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Variable selection based on random vector functional-link in soft sensor modeling

机译:软传感器建模中基于随机矢量功能链接的变量选择

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摘要

In soft sensor applications, the prediction using only relevant variables significantly improves model accuracy and decreases computational costs. This paper proposed a new method for variable selection based on random vector functional-link (RVFL) neural network model. This method removes input nodes from variable set according to an exclusion criterion by backward selection. Then the remaining weights are adjusted by keeping network output unchanged instead of retraining the network. Finally, the algorithm outputs a set containing the input variables which are ordered in a selection rank. Different methods are applied to several datasets. The results validates that the proposed method selects the lowest number of variables and achieves the satisfactory performance.
机译:在软传感器应用中,仅使用相关变量进行预测可以显着提高模型准确性并降低计算成本。提出了一种基于随机矢量功能链接(RVFL)神经网络模型的变量选择新方法。该方法通过排除选择根据排除标准从变量集中删除输入节点。然后,通过保持网络输出不变而不是重新训练网络来调整剩余权重。最后,算法输出包含输入变量的集合,这些输入变量按选择等级排序。不同的方法应用于多个数据集。结果验证了所提出的方法选择了最少的变量,并获得了令人满意的性能。

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