Adaptive distributed algorithms for power-efficient data gathering in sensor networks
J. Acimovic,Baltasar Beferull-Lozano,Razvan Cristescu +2 more
- 13 Jun 2005
- Vol. 2, pp 946-951
TL;DR: This work considers the problem of designing adaptive distributed processing algorithms in large sensor networks that are efficient in terms of minimizing the total power spent for gathering the spatially correlated data from the sensor nodes to a sink node.
read more
Abstract: In this work, we consider the problem of designing adaptive distributed processing algorithms in large sensor networks that are efficient in terms of minimizing the total power spent for gathering the spatially correlated data from the sensor nodes to a sink node. We take into account both the power spent for purposes of communication as well as the power spent for local computation. Our distributed algorithms are also matched to the nature of the correlated field, namely, for piecewise smooth signals, we provide two distributed multiresolution wavelet-based algorithms, while for correlated Gaussian fields, we use distributed prediction based processing. In both cases, we provide distributed algorithms that perform network division into groups of different sizes. The distribution of the group sizes within the network is the result of an optimal trade-off between the local communication inside each group needed to perform decorrelation, the communication needed to bring the processed data (coefficients) to the sink and the local computation cost, which grows as the network becomes larger. Our experimental results show clearly that important gains in power consumption can be obtained with respect to the case of not performing any distributed decorrelating processing.
read more
Chat with Paper
AI Agents for this Paper
Find similar papers on Google Scholar, PubMed and Arxiv
Write a critical review of this paper
Analyze citations of this paper to find unaddressed research gaps
Citations
Efficient Measurement Generation and Pervasive Sparsity for Compressive Data Gathering
TL;DR: This paper investigates how to generate RIP (restricted isometry property) preserving measurements of sensor readings by taking multi-hop communication cost into account and discovers that a simple form of measurement matrix has good RIP, and the data gathering scheme that realizes this measurement matrix can further reduce the communication cost of CDG for both chain-type and tree-type topology.
Data Gathering with Compressive Sensing in Wireless Sensor Networks: A Random Walk Based Approach
TL;DR: Simulation results show that the proposed scheme can significantly reduce communication cost compared to the conventional schemes using dense random projections and sparse random projections, indicating that the scheme can be a more practical alternative for data gathering applications in WSNs.
159
Energy-efficient data representation and routing for wireless sensor networks based on a distributed wavelet compression algorithm
Alexandre Ciancio,Sundeep Pattem,Antonio Ortega,Bhaskar Krishnamachari +3 more
- 19 Apr 2006
TL;DR: It is demonstrated that by optimizing the coding algorithm selection the overall energy consumption can be significantly reduced when compared to the case when data is just quantized and forwarded to the central node.
Energy-Efficient DataRepresentation andRouting for Wireless Sensor Networks Basedon aDistributed Wavelet Compression Algorithm *
Alexandre Ciancio,Sundeep Pattem,Antonio Ortega +2 more
- 01 Jan 2006
TL;DR: In this article, the authors address the problem of energyconsumption reduction for wireless sensornetworks, where sensors have a choice of different coding schemes to achieve varying levels of compression, and exploit thenatural dataflow in thenetwork toaggregate databycomputing partial wavelet coefficients that are refined as dataflows towards the central node.
93
References
•Book
Statistics for spatial data
Noel A Cressie,Noel A Cressie +1 more
- 01 Jan 1991
TL;DR: In this paper, the authors present a survey of statistics for spatial data in the field of geostatistics, including spatial point patterns and point patterns modeling objects, using Lattice Data and spatial models on lattices.
9K
Wireless integrated network sensors
TL;DR: The WINS network represents a new monitoring and control capability for applications in such industries as transportation, manufacturing, health care, environmental oversight, and safety and security, and opportunities depend on development of a scalable, low-cost, sensor-network architecture.
3.6K
Quantization
Robert M. Gray,David L. Neuhoff +1 more
TL;DR: The key to a successful quantization is the selection of an error criterion – such as entropy and signal-to-noise ratio – and the development of optimal quantizers for this criterion.
2.1K
Energy-efficient DSPs for wireless sensor networks
A. Wang,A. Chandrakasan +1 more
TL;DR: This work explores system partitioning between the sensor cluster and the base station, employing computation-communication tradeoffs to reduce energy dissipation and shows that system partitions within the cluster can also improve the energy efficiency by using dynamic voltage scaling (DVS).
On network correlated data gathering
Razvan Cristescu,Baltasar Beferull-Lozano,Martin Vetterli +2 more
- 07 Mar 2004
TL;DR: It is proved that building an optimal data gathering tree is NP-complete and various distributed approximation algorithms are proposed for the explicit communication case.