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Numerical sensitive data recognition based on hybrid gene expression programming for active distribution networks

机译:基于混合基因表达式编程的有源分配网络的数值敏感数据识别

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Complex and flexible access mode, and frequent data interaction bring about large security risks to data transmission for active distribution networks. How to ensure data security is critical to the safe and stable operation of active distribution networks. Traditional methods, like access control, data encryption, and text filtering based on intelligent algorithms, are difficult to ensure the security of dynamically increased and high-dimensional numerical data transmission in active distribution networks. In this paper, we first propose a rough feature selection algorithm based on the average importance measurement (RFS-AIM) to simplify the complexity of data recognition. Then, we propose a sensitive data recognition function mining algorithm based on RFS-AIM and improved gene expression programming (SDR-IGEP) where population update operation is constructed by chromosome similarity based on the Jaccard coefficient. The operation avoids local convergence of the gene express programming by increasing individual diversity in the new population. Finally, we present a new incremental mining algorithm for a sensitive data recognition function based on global function fitting (ISDR-GFF) by using a grain granulation model for incremental datasets. The experimental results on IEEE benchmark datasets and real datasets show that the algorithms proposed in this paper outperform the state-of-the-art algorithms in terms of the average running time, precision, recall, F-1 index, accuracy, specificity and speedup on all experimental datasets. (C) 2020 Elsevier B.V. All rights reserved.
机译:复杂和灵活的访问模式,以及频繁的数据交互为主动配送网络的数据传输带来了大量的安全风险。如何确保数据安全对主动配送网络的安全和稳定运行至关重要。传统方法,如访问控制,数据加密和基于智能算法的文本过滤,很难确保在主动分配网络中动态增加和高维数值数据传输的安全性。在本文中,我们首先提出了一种粗略的特征选择算法,基于平均重要性测量(RFS-AIM)来简化数据识别的复杂性。然后,我们提出了一种基于RFS-AIM的敏感数据识别函数挖掘算法和改进的基因表达编程(SDR-IGEP),其中通过基于Jaccard系数通过染色体相似性构建群体更新操作。该操作通过增加新人群中的个体多样性来避免基因快速编程的局部收敛性。最后,我们通过使用用于增量数据集的谷物造粒模型,为基于全局函数拟合(ISDR-GFF)的敏感数据识别功能提供了一种新的增量挖掘算法。 IEEE基准数据集和实际数据集的实验结果表明,本文提出的算法在平均运行时间,精度,召回,F-1指数,准确性,特异性和加速方面优于最先进的算法在所有实验数据集上。 (c)2020 Elsevier B.V.保留所有权利。

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