首页> 外文会议>International Conference on Natural Computation;ICNC '09 >Objective Assessment of Pilling of Knitted Fabrics Based on Improved BP Neural Network and Genetic Algorithm
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Objective Assessment of Pilling of Knitted Fabrics Based on Improved BP Neural Network and Genetic Algorithm

机译:基于改进BP神经网络和遗传算法的针织物起球性客观评估

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Pilling assessment is an important work in fabric performance specifications. This paper describes a kind of objective assessment method of pilling of knitted fabrics. Improved BP (IBP) neural network is used for giving the degree of the pilling. To avoid standard BP algorithmȁ9;s shortcoming of trapping to a local optimum and to take advantage of the genetic algorithm (GA)ȁ9;s globe optimal searching, a new kind of hybrid algorithm was formed based on the IBP neural network and GA. BP neural network was improved by adding the inertia impulse and self-adaptation learning rate to lessen convergence vibration and increase the learning speed. Then the initialized weights and thresholds of IBP neural network were optimized with GA. Three feature parameters are selected for the input of BP network. The experiment result shows that using this method can satisfy the demand.
机译:起球评估是织物性能规格中的一项重要工作。本文介绍了一种针织物起球的客观评价方法。改进的BP(IBP)神经网络用于给出起球的程度。为避免标准的BP算法ȁ9陷入局部最优的缺点,并利用遗传算法ȁ9的全局最优搜索,在IBP神经网络和遗传算法的基础上形成了一种新型的混合算法。通过增加惯性冲量和自适应学习率来改善BP神经网络,以减小收敛振动并提高学习速度。然后,利用遗传算法优化了初始BP神经网络的权重和阈值。为BP网络的输入选择了三个特征参数。实验结果表明,该方法可以满足要求。

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