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Oil and gas pipeline failure prediction system using long range ultrasonic transducers and Euclidean-Support Vector Machines classification approach

机译:使用远程超声换能器和欧几里得-支持向量机分类方法的油气管道故障预测系统

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This paper presents an intelligent failure prediction system for oil and gas pipeline using long range ultrasonic transducers and Euclidean-Support Vector Machines classification approach. Since the past decade, the incidents of oil and gas pipeline leaks and failures which happened around the world are becoming more frequent and have caused loss of life, properties and irreversible environmental damages. This situation is due to the lack of a full-proof method of inspection on the condition of oil and gas pipelines. Onset of corrosion and other defects are undetected which cause unplanned shutdowns and disruption of energy supplies to consumers. Existing failure prediction systems for pipeline which use non-destructive testing (NDTs) methods are accurate, but they are deployed at pre-determined intervals which can be several months apart. Hence, a full-proof and reliable inspection method is required to continuously monitor the condition of oil and gas pipeline in order to provide sufficient information and time to oil and gas operators to plan and organize shutdowns before failures occur. Permanently installed long range ultrasonic transducers (LRUTs) offer a solution to this problem by providing an inspection platform that continuously monitor critical pipeline sections. Data are acquired in real-time and processed to make decision based on the condition of the pipe. The continuous nature of the data requires an automatic decision making software rather than manual inspection by operators. Support Vector Machines (SVMs) classification approach has been increasingly used in a multitude of domains including LRUT and has shown better performance than other classification algorithms. SVM is heavily dependent on the choice of kernel functions as well as fine tuning of the kernel and soft margin parameters. Hence it is unsuitable to be used in continuous monitoring of pipeline data where constant modifications of kernels and parameters are not unrealistic. This paper proposes a novel classification technique, namely Euclidean-Support Vector Machines (Euclidean-SVM), to make a decision on the integrity of the pipeline in a continuous monitoring environment. The results show that the classification accuracy of the Euclidean-SVM approach is not dependent on the choice of the kernel function and parameters when classifying data from pipes with simulated defects. Irrespective of the kernel function and parameters chosen, classification accuracy of the Euclidean-SVM is comparable and also higher in some cases than using conventional SVM. Hence, the Euclidean-SVM approach is ideally suited for classifying data from the oil and gas pipelines which are continuously monitored using LRUT.
机译:本文提出了一种使用远程超声换能器和欧氏支持向量机分类方法的油气管道智能故障预测系统。在过去的十年中,世界各地发生的油气管道泄漏和故障事件变得越来越频繁,并造成了生命,财产损失和不可逆转的环境破坏。这种情况是由于缺乏对石油和天然气管道状况的全面检验方法所致。未发现腐蚀和其他缺陷的发作,这会导致计划外的停机并中断向消费者的能源供应。现有的使用非破坏性测试(NDT)方法的管道故障预测系统是准确的,但是它们以预定的间隔部署,间隔可以间隔数月。因此,需要一种完全可靠且可靠的检查方法来连续监视油气管道的状况,以便为油气经营者提供足够的信息和时间,以便在发生故障之前计划和组织停机。永久安装的远程超声波换能器(LRUT)通过提供可连续监视关键管道截面的检查平台,为解决此问题提供了解决方案。实时获取数据并进行处理以根据管道状况做出决策。数据的连续性要求使用自动决策软件,而不是操作员进行手动检查。支持向量机(SVM)分类方法已在包括LRUT在内的许多领域中得到越来越多的使用,并且表现出比其他分类算法更好的性能。 SVM在很大程度上取决于内核功能的选择以及对内核和软裕度参数的微调。因此,不适合用于对内核和参数进行不间断修改的管道数据的连续监视。本文提出了一种新的分类技术,即欧氏支持向量机(Euclidean-SVM),以在连续监控环境中对管道的完整性做出决策。结果表明,在对具有模拟缺陷的管道中的数据进行分类时,欧氏SVM方法的分类精度不依赖于核函数和参数的选择。与选择的内核功能和参数无关,欧几里得-SVM的分类准确性是可比的,并且在某些情况下也比使用常规SVM更高。因此,Euclidean-SVM方法非常适合对石油和天然气管道中的数据进行分类,这些数据使用LRUT进行连续监控。

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