基于不同优化算法的滑坡检测分析

Lijesh L, G. Saroja
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引用次数: 0

摘要

滑坡的发现是灾害和风险研究的重要环节,近年来已成为科学家关注的焦点。遥感是一种经济的滑坡检测和更新经典滑坡数据库的解决方案,但在遥感数据中发现滑坡是复杂的,需要改进。目前的研究表明,与经典的机器学习模型相比,深度模型提高了滑坡制图结果。本文对不同优化算法的滑坡检测效果进行了比较评价,以检验和证明滑坡检测的有效性。将深度残差网络(DRN)应用于滑坡检测和评价过程中,将采用各种优化算法,如竞争群优化算法(CSO)、束状群算法(TSA)、粒子群优化算法(PSO)、水循环算法(WCA)、灰狼优化算法(GWO)等。基于wcpso的DRN的最高准确率为0.964,灵敏度为0.980,特异性为0.943。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis based on Different Optimization Algorithms for Landslide Detection
The discovery of landslides is essential process in hazard and risk studies and has acquired immense focus among scientists in upcoming years. Remote sensing is an economical solution for detecting landslides and updating classical landslide databases, but discovering landslides in remote sensing data is complex and needs enhancements. The current studies reveal that the deep models enhance the landslide mapping outcomes compared to classical machine learning models. This paper presents the comparative assessment of landslide detection using different optimization algorithms to examine and justify the efficiency of landslide detection. The deep residual network (DRN) is adapted in the process of landslide detection and evaluation will be performed with various optimization algorithms, such as Competitive swarm Optimizer (CSO), Tunicate Swarm Algorithm (TSA), Particle Swarm Optimization (PSO), Water cycle algorithm (WCA), Grey Wolf Optimizer (GWO). The WCPSO-based DRN outperformed with utmost accuracy of 0.964, sensitivity of 0.980 and specificity of 0.943.
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