基于人工神经网络算法的无线传感器网络分布式数据处理

A. Kulakov, D. Davcev
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引用次数: 24

摘要

当前的网络数据处理算法大多是多维数据序列分析等改进的回归技术。我们认为,在人工神经网络传统中开发的几种算法可以很容易地应用于无线传感器网络平台,并满足传感器网络的要求:简单的并行分布式计算、分布式存储、数据鲁棒性和传感器读数的自动分类。由于神经网络聚类算法实现了降维,因此可以获得更低的通信成本和节能。在本文中,我们提出了ART和FuzzyART神经网络算法的三种可能实现,它们是用于对感官输入进行分类的无监督学习方法。它们是根据从几个卫星上获得的数据进行测试的,每个卫星上都配备了几个传感器。对故意制造的故障传感器的仿真结果表明了这些结构的数据鲁棒性。
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Distributed data processing in wireless sensor networks based on artificial neural-networks algorithms
Most of the current in-network data processing algorithms are modified regression techniques like multidimensional data series analysis. In our opinion, several algorithms developed within the artificial neural-networks tradition can be easily adopted to wireless sensor network platforms and meet the requirements for sensor networks like: simple parallel-distributed computation, distributed storage, data robustness and auto-classification of sensor readings. Lower communication costs and energy savings can be obtained as a consequence of the dimensionality reduction achieved by the neural-networks clustering algorithms. In this paper we present three possible implementations of the ART and FuzzyART neural-networks algorithms, which are unsupervised learning methods for categorization of the sensory inputs. They are tested on a data obtained from a set of several motes, equipped with several sensors each. Results from simulations of deliberately made faulty sensors show the data robustness of these architectures.
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