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A two-stage optimization method for unmanned aerial vehicle inspection of an oil and gas pipeline network

机译:油气管网无人机巡检的两阶段优化方法

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Oil and gas pipeline networks are a key link in the coordinated development of oil and gas both upstream and downstream. To improve the reliability and safety of the oil and gas pipeline network, inspections are implemented to minimize the risk of leakage, spill and theft, as well as documenting actual incidents. In recent years, unmanned aerial vehicles have been recognized as a promising option for inspection due to their high efficiency. However, the integrated optimization of unmanned aerial vehicle inspection for oil and gas pipeline networks, including physical feasibility, the performance of mission, cooperation, real-time implementation and three-dimensional (3-D) space, is a strategic problem due to its large-scale, complexity as well as the need for efficiency. In this work, a novel mixed-integer nonlinear programming model is proposed that takes into account the constraints of the mission scenario and the safety performance of unmanned aerial vehicles. To minimize the total length of the inspection path, the model is solved by a two-stage solution method. Finally, a virtual pipeline network and a practical pipeline network are set as two examples to demonstrate the performance of the optimization schemes. Moreover, compared with the traditional genetic algorithm and simulated annealing algorithm, the self-adaptive genetic simulated annealing algorithm proposed in this paper provides strong stability.
机译:石油和天然气管道网络是上游和下游油气协调发展的关键环节。为了提高石油和天然气管道网络的可靠性和安全性,将进行检查以最大程度地减少泄漏,溢漏和盗窃的风险,并记录实际事件。近年来,无人飞行器由于其高效率而被认为是一种有前途的检查选择。然而,由于油气管道网络的综合优化,包括物理可行性,任务执行,合作,实时实施和三维(3-D)空间,因此对油气管道网络的优化是一个战略问题。大规模,复杂以及对效率的需求。在这项工作中,提出了一种新颖的混合整数非线性规划模型,该模型考虑了任务情景的约束和无人机的安全性能。为了最大程度地缩短检查路径的总长度,可通过两步求解法对模型进行求解。最后,以虚拟管道网络和实际管道网络为例,说明了优化方案的性能。此外,与传统的遗传算法和模拟退火算法相比,本文提出的自适应遗传模拟退火算法具有较强的稳定性。

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