Abstract:
We consider the problem of distributed estimation, where a set of nodes is required to collectively estimate some parameter of interest from noisy measurements. The prob...Show MoreMetadata
Abstract:
We consider the problem of distributed estimation, where a set of nodes is required to collectively estimate some parameter of interest from noisy measurements. The problem is useful in several contexts including wireless and sensor networks, where scalability, robustness, and low power consumption are desirable features. Diffusion cooperation schemes have been shown to provide good performance, robustness to node and link failure, and are amenable to distributed implementations. In this work we focus on diffusion-based adaptive solutions of the LMS type. We motivate and propose new versions of the diffusion LMS algorithm that outperform previous solutions. We provide performance and convergence analysis of the proposed algorithms, together with simulation results comparing with existing techniques. We also discuss optimization schemes to design the diffusion LMS weights.
Published in: IEEE Transactions on Signal Processing ( Volume: 58, Issue: 3, March 2010)
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- IEEE Keywords
- Index Terms
- Simulation Results ,
- Sensor Networks ,
- Low Power Consumption ,
- Noisy Measurements ,
- Mean Square Error ,
- Weight Matrix ,
- Symmetric Matrix ,
- Noise Variance ,
- Global Solution ,
- Neighboring Nodes ,
- Bottom Of Page ,
- Statistical Noise ,
- Hierarchical Algorithm ,
- Adaptive Filter ,
- Expectation Operator ,
- Global Cost ,
- Hermitian Matrix ,
- Small Step Size ,
- Individual Entries ,
- Diffusion Matrix ,
- Non-negative Entries ,
- Intermediate Estimates ,
- Fusion Center ,
- Diffusion Filter ,
- Information Exchange ,
- Combined Weight ,
- Performance Of Algorithm ,
- Spectral Radius ,
- Block Diagonal ,
- Second-order Moments
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Simulation Results ,
- Sensor Networks ,
- Low Power Consumption ,
- Noisy Measurements ,
- Mean Square Error ,
- Weight Matrix ,
- Symmetric Matrix ,
- Noise Variance ,
- Global Solution ,
- Neighboring Nodes ,
- Bottom Of Page ,
- Statistical Noise ,
- Hierarchical Algorithm ,
- Adaptive Filter ,
- Expectation Operator ,
- Global Cost ,
- Hermitian Matrix ,
- Small Step Size ,
- Individual Entries ,
- Diffusion Matrix ,
- Non-negative Entries ,
- Intermediate Estimates ,
- Fusion Center ,
- Diffusion Filter ,
- Information Exchange ,
- Combined Weight ,
- Performance Of Algorithm ,
- Spectral Radius ,
- Block Diagonal ,
- Second-order Moments
- Author Keywords