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首页> 外文期刊>Journal of Thermal Spray Technology >Improving the Generalization Ability of an Artificial Neural Network in Predicting In-Flight Particle Characteristics of an Atmospheric Plasma Spray Process
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Improving the Generalization Ability of an Artificial Neural Network in Predicting In-Flight Particle Characteristics of an Atmospheric Plasma Spray Process

机译:提高人工神经网络的泛化能力,以预测大气等离子喷涂过程中的飞行中粒子特征

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摘要

This paper presents the application of the artificial neural network into an atmospheric plasma spray process for predicting the in-flight particle characteristics, which have significant influence on the in-service coating properties. One of the major problems for such function-approximating neural network is over-fitting, which reduces the generalization capability of a trained network and its ability to work with sufficient accuracy under a new environment. Two methods are used to analyze the improvement in the network's generalization ability: (i) cross-validation and early stopping, and (ii) Bayesian regularization. Simulations are performed both on the original and expanded database with different training conditions to obtain the variations in performance of the trained networks under various environments. The study further illustrates the design and optimization procedures and analyzes the predicted values, with respect to the experimental ones, to evaluate the performance and generalization ability of the network. The simulation results show that the performance of the trained networks with regularization is improved over that with cross-validation and early stopping and, furthermore, the generalization capability of the networks is improved; thus preventing any phenomenon associated with over-fitting.
机译:本文介绍了人工神经网络在大气等离子喷涂过程中的应用,以预测飞行中的颗粒特性,这对使用中的涂层性能有重要影响。这种逼近神经网络的主要问题之一是过度拟合,这降低了训练网络的泛化能力及其在新环境下以足够的精度工作的能力。使用两种方法来分析网络泛化能力的提高:(i)交叉验证和早期停止,以及(ii)贝叶斯正则化。在具有不同训练条件的原始数据库和扩展数据库上都进行了仿真,以获得在各种环境下训练网络的性能变化。该研究进一步说明了设计和优化过程,并针对实验值分析了预测值,以评估网络的性能和泛化能力。仿真结果表明,经过正规化的训练网络的性能优于交叉验证和提前停止的性能,并且网络的泛化能力得到了提高。从而防止与过度安装相关的任何现象。

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