Pipeline Leakage Detection and Characterisation with Adaptive Surrogate Modelling Using Particle Swarm Optimisation

M. Adegboye, Aditya Karnik, W. Fung, R. Prabhu
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Abstract

Pipelines are often subject to leakage due to ageing, corrosion, and weld defects, and it is difficult to avoid as the sources of leakages are diverse. Several studies have demonstrated the applicability of the machine learning model for the timely prediction of pipeline leakage. However, most of these studies rely on a large training data set for training accurate models. The cost of collecting experimental data for model training is huge, while simulation data is computationally expensive and time-consuming. To tackle this problem, the present study proposes a novel data sampling optimisation method, named adaptive particle swarm optimisation (PSO) assisted surrogate model, which was used to train the machine learning models with a limited dataset and achieved good accuracy. The proposed model incorporates the population density of training data samples and model prediction fitness to determine new data samples for improved model fitting accuracy. The proposed method is applied to 3-D pipeline leakage detection and characterisation. The result shows that the predicted leak sizes and location match the actual leakage. The significance of this study is two-fold: the practical application allows for pipeline leak prediction with limited training samples and provides a general framework for computational efficiency improvement using adaptive surrogate modelling in various real-life applications.
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基于粒子群优化的自适应代理模型管道泄漏检测与表征
管道经常因老化、腐蚀和焊接缺陷而发生泄漏,泄漏来源多种多样,难以避免。一些研究已经证明了机器学习模型在及时预测管道泄漏方面的适用性。然而,这些研究大多依赖于一个大的训练数据集来训练准确的模型。用于模型训练的实验数据的收集成本巨大,而仿真数据的计算成本高且耗时长。为了解决这一问题,本研究提出了一种新的数据采样优化方法——自适应粒子群优化(PSO)辅助代理模型,并将其用于有限数据集的机器学习模型的训练,取得了较好的精度。该模型结合训练数据样本的总体密度和模型预测适应度来确定新的数据样本,以提高模型拟合精度。将该方法应用于三维管道泄漏检测与表征。结果表明,预测的泄漏尺寸和泄漏位置与实际泄漏相吻合。这项研究的意义有两方面:实际应用允许在有限的训练样本下进行管道泄漏预测,并为在各种实际应用中使用自适应代理模型提高计算效率提供了一个总体框架。
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