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Congestion detection in wireless sensor networks using MLP and classification by regression

机译:使用MLP和回归分类的无线传感器网络拥塞检测

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Wireless Sensor Network (WSN) is network of hundreds or thousands of sensors. Congestion occurs in wireless sensor networks when all the sensors nearby event start sending data to the base station. Congestion results in less throughput and non reliability of a system. The machine learning algorithms can be applied for congestion detection in network and then congestion can be mitigated by lowering the transmission rate. In this paper we analyze the performance of multilayer level perception (MLP) - a neural network technique and classification by regression algorithms. The machine learning techniques are applied to detect the different levels of congestion in as low, medium or high. It is found that classification by regression is more efficient than MLP in detecting the congestion for the generated data set of WS'N simulation using NS2.
机译:无线传感器网络(WSN)是成百上千个传感器的网络。当附近事件中的所有传感器开始向基站发送数据时,无线传感器网络中就会发生拥塞。拥塞会导致吞吐量降低和系统不可靠。机器学习算法可以应用于网络中的拥塞检测,然后可以通过降低传输速率来缓解拥塞。在本文中,我们分析了多层级感知(MLP)的性能-一种神经网络技术,并通过回归算法进行了分类。机器学习技术用于检测低,中或高级别的不同拥塞程度。发现在使用NS2进行WS'N模拟的生成数据集的拥塞检测中,通过回归分类比MLP更有效。

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