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ss5:A Neural Network-based Energy Consumption Prediction Model for Feature Selection and Paremeter Optimization of Winders

机译:ss5:基于神经网络的能耗预测模型,用于奇迹的特征选择和参数优化

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Textile industry has become the third largest energy consuming industry after engineering and chemical sectors. In order to reduce the energy consumption in the textile industry, a neural network is used to establish the energy consumption prediction model of the winder. In this research, the model is specially designed as the objective function to optimize the energy consumption of the winders. Firstly, the neural network error back propagation is analyzed and the absolute values of the weight coefficient matrix product are used to approximate the influence of input parameters on the model output. The values are also used to select the core parameters to optimize the model. Secondly, the single-dimensional search method is applied for a set of parameter values within a reasonable interval of the whole input parameters to reduce the energy consumption. Experimental results indicate that a set of core parameters can be determined to remodel after the training of the neural network model. In addition, a set of parameter values obtained by single-dimensional search can also be used to effectively reduce the energy consumption of the winders. The proposed method effectively solves the problem and is efficient and straightforward. The feasibility of the proposed approach is validated through the comparative analysis.
机译:纺织工业已成为仅次于工程和化学领域的第三大能源消耗工业。为了减少纺织工业的能耗,使用神经网络建立络筒机的能耗预测模型。在这项研究中,该模型是专门设计为用于优化络筒机能耗的目标函数。首先,分析了神经网络的误差反向传播,并使用权重系数矩阵乘积的绝对值来近似估计输入参数对模型输出的影响。这些值还用于选择核心参数以优化模型。其次,将一维搜索方法应用于整个输入参数的合理间隔内的一组参数值,以减少能耗。实验结果表明,在训练神经网络模型后,可以确定一组核心参数以进行重塑。另外,通过一维搜索获得的一组参数值也可以用于有效地减少络筒机的能量消耗。所提出的方法有效地解决了该问题并且是有效且直接的。通过比较分析验证了所提方法的可行性。

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