Fault detection in beam structure using adaptive immune based approach

S. Sahu, Shakti Jena
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Abstract

Different structural and machine elements are used over the ages. These are subjected to various loads like static and dynamic load, temperature, corrosion etc. Due to the above-mentioned reasons, ageing of the structural elements occur. So, to enhance the designed lifetime of any structure continuous maintenance is required. One such method has been proposed in this research work and the proposed method can be employed as an online tool for the fault identification. Here dynamic analysis of structure has been conducted as the forward method to find out the modal natural frequencies related with the damage. Recently with the application of machine learning approaches and the soft computing, the damage can be detected easily. In this methodology, Clonal Section Algorithm (CSA) has been applied to find out the faults (crack locations and depth) in the structure initially. Later one such method has been developed in the concepts of adaptive immune based technique (Adaptive Clonal Section Algorithm-ACSA) which is the combination of an artificial immune (Clonal Selection Algorithm) and Regression Analysis (RA). The use of regression analysis makes the proposed method more adaptive and the residual error in the collection of vibration data is reduced. The mechanism and various steps involved in CSA, RA and ACSA are analyzed here in a precise manner. The key endeavor of this study is the development of ACSA and its implementation to condition monitoring of structure. To authenticate and check the accuracy of both the methods (CSA and ACSA), laboratory tests are carried out. The results obtained from each method are corroborated with other and found to be convergent.
使用基于自适应免疫的方法检测梁结构故障
不同的结构和机械元件历久弥新。这些部件承受着各种载荷,如静态和动态载荷、温度、腐蚀等。由于上述原因,结构元件会发生老化。因此,为了延长结构的设计寿命,需要对其进行持续维护。本研究工作提出了一种这样的方法,该方法可用作故障识别的在线工具。在这里,对结构进行动态分析是找出与损坏相关的模态固有频率的前向方法。最近,随着机器学习方法和软计算的应用,损坏可以很容易地被检测出来。在这一方法中,克隆截面算法(CSA)最初被用来找出结构中的故障(裂缝位置和深度)。后来,基于自适应免疫技术(自适应克隆截面算法-ACSA)的概念开发了一种此类方法,它是人工免疫(克隆选择算法)和回归分析(RA)的结合。回归分析的使用使所提出的方法更具适应性,并减少了振动数据收集过程中的残余误差。本文对 CSA、RA 和 ACSA 所涉及的机制和各个步骤进行了精确分析。本研究的主要任务是开发 ACSA 并将其应用于结构状态监测。为了验证和检查两种方法(CSA 和 ACSA)的准确性,我们进行了实验室测试。每种方法得出的结果都与其他方法相互印证,并发现它们是趋同的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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