Landslide Identification Using Optimized Deep Learning Framework Through Data Routing in IoT Application

L. Lijesh, G. Arockia Selva Saroja
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Abstract

This paper develops an approach for detecting landslide using IoT. The simulation of IoT is the preliminary step that helps to collect data. The suggested Water Particle Grey Wolf Optimization (WPGWO) is used for the routing. The Water Cycle Algorithm (WCA), Particle Swarm Optimization (PSO), and Grey Wolf Optimization (GWO) are combined in the suggested method (WPGWO). The fitness is newly modeled considering energy, link cost, distance, and delay. The maintenance of routes is done to assess the dependability of the network topology. The landslide detection process is carried out at the IoT base station. In feature selection, angular distance is used. Oversampling is used to enrich the data, and Deep Residual Network (DRN) | used for landslide identification | is trained using the proposed Water Cycle Particle Swarm Optimization (WCPSO) method, which combines WCA and PSO. The proposed WCPSO-based DRN offered effective performance with the highest energy of 0.049[Formula: see text]J, throughput of 0.0495, accuracy of 95.7%, sensitivity of 97.2% and specificity of 93.9%. This approach demonstrated improved robustness and produced the global best optimal solution. For the proposed WPGWO, WCA, GWO, and PSO are linked to improve performance in determining the optimum routes. When comparing with existing methods the proposed WCPSO-based DRN offered effective performance.
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利用优化的深度学习框架通过物联网应用中的数据路由进行滑坡识别
本文提出了一种利用物联网检测滑坡的方法。物联网的模拟是帮助收集数据的初步步骤。采用建议的水粒子灰狼优化算法(Water Particle Grey Wolf Optimization, WPGWO)进行路由。该方法将水循环算法(WCA)、粒子群算法(PSO)和灰狼算法(GWO)相结合。考虑了能量、链路成本、距离和时延,建立了新的适应度模型。维护路由是为了评估网络拓扑的可靠性。滑坡检测过程在物联网基站进行。在特征选择中,使用角距离。采用过采样方法丰富数据,采用WCA和PSO相结合的水循环粒子群优化(WCPSO)方法训练用于滑坡识别的深度残差网络(DRN)。提出的基于wcpso的DRN具有有效的性能,最高能量为0.049[公式:见文]J,通量为0.0495,准确率为95.7%,灵敏度为97.2%,特异性为93.9%。该方法具有较好的鲁棒性,并产生了全局最优解。对于所提出的WPGWO,将WCA、GWO和PSO联系起来,以提高确定最优路由的性能。通过与已有方法的比较,提出的基于wcpso的DRN具有较好的性能。
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