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A comparative study on crack identification of structures from the changes in natural frequencies using GA and PSO

机译:利用GA和PSO从自然频率变化识别结构裂缝的比较研究

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Purpose - The early detection of cracks, corrosion and structural failure in aging structures is one of the major challenges in the civil, mechanical and aircraft industries. Common inspection techniques are time consuming and hence can have strong economic implications due to downtime. The paper aims to discuss these issues. Design/methodology/approach - As a result, during the past decade a number of methodologies have been proposed for detecting crack in structure based on variations in the structure's dynamic characteristics. This work showcases the efficacy of particle swarm optimization (PSO) and genetic algorithm (GA) in damage assessment of structures. Findings - Efficiency of these tools has been tested on structures like beam, plane and space truss. The results show the effectiveness of PSO in crack identification and the possibility of implementing it in a real-time structural health monitoring system for aircraft and civil structures. Originality/value - The methodology presented establishes the PSO as robust and competent tool over GA for crack identification using changes in natural frequencies.
机译:目的-尽早发现老化结构中的裂纹,腐蚀和结构故障是民用,机械和飞机行业的主要挑战之一。常见的检查技术非常耗时,因此会因停机而对经济产生重大影响。本文旨在讨论这些问题。设计/方法/方法-结果,在过去的十年中,已经提出了许多基于结构动态特性变化来检测结构裂缝的方法。这项工作展示了粒子群优化(PSO)和遗传算法(GA)在结构损伤评估中的功效。发现-这些工具的效率已经在梁,平面和空间桁架等结构上进行了测试。结果表明,PSO在裂缝识别中的有效性以及在飞机和民用结构的实时结构健康监测系统中实施PSO的可能性。原创性/价值-提出的方法将PSO确立为GA上强大而有效的工具,可利用自然频率的变化来识别裂纹。

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