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The Use of Hybrid Algorithms to Improve the Performance of Yarn Parameters Prediction Models

机译:使用混合算法提高纱线参数预测模型的性能

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Although gradient based Backpropagation (BP) training algorithms have been widely used in Artificial Neural Networks (ANN) models for the prediction of yarn quality properties, they still suffer from some drawbacks which include tendency to converge to local minima. One strategy of improving ANN models trained using gradient based BP algorithms is the use of hybrid training algorithms made of global based algorithms and local based BP algorithms. The aim of this paper was to improve the performance of Levenberg-Marquardt Backpropagation (LMBP) training algorithm, which is a local based BP algorithm by using a hybrid algorithm. The hybrid algorithms combined Differential Evolution (DE) and LMBP algorithms. The yarn quality prediction models trained using the hybrid algorithms performed better and exhibited better generalization when compared to the models trained using the LM algorithms.
机译:尽管基于梯度的反向传播(BP)训练算法已在人工神经网络(ANN)模型中广泛用于预测纱线质量特性,但它们仍存在一些缺点,包括趋于收敛到局部最小值的趋势。改进使用基于梯度的BP算法训练的ANN模型的一种策略是使用由基于全局的算法和基于局部的BP算法组成的混合训练算法。本文的目的是通过混合算法提高Levenberg-Marquardt反向传播(LMBP)训练算法的性能,该算法是一种基于局部的BP算法。混合算法结合了差分进化(DE)和LMBP算法。与使用LM算法训练的模型相比,使用混合算法训练的纱线质量预测模型表现更好,泛化效果更好。

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