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Quantitative Evaluation Method for the Significance of Worsted Forespinning Parameters Based on BP Network

机译:基于BP网络的最严格禁止参数的重要性评价方法

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The BP neural network characteristic has been summarily analyzed. Based on its error back propagation method, the peculiarity of modifying its weightiness and threshold value to make the calculated error come down along the negative gradient direction, the article proposed a new approach that used the weightiness distribution between the input and output layer to appraise the input parameters'' significant degree. Take the worsted craft as the example, each input parameter''s contribution rate has been calculated to the roving unevenness (R1) and roving weight (R2) respectively, and the remarkable and effective parameters are excavated out. Meanwhile contrasting to the multivariate regression significance analysis (MRSA), the BP neural network method is more exact than MRSA and also can be used in the forecast and control of the actual produce and manufacture.
机译:BP神经网络特性已被概括地分析。基于其误差反向传播方法,修改其加权和阈值的特殊性,以使计算错误沿着负梯度方向下降,本文提出了一种新方法,它使用输入和输出层之间的加权分布来评估输入参数的“显着程度”。作为示例采取最坏的工艺,分别计算了每个输入参数的贡献率,分别计算粗糙的不均匀性(R1)和粗ROVE1重量(R2),并且挖掘出显着且有效的参数。同时对多元回归意义分析(MRSA)的对比,BP神经网络方法比MRSA更精确,也可用于预测和控制实际生产和制造。

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