牛群监控系统采用无线传感器网络,以防止牛群被沙沙作响

P. K. Mashoko Nkwari, S. Rimer, B. Paul
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引用次数: 19

摘要

牲畜盗窃是南非农业部门的一个主要问题,威胁到该国大部分地区的商业和新兴农业部门。虽然已经有几种技术来识别牛和打击牲畜盗窃,但这一祸害在农业部门尚未根除。本文研究了如何使用全球定位无线节点来模拟奶牛的行为以获得奶牛的预期位置。这项研究的目的是模拟奶牛的典型行为,以确定行为上的异常,这可能表明小偷的存在。设计了一个无线传感器节点来感知奶牛的位置和速度。收集奶牛的位置和速度进行分析。对奶牛的位置应用随机行走模型,以确定边界条件的概率,我们假设边界位置上的奶牛被偷的概率增加。将连续时间马尔可夫过程(CTMP)应用于单个奶牛的运动模式,以找到奶牛在边界位置的概率。我们发现2.5 km/h是检测动物躁动的阈值。母牛在边界位置的概率较小。预测模型使我们能够防止农场的牲畜盗窃,特别是在南非和整个非洲。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cattle monitoring system using wireless sensor network in order to prevent cattle rustling
Stock theft is a major problem in the agricultural sector in South Africa and threatens both commercial and the emerging farming sectors in most of the country. Although there have been several techniques to identify cattle and combat stock theft, the scourge has not been eradicated in the farming sector. This paper investigates how we can model cow behaviour using global positioning wireless nodes to get the expected position of a cow. The objective of this research is to model the typical behaviour of a cow to determine anomalies in behaviour that could indicate the presence of the thieves. A wireless sensor node was designed to sense the position and speed of a cow. The position and the speed of the cow are collected for analysis. A random walk model is applied to the cow's position in order to determine the probability of the boundary condition where we assume there is an increased probability of a cow on the boundary position being stolen. The Continuous Time Markov Processes (CTMP) is applied to the movement pattern of an individual cow in order to find the probability that the cow will be at the boundary position. The value of 2.5 km/h has been found as our treshold to detect any agitation of the animal. The cow has less probability to be at the boundary position. The predictive model allows us to prevent stock theft in farms especially in South Africa and Africa in general.
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