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Application of BCC Algorithm and RBFNN in Identification of Defect Parameters

机译:BCC算法和RBFNN在缺陷参数识别中的应用

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The identification of defect parameters in thermal non-destructive test and evaluation (NDT/E) was considered as a kind of inverse heat transfer problem (IHTP). However, it can be farther considered as a shape optimization problem then a structure design optimization problem, and the design results should meet the surface temperature profile of the apparatus with defects. A bacterial colony chemotaxis (BCC) optimization algorithm and a radial basis function neural network (RBFNN) are applied to the thermal NDT/E for the identification of defects parameters. The RBFNN is a precise and convenient surrogate model for the time costly finite element computation, which obtains the surface temperature with different defect parameters. The BCC optimization algorithm is derivatively-free, and the convergence speed is fast. This method is applied to a simple verification case and the result is acceptable. The algorithm is also compared with the particle swarm optimization (PSO) algorithm, and the BCC algorithm can access the optimum with faster speed.
机译:热非破坏性测试和评估中的缺陷参数(NDT / E)的识别被认为是一种反热传递问题(IHTP)。然而,它可以较差被认为是形状优化问题,然后是结构设计优化问题,并且设计结果应满足具有缺陷的装置的表面温度曲线。用于识别缺陷参数的热NDT / E施加细菌菌落化学趋化性(BCC)优化算法和径向基函数神经网络(RBFNN)。 RBFNN是一种精确且方便的代理模型,用于时间昂贵的有限元计算,从而获得具有不同缺陷参数的表面温度。 BCC优化算法是无衍生的,收敛速度快。该方法应用于简单的验证情况,结果是可接受的。该算法也与粒子群优化(PSO)算法进行比较,并且BCC算法可以以更快的速度访问最佳速度。

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