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Leak detection of pipeline : an integrated approach of rough set theory and artificial bee colony trained SVM

机译:管道泄漏检测:粗糙集理论和人工蜂群训练的SVM的集成方法

摘要

The generation of leak along the pipeline carrying crude oils and liquid fuels results enormous financial loss to the industry and also affects the public health. Hence, the leak detection and localization problem has always been a major concern for the companies. In spite of the various techniques developed, accuracy and time involved in the prediction is still a matter of concern. In this paper, a novel leak detection scheme based on rough set theory and support vector machine (SVM) is proposed to overcome the problem of false leak detection. In this approach, 'rough set theory' is explored to reduce the length of experimental data as well as generate rules. It is embedded to enhance the decision making process. Further, SVM classifier is employed to inspect the cases that could not be detected by applied rules. For the computational training of SVM, this paper uses swarm intelligence technique: artificial bee colony (ABC) algorithm, which imitates intelligent food searching behavior of honey bees. The results of proposed leak detection scheme with ABC are compared with those obtained by using particle swarm optimization (PSO) and one of its variants, so-called enhanced particle swarm optimization (EPSO). The experimental results advocate the use of propounded method for detecting leaks with maximum accuracy.
机译:沿途输送原油和液体燃料的管道泄漏会给行业造成巨大的财务损失,并影响公众健康。因此,泄漏检测和定位问题一直是各公司关注的主要问题。尽管开发了各种技术,但预测中涉及的准确性和时间仍然令人关注。本文提出了一种基于粗糙集理论和支持向量机(SVM)的泄漏检测方案,以解决错误的泄漏检测问题。在这种方法中,探索了“粗糙集理论”以减少实验数据的长度以及生成规则。它被嵌入以增强决策过程。此外,SVM分类器用于检查应用规则无法检测到的情况。为了支持向量机的计算训练,本文采用了群体智能技术:人工蜂群算法(ABC),该算法模仿了蜜蜂的智能食物搜索行为。将使用ABC提出的泄漏检测方案的结果与通过使用粒子群优化(PSO)及其变体之一(所谓的增强粒子群优化(EPSO))获得的结果进行比较。实验结果提倡使用改进的方法来最大程度地检测泄漏。

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