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Micro-seismic event detection and location in underground mines by using Convolutional Neural Networks (CNN) and deep learning

机译:利用卷积神经网络(CNN)和深度学习进行地下矿山微地震事件检测和定位

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Recent years have witnessed a clear trend to develop deeper and longer tunnels to meet the growing needs of mining. Micro-seismic events location is vital for predicting and avoiding the traditional mine disasters induced by high stress concentration, such as rock burst, roof caving, water inrush and slope landslide. Deep learning has become a research hotspot within the field of artificial intelligence in recent years, which has achieved significant progresses and applications in the areas of image recognition, speech recognition, language processing and computer vision. The biggest difference between the deep learning and the traditional back propagation training method is that the deep learning can automatically and independently learn the characteristics of a large amount of data without human intervention. This paper uses Convolutional Neural Network (CNN) and deep learning techniques to develop a method for identifying the Time Delay of Arrival (TDOA) and subsequently the source location of micro-seismic events in underground mines. The power spectrum and phase spectrum of cross wavelet transform calculated from the recorded seismic waves due to micro-seismic events are used as inputs to CNN. The amplitude and phase information of the cross wavelet transform power spectrum are parameters that are used without manual manipulation to build the complex mapping to predict TDOA by deep learning network. Experimental data from the in-field blast tests and simulation tests show that the proposed approach can well identify TDOA and hence detect the event source locations of the field blasting tests. It is demonstrated that the proposed approach with the CNN and deep learning techniques gives more accurate micro seismic source identifications with the recorded noisy waveforms from in-situ blast tests, as compared to several typical existing methods.
机译:近年来,发展更深,更长的隧道以满足不断增长的采矿需求的趋势十分明显。微地震事件的位置对于预测和避免由高应力集中引起的传统矿山灾害至关重要,例如岩石破裂,顶板崩落,突水和斜坡滑坡。近年来,深度学习已成为人工智能领域的研究热点,在图像识别,语音识别,语言处理和计算机视觉领域已取得了重大进展和应用。深度学习与传统的反向传播训练方法之间的最大区别在于,深度学习可以自动且独立地学习大量数据的特征,而无需人工干预。本文使用卷积神经网络(CNN)和深度学习技术来开发一种识别到达时间延迟(TDOA)的方法,然后确定地下矿山微地震事件的源位置。根据微地震事件记录的地震波计算出的交叉小波变换的功率谱和相位谱用作CNN的输入。交叉小波变换功率谱的幅度和相位信息是无需人工操作即可用于构建复杂映射以通过深度学习网络预测TDOA的参数。来自现场爆破测试和模拟测试的实验数据表明,该方法可以很好地识别TDOA,从而检测出现场爆破测试的事件源位置。事实证明,与几种典型的现有方法相比,采用CNN和深度学习技术的拟议方法可以更准确地识别微震源,并具有现场爆炸测试记录的噪声波形。

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