TY - JOUR
T1 - Unraveling Overlying Rock Fracturing Evolvement for Mining Water Inflow Channel Prediction
T2 - A Spatiotemporal Analysis Using ConvLSTM Image Reconstruction
AU - Yin, Huichao
AU - Zhang, Gaizhuo
AU - Wu, Qiang
AU - Cui, Fangpeng
AU - Yan, Bicheng
AU - Yin, Shangxian
AU - Soltanian, Mohamad Reza
AU - Thanh, Hung Vo
AU - Dai, Zhenxue
N1 - Publisher Copyright:
© 1980-2012 IEEE.
PY - 2024
Y1 - 2024
N2 - In the underground mining process, the evolution of fissures, fractures, and breakages in overlying rock strata can lead to water inrush and many other serious risks, including rock bursts, roof collapses, and ground subsidence. Since directly observing strata behavior is challenging, downscaled similar material simulations are often relied upon as a proven effective method for strata pattern analysis. Traditionally, mere visual inspection or stress and displacement monitoring of the simulation have been employed for risk analysis and often cause imprecise and subjective interpretations. With recent advancements in deep learning image processing models, which enabled quantitative studies on variation dynamics of image sequences, this study proposes a novel method for analyzing strata behavior patterns by applying the spatiotemporal data feature extracting capability of the convolutional long short-term memory (ConvLSTM) model on a carefully conducted similar material experiment. The approach involves reconstructing the preprocessed image sequence data using ConvLSTM, thereby predicting and enhancing visual inspection by dynamically highlighting major strata fracture and breakage evolvements. Critical periods of rapid strata behavior are also reliably identified by thresholding the reconstruction errors. In addition, high-risk areas in each critical period are delineated using image differentiation and the fast nonlocal means (NLM) denoising algorithm. While other applicable models, including ConvLSTM-autoencoder (ConvLSTM-AE) and temporal convolutional network (TCN)-AE, also perform well, the predictive ConvLSTM model stands out with its superior reconstruction visual distinctiveness and model stability in the analysis. With provided valuable spatiotemporal information for understanding mining-induced strata behavior patterns, the obtained promising results offer precise dynamic guidance on predicting the formation of water inflow channels.
AB - In the underground mining process, the evolution of fissures, fractures, and breakages in overlying rock strata can lead to water inrush and many other serious risks, including rock bursts, roof collapses, and ground subsidence. Since directly observing strata behavior is challenging, downscaled similar material simulations are often relied upon as a proven effective method for strata pattern analysis. Traditionally, mere visual inspection or stress and displacement monitoring of the simulation have been employed for risk analysis and often cause imprecise and subjective interpretations. With recent advancements in deep learning image processing models, which enabled quantitative studies on variation dynamics of image sequences, this study proposes a novel method for analyzing strata behavior patterns by applying the spatiotemporal data feature extracting capability of the convolutional long short-term memory (ConvLSTM) model on a carefully conducted similar material experiment. The approach involves reconstructing the preprocessed image sequence data using ConvLSTM, thereby predicting and enhancing visual inspection by dynamically highlighting major strata fracture and breakage evolvements. Critical periods of rapid strata behavior are also reliably identified by thresholding the reconstruction errors. In addition, high-risk areas in each critical period are delineated using image differentiation and the fast nonlocal means (NLM) denoising algorithm. While other applicable models, including ConvLSTM-autoencoder (ConvLSTM-AE) and temporal convolutional network (TCN)-AE, also perform well, the predictive ConvLSTM model stands out with its superior reconstruction visual distinctiveness and model stability in the analysis. With provided valuable spatiotemporal information for understanding mining-induced strata behavior patterns, the obtained promising results offer precise dynamic guidance on predicting the formation of water inflow channels.
KW - Convolutional long short-term memory (ConvLSTM)
KW - image sequence reconstruction
KW - similar material experiment
KW - strata fracturing and breakage
KW - underground mining
KW - water inrush
UR - http://www.scopus.com/inward/record.url?scp=85203633975&partnerID=8YFLogxK
U2 - 10.1109/TGRS.2024.3452937
DO - 10.1109/TGRS.2024.3452937
M3 - Article
AN - SCOPUS:85203633975
SN - 0196-2892
VL - 62
JO - IEEE Transactions on Geoscience and Remote Sensing
JF - IEEE Transactions on Geoscience and Remote Sensing
M1 - 4510417
ER -