Neural networks singular evolutive interpolated Kalman filter and its application to data assimilation for 2D water pollution model

IF 0.5 4区 数学 Q4 MATHEMATICS, APPLIED Russian Journal of Numerical Analysis and Mathematical Modelling Pub Date : 2023-06-01 DOI:10.1515/rnam-2023-0015
T. Tran, V. Shutyaev, H. S. Hoang, Shuai Li, Chinh Kien Nguyen, Hong Phong Nguyen, Thi Thanh Huong Duong
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Abstract

Abstract The present study promotes a new algorithm for estimating the water pollution propagation with the primary goal of providing more reliable and high quality estimates to decision makers. To date, the widely used variational method suffers from the large computational burden, which limits its application in practice. Moreover, this method, considering the initial state as a control variable, is very sensitive in specifying initial error, especially for unstable dynamical systems. The Neural Network Filter (NNF), proposed in the present paper, is aimed at overcoming these two drawbacks in the variational method: by its nature, the NNF is sequential (no batch large assimilation window used) and stable even for unstable dynamics, with the gain parameters as control variables. The NNF, developed in the present paper, is a Neural Network Filter (NNF) version of the Singular Evolutive Interpolated Kalman Filter (SEIKF). One of the new versions of this NNF is that it uses structure of the gain of SEIKF0 taken by the SEIKF at the first time moment of correction process. To deal with the uncertainty of the system parameters and of the noise covariance, the proposed Neural Network SEIKF0 named by NNSEIKF0 makes use of the covariance of a reduced rank iterated during assimilation process and of some pertinent gain parameters tuned adaptively to yield the minimum prediction error for the system output. The computational burden in implementation of the NNSEIKF0 is reduced drastically due to applying the optimization tool known as a simultaneous perturbation stochastic approximation (SPSA) algorithm, which requires only two integrations of the numerical model. No iterative loop is required at each assimilation instant as usually happens with the standard gradient descent optimization algorithms. Data assimilation experiment, carried out by the SEIKF0 and NNSEIKF0, is implemented for the Thanh Nhan Lake in Hanoi and the performance comparison between the NNSEIKF0 and SEIKF0 is given to show the high efficiency of the proposed NNSEIKF0.
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神经网络奇异进化插值卡尔曼滤波器及其在二维水污染模型数据同化中的应用
摘要本研究提出了一种估计水污染传播的新算法,其主要目标是为决策者提供更可靠、高质量的估计。迄今为止,广泛使用的变分法计算量大,限制了其在实践中的应用。此外,该方法将初始状态视为控制变量,在指定初始误差时非常敏感,尤其是对于不稳定动力系统。本文提出的神经网络滤波器(NNF)旨在克服变分法中的这两个缺点:从本质上讲,NNF是连续的(不使用批量大同化窗口),即使在不稳定的动力学中也是稳定的,以增益参数为控制变量。本文开发的NNF是奇异进化插值卡尔曼滤波器(SEIKF)的神经网络滤波器(NNF)版本。该NNF的一个新版本是,它使用SEIKF在校正过程的第一个时刻获得的SEIKF0的增益的结构。为了处理系统参数和噪声协方差的不确定性,所提出的由NNSEIKF0命名的神经网络SEIKF0利用同化过程中迭代的降阶协方差和自适应调整的一些相关增益参数,以产生系统输出的最小预测误差。由于应用了被称为同时扰动随机近似(SPSA)算法的优化工具,NNSEIKF0实现中的计算负担大大减少,该算法只需要对数值模型进行两次积分。在每个同化时刻不需要迭代循环,就像标准梯度下降优化算法通常发生的那样。利用SEIKF0和NNSEIKF0对河内的Thanh Nhan湖进行了数据同化实验,并将其与SEIKF0进行了性能比较,表明了所提出的NNSEIKFO的高效性。
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来源期刊
CiteScore
1.40
自引率
16.70%
发文量
31
审稿时长
>12 weeks
期刊介绍: The Russian Journal of Numerical Analysis and Mathematical Modelling, published bimonthly, provides English translations of selected new original Russian papers on the theoretical aspects of numerical analysis and the application of mathematical methods to simulation and modelling. The editorial board, consisting of the most prominent Russian scientists in numerical analysis and mathematical modelling, selects papers on the basis of their high scientific standard, innovative approach and topical interest. Topics: -numerical analysis- numerical linear algebra- finite element methods for PDEs- iterative methods- Monte-Carlo methods- mathematical modelling and numerical simulation in geophysical hydrodynamics, immunology and medicine, fluid mechanics and electrodynamics, geosciences.
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