Chinese Journal of Mechanical Engineering (Jul 2024)

Impact Force Localization and Reconstruction via ADMM-based Sparse Regularization Method

  • Yanan Wang,
  • Lin Chen,
  • Junjiang Liu,
  • Baijie Qiao,
  • Weifeng He,
  • Xuefeng Chen

DOI
https://doi.org/10.1186/s10033-024-01044-2
Journal volume & issue
Vol. 37, no. 1
pp. 1 – 19

Abstract

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Abstract In practice, simultaneous impact localization and time history reconstruction can hardly be achieved, due to the ill-posed and under-determined problems induced by the constrained and harsh measuring conditions. Although $$\ell_{1}$$ ℓ 1 regularization can be used to obtain sparse solutions, it tends to underestimate solution amplitudes as a biased estimator. To address this issue, a novel impact force identification method with $$\ell_{p}$$ ℓ p regularization is proposed in this paper, using the alternating direction method of multipliers (ADMM). By decomposing the complex primal problem into sub-problems solvable in parallel via proximal operators, ADMM can address the challenge effectively. To mitigate the sensitivity to regularization parameters, an adaptive regularization parameter is derived based on the K-sparsity strategy. Then, an ADMM-based sparse regularization method is developed, which is capable of handling $$\ell_{p}$$ ℓ p regularization with arbitrary p values using adaptively-updated parameters. The effectiveness and performance of the proposed method are validated on an aircraft skin-like composite structure. Additionally, an investigation into the optimal p value for achieving high-accuracy solutions via $$\ell_{p}$$ ℓ p regularization is conducted. It turns out that $$\ell_{0.6}$$ ℓ 0.6 regularization consistently yields sparser and more accurate solutions for impact force identification compared to the classic $$\ell_{1}$$ ℓ 1 regularization method. The impact force identification method proposed in this paper can simultaneously reconstruct impact time history with high accuracy and accurately localize the impact using an under-determined sensor configuration.

Keywords