中国科学院数学与系统科学研究院期刊网

14 March 2026, Volume 47 Issue 1
    

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  • Zhang Bo
    Journal on Numerica Methods and Computer Applications. 2026, 47(1): 1-2. https://doi.org/10.12288/szjs.2026.1.1
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  • Zhou Xin, Huang Zhongyi, Yang Wenli
    Journal on Numerica Methods and Computer Applications. 2026, 47(1): 3-27. https://doi.org/10.12288/szjs.s2025-1033
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    The paper integrates low-rank quaternion matrix recovery with the Deep Image Prior method to propose a novel color image inpainting model, LRQMD(Low-Rank Quaternion Matrix Completion with Deep Image Prior). A corresponding numerical algorithm is developed based on the Alternating Direction Method of Multipliers. Furthermore, preliminary analysis of the model's reconstruction capability is conducted using the theories of exact low-rank matrix completion and neural tangent kernels, and the convergence and optimality conditions of the proposed algorithm are established. In terms of network architecture, Inverse Evolution Layers, constructed based on the heat diffusion equation, are introduced. Experiments demonstrate that combining IELs with the LRQMD model improves denoising performance. Finally, numerical experiments compare LRQMD with traditional methods such as LRQMC and QDIP, confirming its superiority in color image restoration tasks.
  • Shi Shengxian, Wang Zhen, Li Gongsheng
    Journal on Numerica Methods and Computer Applications. 2026, 47(1): 28-44. https://doi.org/10.12288/szjs.s2025-1051
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    This article deals with asymptotic solution to a fractional-order dynamic system describing interactions of cell-chalone in micro-environment and inversion of the fractional order. The asymptotic solution is derived by the Laplace-ADM method, and convergence of the asymptotic solution to the exact solution is proved. Based on the computable asymptotic solution with an observation of the chalone at a given time, the inverse order problem is transformed to a nonlinear algebraic equation, and its uniqueness is obtained by monotonicity of the nonlinear function of the order. Furthermore, inverse problem of determining the multi-parameters of the model is discussed also based on the asymptotic solution. Numerical inversions with noisy data are presented showing that the average inversion solution approximates to the exact solution as the noise level goes to small.
  • Zhao Lu, Shen Ning, Dong Heping
    Journal on Numerica Methods and Computer Applications. 2026, 47(1): 45-65. https://doi.org/10.12288/szjs.s2025-1057
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    This paper concerns the inverse scattering problem for a locally rough surface. We propose a nonlinear integral equation method to reconstruct both the shape and location of the locally rough surface by using scattered field or phaseless total field data for single point source. Based on potential theory, we establish the associated field equation and data equation. The density is solved from the field equation, and then the update of boundary is derived by the linearized data equation. This process continues iteratively until the relative error of the scattered field meets a prescribed tolerance. Furthermore, by employing the reflection principle, we prove the injectivity and dense range property of the Fréchet derivative operator, which provides a theoretical guarantee for the solvability of the linearized data equation. Numerical experiments are presented to demonstrate the effectiveness and robustness of the proposed iterative algorithm.
  • Zhang Lei, Wang Jie
    Journal on Numerica Methods and Computer Applications. 2026, 47(1): 66-80. https://doi.org/10.12288/szjs.s2025-1059
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    This paper investigates the problem of recovering the geometric parameters of fractal rough surfaces from measured scattered-field data. By integrating a self-attention mechanism with physical parameter properties, we propose a new neural network architecture, termed the Surface Reconstruction Neural Network (SRNN), for surface parameter estimation. By the structural characteristics of SRNN, we prove its numerical convergence. Numerical experiments further demonstrate the effectiveness of the proposed method.
  • Zhang Haoran, Ji Xia
    Journal on Numerica Methods and Computer Applications. 2026, 47(1): 81-100. https://doi.org/10.12288/szjs.s2025-1064
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    Acoustic point source inversion is a critical yet ill-posed inverse problem in wave physics, proving particularly challenging when observation data is sparse, limited-aperture, and noisy. To overcome the limitations of traditional methods and existing deep learning models in addressing complex multi-source and strong-interference scenarios, this paper proposes a unified end-to-end inversion network based on Multi-Frequency data fusion and the Transformer (Multi-Frequency Field and Count Transformer, MFFC-Former). The model innovatively aggregates the Multi-Frequency complex response from each measurement point into a feature token. It then leverages the Transformer's powerful self-attention mechanism to capture the global dependencies among all measurement points, thereby synchronously performing source count classification and location indicator field regression within a single network. This end-to-end, multi-task learning paradigm discards complex post-processing steps (such as MCMC) and avoids reliance on information such as noise priors, enhancing solution efficiency and system integration. Numerical experiments under complex conditions, involving up to 6 point sources and high noise levels (up to 20\%), demonstrate that MFFC-Former outperforms a fully connected network (MLP) baseline with a comparable number of parameters in both average localization error and count prediction accuracy. Particularly in the challenging scenario with 6 sources and 20\% noise, where the MLP baseline fails to resolve all sources, MFFC-Former successfully resolves and locates all source points, demonstrating its resolution and robustness in multi-source, strong-interference environments. The results of this study demonstrate that leveraging the Transformer architecture to effectively fuse the intrinsic correlations within Multi-Frequency observation data is a viable pathway for solving such highly ill-posed inverse problems.
  • Wang Yifan, Hu Guanghui
    Journal on Numerica Methods and Computer Applications. 2026, 47(1): 101-124. https://doi.org/10.12288/szjs.s2025-1065
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    Inverse problems for the wave equation aims to reconstruct unknown model coefficients such as sources and media through external observation data. It has wide applications in many engineering fields. This paper is concerned with the inverse moving point source problems, which plays an important role in accurately recovering the motion characteristics and flight parameters of a moving object. First, a mathematical model for the moving source problem in the frequency domain is established based on the the Fourier transform. Then, the trajectory of the moving source is reconstructed using least squares and nonlinear optimization algorithms. For smooth motion trajectory functions, the effects of parameters such as frequency-band, observation directions, and the number of series expansion terms on the inversion results are discussed. In the three-dimensional case, inversion algorithm is performed using multi-frequency far-field and near-field observation data contaminated by white noise. Through extensive numerical experiments, it is found that the algorithm exhibits good accuracy and robustness under a certain level of noise interference. Furthermore, numerical experiments are also conducted for cases where the motion trajectory is a non-smooth function and a multi-scale function, yielding satisfactory results.
  • Wang Taige, Lu Xiliang
    Journal on Numerica Methods and Computer Applications. 2026, 47(1): 125-136. https://doi.org/10.12288/szjs.s2025-1069
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    This paper combines the Tikhonov regularization method with a sequential quadratic programming(SQP) scheme to propose a new iterative regularization approach for nonlinear inverse problems. Incorporating a line-search strategy, we establish the global convergence and its regularization property in the presence of noise. Several numerical experiments are given to demonstrate its effectiveness.