利用未标记数据:基于BiLSTM-Deep自编码器的增强稀土成分含量预测。

Wenhao Dai, Rongxiu Lu, Jianyong Zhu, Pengzhan Chen, Hui Yang
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引用次数: 0

摘要

用于预测稀土成分含量的传统数据驱动模型主要依靠监督学习方法开发,这种方法存在诸如缺乏标记数据、滞后以及对大量未标记数据的不良利用等局限性。本文提出了一种基于BiLSTM-Deep自编码器增强传统LSSVM算法的预测方法,称为BiLSTM-DeepAE-LSSVM。该方法充分利用了稀土生产过程中大量未标注数据所包含的隐含信息,从而改进了传统的监督预测方法,提高了成分含量预测的准确性。首先,建立BiLSTM自编码器,对稀土生产过程数据进行无监督训练,提取其固有的时间序列特征。随后,在Deep自编码器训练过程中引入布尔向量,对输入数据进行掩蔽操作,模拟有噪声和缺失数据的场景。这得益于它们对伯努利分布的遵守,伯努利分布允许将某些输入向量维度随机设置为零。此外,深度自动编码器能够从数据中提取高维隐式特征。然后,将传统的监督预测技术最小二乘支持向量机(LSSVM)与构造良好的BiLSTM-Deep自编码器的隐式特征融合,最终建立稀土成分含量的预测模型。最后,使用LaCe/PrNd提取现场数据的模拟验证表明,所提出的方法在利用稀土提取生产过程中大量未标记数据方面是有效的,从而提高了模型预测的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Harnessing unlabeled data: Enhanced rare earth component content prediction based on BiLSTM-Deep autoencoder.

Traditional data-driven models for predicting rare earth component content are primarily developed by relying on supervised learning methods, which suffer from limitations such as a lack of labeled data, lagging, and poor usage of a major amount of unlabeled data. This paper proposes a novel prediction approach based on the BiLSTM-Deep autoencoder enhanced traditional LSSVM algorithm, termed BiLSTM-DeepAE-LSSVM. This approach thoroughly exploits the implicit information contained in copious amounts of unlabeled data in the rare earth production process, thereby improving the traditional supervised prediction method and increasing the accuracy of component content predictions. Initially, a BiLSTM autoencoder is established for unsupervised training on the rare earth production process data, enabling the extraction of inherent time series characteristics. Subsequently, boolean vectors are introduced in the Deep autoencoder training process to perform masking operations on the input data, simulating scenarios with noise and missing data. This is facilitated by their adherence to Bernoulli distributions, which allow for the random setting of certain input vector dimensions to zero. Additionally, the Deep autoencoder is capable of extracting high-dimensional implicit features from the data. After that, the conventional supervised prediction technique, least squares support vector machine (LSSVM), is fused with the implicit characteristics derived from the well-constructed BiLSTM-Deep autoencoder, culminating in the creation of a prediction model for rare earth component content. Ultimately, the simulation verification using LaCe/PrNd extraction field data demonstrates the effectiveness of the proposed approach in harnessing substantial quantities of unlabeled data from the rare earth extraction production process, thereby bolstering the accuracy of model predictions.

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