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Coal fire detection and evolution of trend analysis based on CBERS-04 thermal infrared imagery

机译:基于CBERS-04热红外图像的趋势分析煤火检测与演变

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Coal fire hazards not only causes loss of coal resources but also induces serious geological hazards and environmental degeneration. Wuda Coalfield (China), known for its widespread coal fires, was used as the study area for this study. Owing to an inherent noise problem, CBERS (China & Brazil Earth Resource Satellite)-04 thermal infrared images have not been explored and applied in the field of coal fire detection. An adaptive-edge-threshold (AET) method was proposed to delineate coal fire maps based on nighttime CBERS-04 data from 2015 to 2020. Iterative Self-Organizing Data Analysis Technique Algorithm (ISODATA) was employed to cluster coal fire spots into different classes, then coal fire propagation directions were generated by connecting the clustering centers of the same class in chronological order. The results of quantitative analysis of coal fires showed that AET method achieved the highest accuracy among four coal fire recognition algorithms; the accuracy of AET in field verification reached 81.25%. The total area of coal fires increased by 137%, while the total intensity of coal fires decreased by 18% from 2015 to 2020. Overall accuracies of ISODATA clustering coal fire spots were between 90.25% and 100.00%, the Kappa coefficients were between 0.82 and 1.00. The evolution trend of coal fires obtained based on this clustering accuracy is reliable. The evolution trend of coal fires is as follows: coal fires of Class I spread to the northwest; coal fires of Class II first propagated to the northwest, then to the south and then to the west; coal fires of Class III essentially stayed in the same place; coal fires of Class IV spread to the northwest; coal fires of Class V spread to the southeast and then to the northeast.
机译:煤火灾危害不仅导致煤炭资源丧失,而且诱导严重的地质灾害和环境变性。以其广泛的煤火而闻名的Wuda Coalfield(中国)被用作本研究的研究区。由于固有的噪声问题,CBERS(中国和巴西地球资源卫星)-04热红外图像尚未在煤火探测领域中探索和应用。提出了一种自适应边缘阈值(AET)方法,以基于2015到2020年的夜间CBERS-04数据描绘煤火贴图。迭代自组织数据分析技术算法(ISODATA)被用来将煤火斑块聚集成不同的课程然后,通过按时间顺序连接相同类的聚类中心来产生煤火传播方向。煤火定量分析结果表明,AET方法在四种煤火识别算法之间实现了最高精度; AET在现场核查中的准确性达到81.25%。煤火的总面积增加了137%,而煤火灾总强度从2015年到2020年下降了18%。ISODATA聚类煤火斑的总体精度在90.25%和100.00%之间,Kappa系数介于0.82之间。 1.00。基于该聚类精度获得的煤火的演化趋势是可靠的。煤炭火灾的演变趋势如下:煤炭的阶级我蔓延到西北部; II级的煤火首先宣传到西北,然后到南部,然后到西方; III级的煤炭火灾基本上留在了同一个地方; IV级的煤炭燃烧到西北部; v级煤炭火灾蔓延到东南,然后到东北。

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