Novel virtual sample generation using Gibbs Sampling integrated with GRNN for handling small data in soft sensing

Qun Zhu, Qianchuan Zhao, Yuan Xu, Yanlin He
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Abstract

In order to optimize complex industrial processes, an accurate model is essential. The mainstream approach for complex industrial modeling is data-driven soft sensors. However, the accuracy of the established models is often low due to an insufficient amount of effective data, so the method of generating virtual samples has been proposed to achieve data augmentation, but the previous virtual sample generation methods have ignored the correlation between samples. To solve this problem, an effective virtual sample generation method based on Gibbs Sampling algorithm (GS- VSG) is proposed in this paper. In the proposed method, virtual input samples are first generated using the prior knowledge of the original data through the Gibbs Sampling method. Next, a generalized regression neural network (GRNN) model is constructed from the raw data, which is used to predict the output values of the virtual samples. Finally, the input and output parts of the virtual samples are combined to create a virtual sample set, which completes the extension of the original data set. To demonstrate the feasibility of the proposed GS- VSG method, numerical example and real industrial process dataset are used for simulation experiments. The results show that GS- VSG generated samples can improve the model accuracy and is a good technique for virtual sample generation.
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基于吉布斯采样与GRNN相结合的新型虚拟样本生成方法用于软测量中的小数据处理
为了优化复杂的工业过程,精确的模型是必不可少的。复杂工业建模的主流方法是数据驱动的软传感器。然而,由于有效数据量不足,所建立的模型的准确性往往较低,因此提出了生成虚拟样本的方法来实现数据增强,但以往的虚拟样本生成方法忽略了样本之间的相关性。为了解决这一问题,本文提出了一种有效的基于Gibbs采样算法的虚拟样本生成方法(GS- VSG)。在该方法中,首先利用原始数据的先验知识,通过吉布斯采样法生成虚拟输入样本。其次,从原始数据构建广义回归神经网络(GRNN)模型,用于预测虚拟样本的输出值。最后,将虚拟样本的输入和输出部分组合成虚拟样本集,完成对原始数据集的扩展。为了验证所提出的GS- VSG方法的可行性,利用数值算例和实际工业过程数据集进行了仿真实验。结果表明,GS- VSG生成的样本可以提高模型的精度,是一种很好的虚拟样本生成技术。
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