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Monitoring of air pollution to establish optimal less polluted path by utilizing wireless sensor network

机译:通过利用无线传感器网络监测空气污染以建立最佳污染路径

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摘要

An efficient air pollution monitoring (APM) scheme is proposed to establish an optimal less polluted path using WSN (wireless sensor network), in which the sensor node (SN) senses the temperature and CO gas (carbon monoxide) concentration's existent in the air. Initially, the sensed information from the SNs is preprocessed. During preprocessing, the value that is missed in the sensed information is imputed. Next, Hadoop's distributed file system (HDFS) MapReduce (MR) is implemented on the preprocessed data and subsequently, the resulting data is saved in the cloud server. The resulting data is analyzed using Improved-Adaptive Neuro-Fuzzy Inference System (I-ANFIS) Algorithm for checking air pollutions severities and its location is then presented in the Google Map. After that, the multi-path routing is established through the less polluted area. Lastly, the optimal path is chosen with the assistance of KHOA (Krill Herd Optimization Algorithm). The outcomes are evaluated by contrasting the proposed and prevailing techniques.
机译:提出了一种有效的空气污染监测(APM)方案,用于使用WSN(无线传感器网络)建立最佳污染路径,其中传感器节点(SN)感测到空气中存在的温度和CO气体(一氧化碳)浓度。最初,来自SNS的感测信息是预处理的。在预处理期间,避免了在感测信息中错过的值。接下来,Hadoop的分布式文件系统(HDFS)MapReduce(MR)在预处理的数据上实现,随后,将生成的数据保存在云服务器中。使用改进的 - 自适应神经模糊推理系统(I-ANFIS)算法来分析所得到的数据,用于检查空气污染严重程度,然后在Google地图中呈现其位置。之后,通过较少的污染区域建立多路径路由。最后,选择了KhoA的帮助(KRill HELD优化算法)的最佳路径。通过对比提出和现行技术来评估结果。

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