Shi Jue, Chen Xiaofang, Xie Yongfang, Zhang Hongliang, Sun Yubo
IEEE Trans Neural Netw Learn Syst. 2024 Mar;35(3):3027-3037. doi: 10.1109/TNNLS.2023.3280963. Epub 2024 Feb 29.
As the profit and safety requirements become higher and higher, it is more and more necessary to realize an advanced intelligent analysis for abnormity forecast of the synthetical balance of material and energy (AF-SBME) on aluminum reduction cells (ARCs). Without loss of generality, AF-SBME belongs to classification problems. Its advanced intelligent analysis can be realized by high-performance data-driven classifiers. However, AF-SBME has some difficulties, including a high requirement for interpretability of data-driven classifiers, a small number, and decreasing-over-time correctness of training samples. In this article, based on a preferable data-driven classifier, which is called a reinforced k -nearest neighbor (R-KNN) classifier, a delicately R-KNN combined with expert knowledge (DR-KNN/CE) is proposed. It improves R-KNN in two ways, including using expert knowledge as external assistance and enhancing self-ability to mine and synthesize data knowledge. The related experiments on AF-SBME, where the relevant data are directly sampled from practical production, have demonstrated that the proposed DR-KNN/CE not only makes an effective improvement for R-KNN, but also has a more advanced performance compared with other existing high-performance data-driven classifiers.
随着对利润和安全要求越来越高,对铝电解槽(ARC)的物料与能量综合平衡异常预测(AF-SBME)实现先进的智能分析变得越来越必要。一般来说,AF-SBME属于分类问题。其先进的智能分析可通过高性能的数据驱动分类器来实现。然而,AF-SBME存在一些困难,包括对数据驱动分类器的可解释性要求高、训练样本数量少以及正确性随时间下降。在本文中,基于一种性能优良的数据驱动分类器——增强k近邻(R-KNN)分类器,提出了一种将R-KNN与专家知识巧妙结合的(DR-KNN/CE)方法。它从两个方面改进了R-KNN,包括将专家知识作为外部辅助以及增强自身挖掘和综合数据知识的能力。在AF-SBME上进行的相关实验,其中相关数据直接从实际生产中采样,结果表明所提出的DR-KNN/CE不仅对R-KNN有有效的改进,而且与其他现有的高性能数据驱动分类器相比具有更先进的性能。