基于模糊逻辑的地面沉降危害图集成

I. Park, Jiyeong Lee, Lee Saro
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引用次数: 44

摘要

利用模糊集合技术和地理信息系统(GIS)构建了韩国三陟市废弃地下煤矿(aucm)周围地面沉降危害图。利用地形图、地质图、矿山隧道图、土地利用图、地下水图和地面沉降图,构建了影响地表沉降的空间数据库。收集塌陷区的空间数据、地形、地质和各种地面工程数据,建立塌陷区地面沉降危险性制图数据库。塌陷区随机分成70/30进行模型的训练和验证。采用频率比(FR)、逻辑回归(LR)和人工神经网络(ANN)模型对探测到的地面沉降面积与各因素之间的关系进行了识别和量化。这些关系被用作叠加分析中的因子评级,以创建地面沉降危害指数和地图。然后将这三个GSH图作为新的输入因素,并使用模糊集成方法进行综合,以获得更好的危害图。通过与未直接用于分析的已知塌陷区进行比较,验证了所有危险图的有效性。结果表明,集合模型在预测精度方面比单个模型更有效。
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Ensemble of ground subsidence hazard maps using fuzzy logic
Hazard maps of ground subsidence around abandoned underground coal mines (AUCMs) in Samcheok, Korea, were constructed using fuzzy ensemble techniques and a geographical information system (GIS). To evaluate the factors related to ground subsidence, a spatial database was constructed from topographic, geologic, mine tunnel, land use, groundwater, and ground subsidence maps. Spatial data, topography, geology, and various ground-engineering data for the subsidence area were collected and compiled in a database for mapping ground-subsidence hazard (GSH). The subsidence area was randomly split 70/30 for training and validation of the models. The relationships between the detected ground-subsidence area and the factors were identified and quantified by frequency ratio (FR), logistic regression (LR) and artificial neural network (ANN) models. The relationships were used as factor ratings in the overlay analysis to create ground-subsidence hazard indexes and maps. The three GSH maps were then used as new input factors and integrated using fuzzy-ensemble methods to make better hazard maps. All of the hazard maps were validated by comparison with known subsidence areas that were not used directly in the analysis. As the result, the ensemble model was found to be more effective in terms of prediction accuracy than the individual model.
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来源期刊
Central European Journal of Geosciences
Central European Journal of Geosciences GEOSCIENCES, MULTIDISCIPLINARY-
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