Department of Computer Science and Engineering, SCMS School of Engineering and Technology, Ernakulam, India.
Department of Electronics and Communication Engineering, Dr. BR Ambedkar National Institute of Technology, Jalandhar, India.
Big Data. 2021 Aug;9(4):289-302. doi: 10.1089/big.2020.0279. Epub 2021 Jun 3.
An exponential progression in the miniaturization of communicating devices has proliferated the generation of a large volume of data termed as "big data." The technological advancements in the micro-electro/mechanical system has made it possible to design the low-cost, low-power consuming artificial intelligence (AI)-based wireless sensor nodes to gather the big data belonging to various attributes from their surroundings. These nodes help in the early detection and prediction for the occurrence of landslides, which are among the catastrophic hazards. A profusion of research has focused on exploiting the potential of sensors for continuous monitoring and detecting the landslides at the earliest. However, the limited energy resources of sensor nodes give rise to the huge challenge for the network longevity pertaining to landslide detection. To address this concern, in this article, we propose an optimized routing and big data gathering system for landslide detection using (AI)-based wireless sensor network (WSN) (ORLAW). Since we propose a distributed routing mechanism, AI has a major role to play in the intelligent detection of landslides that too without the intervention of an external entity. We use the Dynamic Salp Swarm Algorithm for the cluster head selection in ORLAW. Two data collecting sinks are deployed on the opposite sides of the network, which is assumed to be a mountainous area. It is discerned from the simulation examination that ORLAW elongates the reliability period by 23.9% compared with the recently proposed cluster-based intelligent routing protocol, and also outperforms many others in the perspective of energy efficient management of big data.
通信设备的微型化呈指数级增长,产生了大量被称为“大数据”的数据。微机电系统的技术进步使得设计低成本、低功耗的基于人工智能 (AI) 的无线传感器节点成为可能,这些节点可以从周围环境中收集属于各种属性的大数据。这些节点有助于早期检测和预测滑坡的发生,滑坡是灾难性灾害之一。大量研究集中在利用传感器的潜力进行连续监测和尽早检测滑坡。然而,传感器节点有限的能源资源给涉及滑坡检测的网络寿命带来了巨大挑战。为了解决这个问题,在本文中,我们提出了一种使用基于人工智能 (AI) 的无线传感器网络 (WSN) (ORLAW) 进行滑坡检测的优化路由和大数据采集系统。由于我们提出了一种分布式路由机制,因此人工智能在智能滑坡检测中起着重要作用,而且无需外部实体的干预。我们在 ORLAW 中使用动态沙蚕群算法进行簇头选择。两个数据收集接收器部署在网络的相对两侧,假设该网络位于山区。通过仿真检查发现,与最近提出的基于簇的智能路由协议相比,ORLAW 将可靠性周期延长了 23.9%,并且在大数据的节能管理方面也优于其他许多协议。