Learning river water quality models by l1-weighted regularization

IF 1.4 4区 数学 Q2 MATHEMATICS, APPLIED
Dinh Nho Hào, Duong Xuan Hiep, Pham Quy Muoi
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引用次数: 0

Abstract

Abstract We investigate the problem of learning a water quality model (BOD-DO model) from given data. Assuming that all parameters in the model are constants, we reformulate the problem as a system of linear equations for the unknown terms. Since in practice the system is often under-determined or over-determined and the observed data are noisy, we use an $l^{1}$-weighted regularization method to find a stable approximate solution. Then, Nesterov’s algorithm is used to solve the regularized problem. Learning models with variable coefficients are also discussed. Numerical examples show that our approach works well with noisy data and has the ability to learn the BOD-DO model.
用11加权正则化方法学习河流水质模型
摘要研究了从给定数据中学习水质模型(BOD-DO模型)的问题。假设模型中的所有参数都是常数,我们将问题重新表述为未知项的线性方程组。由于在实际应用中,系统经常是欠确定或过确定的,并且观测到的数据是有噪声的,因此我们使用$ 1 ^{1}$加权正则化方法来寻找稳定的近似解。然后,利用Nesterov算法求解正则化问题。还讨论了变系数学习模型。数值算例表明,该方法可以很好地处理噪声数据,并具有学习BOD-DO模型的能力。
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来源期刊
CiteScore
2.30
自引率
8.30%
发文量
32
审稿时长
24 months
期刊介绍: The IMA Journal of Applied Mathematics is a direct successor of the Journal of the Institute of Mathematics and its Applications which was started in 1965. It is an interdisciplinary journal that publishes research on mathematics arising in the physical sciences and engineering as well as suitable articles in the life sciences, social sciences, and finance. Submissions should address interesting and challenging mathematical problems arising in applications. A good balance between the development of the application(s) and the analysis is expected. Papers that either use established methods to address solved problems or that present analysis in the absence of applications will not be considered. The journal welcomes submissions in many research areas. Examples are: continuum mechanics materials science and elasticity, including boundary layer theory, combustion, complex flows and soft matter, electrohydrodynamics and magnetohydrodynamics, geophysical flows, granular flows, interfacial and free surface flows, vortex dynamics; elasticity theory; linear and nonlinear wave propagation, nonlinear optics and photonics; inverse problems; applied dynamical systems and nonlinear systems; mathematical physics; stochastic differential equations and stochastic dynamics; network science; industrial applications.
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