Gridless Evolutionary Approach for Line Spectral Estimation with Unknown Model Order
Bai Yan, Qi Zhao, Jin Zhang, J. Andrew Zhang, Xin Yao

TL;DR
This paper introduces a gridless, evolutionary method for line spectral estimation that directly estimates frequencies and model order simultaneously, overcoming resolution limits of traditional relaxation-based methods.
Contribution
It proposes a novel multiobjective optimization model using atomic l0 norm and a variable-length evolutionary algorithm with innovative coding and pruning strategies.
Findings
Outperforms existing methods in frequency estimation accuracy.
Accurately determines model order without resolution bias.
Demonstrates robustness in noisy environments.
Abstract
Gridless methods show great superiority in line spectral estimation. These methods need to solve an atomic norm (i.e., the continuous analog of norm) minimization problem to estimate frequencies and model order. Since this problem is NP-hard to compute, relaxations of atomic norm, such as nuclear norm and reweighted atomic norm, have been employed for promoting sparsity. However, the relaxations give rise to a resolution limit, subsequently leading to biased model order and convergence error. To overcome the above shortcomings of relaxation, we propose a novel idea of simultaneously estimating the frequencies and model order by means of the atomic norm. To accomplish this idea, we build a multiobjective optimization model. The measurment error and the atomic norm are taken as the two optimization objectives. The proposed model directly exploits the model…
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Taxonomy
TopicsStructural Health Monitoring Techniques · Blind Source Separation Techniques · Advanced Measurement and Detection Methods
MethodsPruning
