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Multipoint hoop strain measurement based pipeline leakage localization with an optimized support vector regression approach

机译:基于多点箍应变测量的流水线泄漏定位,具有优化的支持向量回归方法

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摘要

Pipelines are used to carry fluids across long distances. Given the costly and hazardous nature of some of these fluids, timely and accurate inspection for damages is imperative to prevent harmful financial and environmental consequences. In the previous research, a fiber optic based hoop strain sensor is developed and reported to accomplish the goal of pipeline corrosion and leakage monitoring. The sensors form a foundation upon which advanced damaged detection algorithms can be carried out. In this paper, the application of distributed hoop strain sensing information combined with support vector regression (SVR) is demonstrated to pinpoint leakage position on a long-distance pressurized pipeline. The SVR parameters were further optimized by a genetic algorithm (GA) in order to improve accuracy. The resulting leakage detection system had a mean squared error as low as 0.076 when no noise was present. The effect of noise (approximated by Gaussian white noise) was studied in a simulation, showing an effective 5% error for a 55 km simulated pipeline. Results also showed that the use of more sensors corresponded to heightened robustness towards different noise levels.
机译:管道用于在长距离携带流体。鉴于一些这些液体的昂贵和危险性,及时准确地检查损害赔偿,以防止有害的财务和环境后果。在先前的研究中,开发并举报了一种光纤基箍应变传感器,以实现管道腐蚀和泄漏监测的目标。传感器形成一个基础,可以进行高级损坏的检测算法。在本文中,对支持向量回归(SVR)组合的分布式箍菌株感测信息(SVR)的应用用于在长距离加压管道上定位泄漏位置。通过遗传算法(GA)进一步优化了SVR参数,以提高精度。当没有存在噪声时,所产生的泄漏检测系统的平均平均误差低至0.076。在模拟中研究了噪声(高斯白噪声近似)的效果,显示了55公里的模拟管道的有效5%误差。结果还表明,使用更多传感器对应于对不同噪声水平的鲁棒性提高。

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