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首页> 外文期刊>Optics Communications: A Journal Devoted to the Rapid Publication of Short Contributions in the Field of Optics and Interaction of Light with Matter >Solving the nonlinear Schrodinger equation with an unsupervised neural network: estimation of error in solution
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Solving the nonlinear Schrodinger equation with an unsupervised neural network: estimation of error in solution

机译:用无监督神经网络求解非线性Schrodinger方程:估计误差

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We present a practical method for estimating the upper error bound in the neural network (NN) solution of the nonlinear Schrodinger equation (NLSE) under different degrees of nonlinearity. The error bound is a function of the nonnegative energy E value that is minimized when the NN is trained to solve the NLSE. The form of E is derived from the NLSE expression and the NN solution becomes identical with the true NLSE solution only when the E value is reduced exactly to zero. In practice, machines with finite floating-point range and accuracy are used for training and E is not decreased exactly to zero. Knowledge of the error bound permits the estimation of the maximum average error in the NN solution without prior knowledge of the true NLSE solution a crucial factor in the practical applications of the NN technique. The error bound is verified for both the linear time independent Schrodinger equation for a free particle, and the NLSE. We also discuss the conditions where the error bound formulation is valid.
机译:我们提出了一种在不同非线性度下估算非线性Schrodinger方程(NLSE)的神经网络(NN)解决方案中误差上限的实用方法。误差范围是非负能量E值的函数,当训练NN解决NLSE时,该值会最小化。 E的形式是从NLSE表达式得出的,只有当E值精确地减小到零时,NN解才与真正的NLSE解相同。实际上,具有有限浮点范围和精度的机器用于训练,并且E不能精确地减小到零。对误差范围的了解使得可以估计NN解决方案中的最大平均误差,而无需事先了解真正的NLSE解决方案,这是NN技术实际应用中的关键因素。对于自由粒子的线性时间无关薛定inger方程和NLSE均验证了误差范围。我们还将讨论误差界限公式有效的条件。

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