Ado Moziihrii, Amitab Khwairakpam
Department of Information Technology, North-Eastern Hill University, Mawkynroh, Shillong, 793022, Meghalaya, India.
Environ Sci Pollut Res Int. 2025 Jun;32(26):15746-15771. doi: 10.1007/s11356-025-36615-w. Epub 2025 Jun 14.
Landslides pose a substantial threat to life and property, and landslide susceptibility mapping is crucial for effective disaster management. Machine learning (ML) techniques can efficiently generate landslide susceptibility maps (LSMs) to identify high-risk areas. However, the performance of ML models relies on the careful tuning of hyper-parameters. This study focuses on hyper-parameter optimization (HPO) techniques to enhance the accuracy and reliability of ML-based landslide susceptibility mapping. The study compares different HPO methods like grid search (GS), random search (RS), Bayesian optimization (BO), hyperband, and iterative race (iRace), with a particular emphasis on introducing the iRace optimization technique in landslide susceptibility mapping studies. Different ML models like CART, SVM, RF, XGBoost, and LightGBM were used to explore the influence of the HPO techniques. The ML-HPO techniques are assessed using metrics like AUC, accuracy, , precision, recall, and F1-score, utilizing data from the northeastern Indian states. The best ML-HPO combinations for each state are Arunachal Pradesh (GS-LightGBM ), Assam (iRace-RF and RS-RF), Manipur (GS-XGBoost), Meghalaya (BO-RF), Mizoram (iRace-RF), Nagaland (Hyperband-RF), Sikkim (BO-RF), and Tripura (BO-XGBoost). Results suggest GS, iRace, and BO are effective HPO techniques. The final LSM of northeast India integrates the susceptibility map generated using the best ML-HPO combinations for each state. The map can enable effective mitigation strategies and land-use planning, ultimately reducing the impact of landslides in the region.
山体滑坡对生命和财产构成重大威胁,而滑坡易发性制图对于有效的灾害管理至关重要。机器学习(ML)技术可以高效地生成滑坡易发性地图(LSM)以识别高风险区域。然而,ML模型的性能依赖于超参数的精细调整。本研究聚焦于超参数优化(HPO)技术,以提高基于ML的滑坡易发性制图的准确性和可靠性。该研究比较了不同的HPO方法,如网格搜索(GS)、随机搜索(RS)、贝叶斯优化(BO)、超带和迭代竞赛(iRace),特别强调在滑坡易发性制图研究中引入iRace优化技术。使用了不同的ML模型,如CART、SVM、RF、XGBoost和LightGBM来探究HPO技术的影响。利用印度东北部各邦的数据,使用AUC、准确率、精确率、召回率和F1分数等指标对ML-HPO技术进行评估。每个邦的最佳ML-HPO组合分别是:阿鲁纳恰尔邦(GS-LightGBM)、阿萨姆邦(iRace-RF和RS-RF)、曼尼普尔邦(GS-XGBoost)、梅加拉亚邦(BO-RF)、米佐拉姆邦(iRace-RF)、那加兰邦(Hyperband-RF)、锡金邦(BO-RF)和特里普拉邦(BO-XGBoost)。结果表明GS、iRace和BO是有效的HPO技术。印度东北部的最终LSM整合了使用每个邦最佳ML-HPO组合生成的易发性地图。该地图能够实现有效的减灾策略和土地利用规划,最终减少该地区山体滑坡的影响。