首页> 外文会议>ASME International Mechanical Engineering Congress and Exposition >LOW COST PARTICLE SWARM ALGORITHM USING SURROGATE MODEL BASED PRE-EVALUATION FOR INVERSE HEAT CONDUCTION ANALYSIS
【24h】

LOW COST PARTICLE SWARM ALGORITHM USING SURROGATE MODEL BASED PRE-EVALUATION FOR INVERSE HEAT CONDUCTION ANALYSIS

机译:低成本粒子群算法使用基于代理模型的逆热传导分析的预评估

获取原文
获取外文期刊封面目录资料

摘要

Using internal temperature measurements from inside a solid to determine the initial or boundary conditions or material properties is a common inverse heat conduction problem. These problems are ill-posed in nature and a robust mathematical solution is not available for them. Stochastical search algorithms like Genetic Algorithm (GA) and Particle Swarm Optimization (PSO) have been found to be very effective in dealing with some of the challenges in solving inverse problems, such as time step size limit and sensitivity to the measurement errors. However, these methods normally require large population size and do not use the gradient information and, therefore, their computational costs are generally higher than their gradient based alternatives. This is especially true when using a computationally expensive high-fidelity method like finite element analysis as the direct solver in the core of the inverse algorithm. The inherent inefficiency of this procedure is even more obvious when we notice that an algorithm like PSO is rank-based, i.e. the actual magnitude of cost function is not important, and only their relative ordering is used. In a typical implementation of PSO, most of the objective function evaluations are discarded, unless when it is improving the local memory of the particle. A computationally cheaper substitute for full analysis methods is using metamodels also known as surrogate models. They construct an approximation to the direct problem using a set of available data and the underlying physics of the problem. In this research, an inexact pre-evaluation of the boundary heat flux components using a simplified physics and data fitting is used to find the more promising solutions, and then an accurate but computationally expensive three-dimensional finite element discretization of the heat conduction problem is applied only to these elite members of the population. The result is an inverse heat conduction analysis method that has the stability and effectiveness of PSO, and at the same time has a much lower computational cost. In this research, we use a sequential implementation of PSO indealing with the transient boundary heat flux, and a future time step regularization method is used to create a more stable algorithm. The focus of the test cases in this research paper will be the inverse heat conduction problem in the controlled cooling of steel strips on a run-out table, but the algorithm is readily applicable to other applications of inverse heat conduction analysis.
机译:使用内部温度测量从固体内部确定初始或边界条件或材料特性是常见的反导热问题。这些问题在自然界中没有提出,并且他们不适用于它们的强大数学解决方案。已经发现随机搜索算法等遗传算法(GA)和粒子群优化(PSO)在处理求解逆问题时非常有效,例如时间步长限制和对测量误差的敏感性。然而,这些方法通常需要大的人口大小并且不使用梯度信息,因此,它们的计算成本通常高于基于梯度的替代方案。当使用计算昂贵的高保真方法时,尤其如此,如有限元分析作为逆算法的核心的直接解器。当我们注意到像PSO等算法基于等级的算法时,该过程的固有效率甚至更为明显,即成本函数的实际幅度并不重要,并且仅使用它们的相对排序。在PSO的典型实现中,除非在改善粒子的局部记忆时,否则大多数客观函数评估都被丢弃。完整分析方法的计算替代品是使用也称称为代理模型的元模型。它们使用一组可用数据和问题的底层物理构造了直接问题的近似。在本研究中,使用简化物理学和数据配件的边界热通量部件的不精确预评估用于找到更有前途的解决方案,然后是准确但计算昂贵的昂贵的三维有限元离散化的导热问题是仅适用于这些人口的这些精英成员。结果是一种逆热传导分析方法,具有PSO的稳定性和有效性,同时具有更低的计算成本。在这项研究中,我们使用瞬态边界热通量的PSO ineLing的连续实现,并且使用未来的时间步长方法来创建更稳定的算法。在本研究论文中的测试用例的重点将是在漏矿台上控制钢带的控制冷却中的反热导通问题,但算法很容易适用于反热传导分析的其他应用。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号