Power-Efficient Algorithms for Fourier Analysis over Random Wireless Sensor Network

Xi Xu, R. Ansari, A. Khokhar
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引用次数: 5

Abstract

Reduced execution time and increased power efficiency are important objectives in the distributed execution of collaborative signal processing tasks over wireless sensor networks. The power-efficient implementation of the Fourier transform computation is an exemplar of distributed data communication and processing task widely used in the signal processing field. Past work has presented some energy-efficient in-network Fourier transform computation algorithms devised only for uniformly sampled one-dimensional (1D) sensor data. However the circumstance that sensors are randomly distributed over a 2D plane may be more practical, therefore the conventional two-dimensional Fast Fourier Transform (2D FFT) defined for data sampled on uniform grids is not directly applicable in such environments. We address this problem by designing a distributed hybrid structure consisting of local Nonequispaced Discrete Fourier Transform (NDFT) and global FFT computation. Firstly, NDFT method is applied in a suitable choice of clusters to get the initial uniform Fourier coefficients with allowable estimation error bounds. We experiment with classical linear as well as generalized interpolation methods to compute NDFT coefficients within each cluster. A separable 2D FFT is then performed over all these clusters by employing our proposed energy-efficient 1D FFT computation that reduces communication costs using a novel bit index mapping strategy for data exchanges between sensors. The proposed techniques are implemented in a SID net-SWANS platform to investigate the communication costs, execution time, and energy consumption. Our results show reduced execution time and improved energy consumption when compared with existing work.
随机无线传感器网络傅里叶分析的高能效算法
减少执行时间和提高功率效率是无线传感器网络协同信号处理任务分布式执行的重要目标。傅里叶变换计算的高效节能实现是信号处理领域广泛应用的分布式数据通信和处理任务的一个范例。过去的工作提出了一些节能的网络内傅里叶变换计算算法,这些算法仅针对均匀采样的一维传感器数据设计。然而,传感器随机分布在二维平面上的情况可能更实际,因此,为均匀网格上采样的数据定义的传统二维快速傅里叶变换(2D FFT)并不直接适用于这种环境。我们通过设计一个由局部非均衡离散傅里叶变换(NDFT)和全局FFT计算组成的分布式混合结构来解决这个问题。首先,应用NDFT方法选择合适的聚类,得到具有允许估计误差范围的初始均匀傅里叶系数;我们尝试了经典的线性插值方法和广义插值方法来计算每个簇内的NDFT系数。然后,通过采用我们提出的节能1D FFT计算,在所有这些集群上执行可分离的2D FFT,该计算使用新颖的位索引映射策略用于传感器之间的数据交换,从而降低了通信成本。提出的技术在一个SID net-SWANS平台上实现,以调查通信成本、执行时间和能耗。我们的结果表明,与现有的工作相比,减少了执行时间,提高了能耗。
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