利用预测分析技术评估能源管道退化状况--挑战、问题和未来方向

IF 4.8 Q2 ENERGY & FUELS
Muhammad Hussain , Tieling Zhang , Richard Dwight , Ishrat Jamil
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引用次数: 0

摘要

对于管道所有者和运营商来说,确保能源管道的安全运行至关重要。因此,必须对管道进行有效的状态评估。为此,利用各种技术开发了大量模型。如何选择建模方法和相关技术,以便在监测数据和经验有限的条件下充分发挥模型的功效,仍然是管道运营商非常关心的问题。本文对已开发的能源管道退化状况评估方法和技术进行了全面综述。综述背后的主要动机是状况评估在能源管道完整性管理中的关键作用,以及用于评估管道退化的模型和技术(包括统计建模、随机过程、机器学习和深度学习)的激增。这项工作旨在确定和评估在利用这些状态建模方法方面存在的挑战和差距。通过系统分析研究和实践的现状,本综述不仅突出了各种建模方法的优势和局限性,还深入分析了未来加强管道完整性管理领域的研究和管理实践的机遇。我们的分析为管道完整性管理领域的研究人员、从业人员和政策制定者提供了有价值的见解,有助于更好地理解状态评估的复杂性和错综复杂性,最终有助于制定更稳健、更有效的战略来保护能源管道的完整性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Energy pipeline degradation condition assessment using predictive analytics – challenges, issues, and future directions

It is of paramount importance to ensure the safe operation of energy pipelines for pipeline owners and operators. Therefore, effective condition assessment of pipelines is imperative. For this purpose, there are a great number of models developed using various techniques. How to select a modeling approach and associated techniques to get the most of the effectiveness of the model under a condition with limited monitoring data and experience remains a big concern to pipeline operators.

This paper provides a comprehensive review of the developed approaches and techniques for energy pipeline degradation condition assessment. The primary motivation behind this review is the pivotal role of condition assessment in energy pipeline integrity management and the proliferation of models and techniques, including statistical modeling, stochastic processes, machine learning, and deep learning, used for assessing pipeline degradation. This work aims to identify and assess the challenges and gaps inherent in the utilization of these condition modeling approaches. By systematically analyzing the current state of research and practice, this review not only highlights the strengths and limitations of various modeling approaches but also offers insights into future opportunities for enhancing the research and management practice in the field of pipeline integrity management.

Our analysis offers valuable insights for researchers, practitioners, and policymakers in the domain of pipeline integrity management. It facilitates a better understanding of the complexities and intricacies of condition assessment, ultimately contributing to the development of more robust and effective strategies for safeguarding the integrity of energy pipelines.

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