Improved Dual Decomposition Based Optimization for DSL Dynamic Spectrum Management
Paschalis Tsiaflakis, Ion Necoara, Johan A. K. Suykens, Marc Moonen

TL;DR
This paper introduces an improved dual decomposition method for DSL dynamic spectrum management, significantly enhancing convergence speed and robustness over existing algorithms by using smoothing and optimal stepsize selection.
Contribution
The paper proposes a novel dual decomposition approach with smoothing and optimal stepsize tuning, improving convergence and robustness of DSM algorithms.
Findings
Convergence improved by one order of magnitude.
Applicable to multiple DSM algorithms with enhanced performance.
Effective in realistic multi-user DSL scenarios.
Abstract
Dynamic spectrum management (DSM) has been recognized as a key technology to significantly improve the performance of digital subscriber line (DSL) broadband access networks. The basic concept of DSM is to coordinate transmission over multiple DSL lines so as to mitigate the impact of crosstalk interference amongst them. Many algorithms have been proposed to tackle the nonconvex optimization problems appearing in DSM, almost all of them relying on a standard subgradient based dual decomposition approach. In practice however, this approach is often found to lead to extremely slow convergence or even no convergence at all, one of the reasons being the very difficult tuning of the stepsize parameters. In this paper we propose a novel improved dual decomposition approach inspired by recent advances in mathematical programming. It uses a smoothing technique for the Lagrangian combined with…
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