時?頻特征,為井工開采過程中爆破的電磁輻射監測奠定了理論基礎.

     

    Abstract: In shaft mining, conventional vibration monitoring of blasting operations is often affected by environmental factors and system limitations, complicating the extraction of coal–rock rupture signals. This paper explores the use of electromagnetic radiation signals for blasting monitoring, introducing a noise reduction method for these signals and examining the time–frequency characteristics of the pure signals. Initially, the paper suggests using the dung beetle optimizer (DBO) algorithm to dynamically adjust the parameters of variational mode decomposition (VMD) for the efficient acquisition of optimal decomposition parameters k, α. By analyzing electromagnetic signal optimization sunder different fitness functions and evaluating three types of anomalies, namely repeated mutations, boundary stabilization, and unchanged states, we find that the performance of the DBO-VMD model in processing coal–rock electromagnetic signals ranks as follows: envelope entropy > ranking entropy > information entropy > sample entropy. Α center-frequency criterion noise reduction model is proposed to eliminate high-, intermediate-, and low-intensity components in the signal. When comparing electromagnetic signals processed by the DBO-VMD and empirical mode decomposition (EMD), the DBO-VMD effectively avoids modal aliasing and provides more reasonable center-frequency distributions. After applying a consistent noise reduction process, the DBO-VMD model shows superior performance over EMD. It provides enhanced smoothing and fidelity of pure signals and is more efficient at noise screening. The DBO-VMD achieves a signal-to-noise ratio about two times that of the EMD. Finally, we conducted a statistical analysis of the entropy, energy, bispectrum, and time–frequency domain characteristics of pure electromagnetic signals associated with coal–rock ruptures. During stable periods, information entropy, instantaneous energy, and marginal energy remain below specific thresholds, but they exhibit sudden changes during rupture events. Rupture periods begin when information entropy falls below 4.75, instantaneous energy exceeds 1000 J, or marginal energy surpasses 100 J, based on a 50-point time window. Conversely, the conclusion of the rupture period corresponds to opposite conditions, with marginal energy responding more sensitively to rupture states than instantaneous energy. During ruptures, skewness is positive, steepness ranges from 0.9 to 4.6, and pulse index varies from 3.7 to 6.1, all within a frequency band below 20 kHz. Main rupture events coincide with peak signal energy, mostly under 5 kHz. As frequency increases, signal amplitude decreases rapidly, with low-energy pulses during non-rupture periods concentrated in the 0–3 kHz range. This study sheds light on the time–frequency characteristics of electromagnetic radiation signals generated by blasting. These insights lay the groundwater for effectively monitoring such signals in underground mining operations.

     

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