径向基本函数网络边值问题的改进学习算法

V. Gorbachenko, K. Savenkov
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引用次数: 1

摘要

数字孪生在现代工业中应用广泛。数字孪生是一种复制物理对象行为的计算机模型。具有分布参数对象的数字孪生是偏微分方程的数学边值问题。传统上,这类问题是通过有限差分法和有限元法来解决的,这需要复杂的网格构建过程。边值问题的数值解采用不需要构建网格的无网格方法。在网格减少方法中,以径向基函数(rbf)为基本函数的投影方法得到了广泛的应用。使用RBF的方法允许我们在解域中的任意点获得可微解,适用于具有复杂计算域的任意维问题。求解问题时,选取基本函数的参数,计算权值,使方程中各测试点的近似解代入后得到的残差为零。
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Improving Algorithms for Learning Radial Basic Functions Networks to Solve the Boundary Value Problems
Digital twins are widely used in modern industry. A digital twin is a computer model that copies the behavior of a physical object. Digital twins of objects with distributed parameters are mathematically boundary value problems for partial differential equation. Traditionally, such problems are solved by finite difference and finite element methods, which require a complex grid construction procedure. The numerical solution of boundary value problems employs mesh less methods that do not require grid construction. Among mesh fewer methods, projection methods that use radial basis functions (RBFs) as basic functions are popular. Methods using RBF allow us to obtain a differentiable solution at any point in the solution domain, applicable to problems of arbitrary dimension with complex computational domains. When solving the problem, the parameters of the basic functions are selected, and the weights are calculated so that the residuals obtained after the substitution of the approximate solution at the test points in the equation are zero.
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Optimizing the Production Parameters of Peasant Holdings for Industrial Development in the Digitalization Era Improving Algorithms for Learning Radial Basic Functions Networks to Solve the Boundary Value Problems
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