活动驱动的机会主义信标网络的野生动物行为的无监督学习

Fatjon Seraj, E. D. Ayele, N. Meratnia
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引用次数: 1

摘要

实时监测野生动物的自然栖息地是生物和环境研究的一个重要方面。由于无线野生动物监测系统(WMS)具有节能和可扩展性,因此主要通过无线野生动物监测系统(WMS)进行监测。然而,使用WMS通常涉及部署能源要求高的无线无线电技术和协议,这在跟踪移动动物时显著增加了能源消耗。由于能够感知、计算和无线网络的物联网设备的兴起,WMS可以变得更高效,并克服最初的缺点。本文描述了一种基于无监督活动分类方案的活动驱动信标机制。针对采样率、处理窗口以及不同的聚类大小等参数对算法进行了评估。评估表明,使用轻量级算法和低采样率提供了可靠监测动物活动的可能性。评估结果表明,该机制可以通过增加目标静止时的通信睡眠时间来减少能量消耗。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unsupervised learning of wildlife behaviour for activity-driven opportunistic beacon networks
Monitoring wild animals in their natural habitat and in real time constitutes an essential aspect of biological and environmental studies. Monitoring is mainly conducted through wireless wildlife monitoring systems (WMS) due to their energy-efficiency and scalability properties. However, using WMS often involves the deployment of energy demanding wireless radio technologies and protocols that significantly increase energy consumption while tracking mobile animals. Thanks to the raise of IoT devices capable of sensing, computing, and wireless networking, WMS can become more efficient and overcome the initial drawbacks. This paper, describes an activity driven beaconing mechanism based on unsupervised activity classification scheme. The algorithm is evaluated for different parameters involving the sampling rate, processing window as well as different cluster sizes. The evaluation shows that use of lightweight algorithms and low sampling rates provides the possibility to reliably monitor the activity of the animal. The evaluation results showed that the proposed mechanism could reduce energy consumption by increasing communication sleep-time while the objects were stationary.
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