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首页> 外文期刊>International Journal of Distributed Sensor Networks >Time Domain Similarity of Lightweight Parameters Based Soil Respiration Sensor Network Deployment
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Time Domain Similarity of Lightweight Parameters Based Soil Respiration Sensor Network Deployment

机译:基于轻量级参数的时域相似性土壤呼吸传感器网络部署

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Deployment is a basic and key issue for all kinds of wireless sensor networks applications. Most of existing researches on deployment problem of wireless sensor network are on generic network level and not for specific application scenarios and also do not utilize any domain knowledge of practical applications. Focusing on the problem of limited number of sensing nodes in soil respiration sensor networks, using domain knowledge such as some lightweight parameters (temperature, humidity, etc.) influencing soil respiration and soil respiration having a day-periodic trend, we proposed a deployment method,TimSim, for soil respiration sensor network based on time domain similarity of lightweight parameters. Lightweight parameters data from positions in the region to be monitored are collected before the deployment of soil respiration sensing nodes, and then time domain similarities of lightweight data among different positions are analyzed, according to which these positions are divided into some groups. A representative position in each group is chosen to deploy a soil respiration sensing node. The experimental results show thatTimSimmethod can place nodes to proper positions so as to monitor regional soil respiration carbon flux effectively with a smaller estimation error than uniform and random deployment methods.
机译:对于所有类型的无线传感器网络应用而言,部署都是一个基本而关键的问题。现有的有关无线传感器网络部署问题的大多数研究都是在通用网络级别上进行的,并不针对特定的应用场景,并且也没有利用任何实际应用领域的知识。针对土壤呼吸传感器网络中传感节点数量有限的问题,利用影响土壤呼吸和日呼吸趋势的一些轻量级参数(温度,湿度等)的领域知识,提出了一种部署方法,TimSim,用于土壤呼吸传感器网络中基于轻量级参数的时域相似性。在部署土壤呼吸传感节点之前,先收集来自待监测区域的位置的轻量参数数据,然后分析不同位置之间的轻量数据的时域相似度,并将这些位置分为几类。选择每组中的代表性位置以部署土壤呼吸感测节点。实验结果表明,TimSimmethod可以将节点放置在适当的位置,从而可以有效地监控区域土壤呼吸碳通量,而其估计误差要小于均匀和随机部署方法。

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