Tianjin Urban Planning and Design Institute Co., LTD, Tianjin, 300000, China.
Faculty of Natural Resources, Department of Climatology, University of Kurdistan, Sanandaj, Iran.
Environ Sci Pollut Res Int. 2023 Dec;30(59):123527-123555. doi: 10.1007/s11356-023-30762-8. Epub 2023 Nov 21.
Detecting and mapping landslides are crucial for effective risk management and planning. With the great progress achieved in applying optimized and hybrid methods, it is necessary to use them to increase the accuracy of landslide susceptibility maps. Therefore, this research aims to compare the accuracy of the novel evolutionary methods of landslide susceptibility mapping. To achieve this, a unique method that integrates two techniques from Machine Learning and Neural Networks with novel geomorphological indices is used to calculate the landslide susceptibility index (LSI). The study was conducted in western Azerbaijan, Iran, where landslides are frequent. Sixteen geology, environment, and geomorphology factors were evaluated, and 160 landslide events were analyzed, with a 30:70 ratio of testing to training data. Four Support Vector Machine (SVM) algorithms and Artificial Neural Network (ANN)-MLP were tested. The study outcomes reveal that utilizing the algorithms mentioned above results in over 80% of the study area being highly sensitive to large-scale movement events. Our analysis shows that the geological parameters, slope, elevation, and rainfall all play a significant role in the occurrence of landslides in this study area. These factors obtained 100%, 75.7%, 68%, and 66.3%, respectively. The predictive performance accuracy of the models, including SVM, ANN, and ROC algorithms, was evaluated using the test and train data. The AUC for ANN and each machine learning algorithm (Simple, Kernel, Kernel Gaussian, and Kernel Sigmoid) was 0.87% and 1, respectively. The Classification Matrix algorithm and Sensitivity, Accuracy, and Specificity variables were used to assess the models' efficacy for prediction purposes. Results indicate that machine learning algorithms are more effective than other methods for evaluating areas' sensitivity to landslide hazards. The Simple SVM and Kernel Sigmoid algorithms performed well, with a performance score of one, indicating high accuracy in predicting landslide-prone areas.
检测和绘制滑坡图对于有效管理和规划风险至关重要。通过应用优化和混合方法取得了巨大进展,有必要利用这些方法提高滑坡易感性图的准确性。因此,本研究旨在比较滑坡易感性制图的新型进化方法的准确性。为此,使用了一种将机器学习和神经网络中的两种技术与新颖的地貌指数相结合的独特方法来计算滑坡易感性指数 (LSI)。该研究在伊朗东阿塞拜疆进行,那里经常发生滑坡。评估了 16 种地质、环境和地貌因素,分析了 160 个滑坡事件,测试数据与训练数据的比例为 30:70。测试了四种支持向量机 (SVM) 算法和人工神经网络 (ANN)-MLP。研究结果表明,利用上述算法可使研究区超过 80%的区域对大规模运动事件高度敏感。我们的分析表明,在本研究区域,地质参数、坡度、海拔和降雨量在滑坡发生中都起着重要作用。这些因素分别获得了 100%、75.7%、68%和 66.3%。使用测试和训练数据评估了 SVM、ANN 和 ROC 算法等模型的预测性能准确性。ANN 和每个机器学习算法(简单、核、核高斯和核 Sigmoid)的 AUC 分别为 0.87%和 1。使用分类矩阵算法和敏感性、准确性和特异性变量来评估模型用于预测的效果。结果表明,机器学习算法比其他方法更有效地评估区域对滑坡危害的敏感性。Simple SVM 和 Kernel Sigmoid 算法表现良好,性能评分为 1,表明在预测易滑坡区方面具有很高的准确性。