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Modeling dynamic engineering processes using radial-Gaussian neural networks

机译:使用径向高斯神经网络对动态工程过程建模

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摘要

The paper proposes and evaluates an artificial neural network based method of modeling the dynamic behavior of continua. The technique is applicable to situations where the differential equations governing the behavior of a system are nonlinearand poorly understood, and the data available for training is noisy. A method of modeling the unknown component of governing differential equations using neural network technology, is first described. This includes a method for averaging out localizederrors in the neural network function that results from noise in the training data. A description is then given of a radial-Gaussian neural network architecture and training algorithm adopted for this application. The construction of a complete simulation model of a specific system from the trained neural networks is demonstrated. The performance of the proposed approach is assessed in a series of experiments simulating the nonlinear thermal behavior of a translucent solid material. The system is proven to perform most effectively using the proposed error averaging technique, and to be capable of providing an accurate simulation of a system's behavior sustained over many thousands of simulation time steps.
机译:本文提出并评估了一种基于人工神经网络的连续体动态行为建模方法。该技术适用于以下情况:控制系统行为的微分方程是非线性的并且了解得很少,并且可用于训练的数据有噪声。首先介绍了使用神经网络技术对控制微分方程的未知分量进行建模的方法。这包括一种方法,用于平均化由训练数据中的噪声导致的神经网络功能中的局部误差。然后给出了针对该应用采用的径向高斯神经网络架构和训练算法的描述。演示了从受过训练的神经网络构建特定系统的完整仿真模型的过程。在一系列模拟半透明固体材料的非线性热行为的实验中,对所提出方法的性能进行了评估。使用所提出的误差平均技术,该系统被证明可以最有效地执行,并且能够对在数千个仿真时间步长上持续的系统行为提供准确的仿真。

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