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首页> 外文期刊>International communications in heat and mass transfer >Improved social spider optimization algorithms for solving inverse radiation and coupled radiation-conduction heat transfer problems
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Improved social spider optimization algorithms for solving inverse radiation and coupled radiation-conduction heat transfer problems

机译:改进的社会蜘蛛优化算法,用于解决逆辐射和耦合的辐射传导热传递问题

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摘要

A novel bio-inspired swarm algorithm, social spider optimization (SSO), is introduced to solve the inverse transient radiation and coupled radiation-conduction problems for the first time. Based on the original model, five improved SSO (ISSO) algorithms are developed to enhance search ability and convergence velocity. The sensitivity analysis of measured signals with respect to the physical parameters of the medium are described. After which, the SSO and ISSO algorithms are applied to solve the inverse estimation problems in a one-dimensional participating medium. Two cases concerns radiative transfer problems are investigated, in which the radiative source term, extinction coefficient, scattering albedo, and scattering symmetry factor are reconstructed. Furthermore, the coupled radiation-conduction heat transfer model is considered and the main parameters such as the conduction-radiation parameter, boundary emissivity, and scattering albedo are retrieved. All retrieval results show that SSO-based algorithms are robust and effective in solving inverse estimation problems even with measurement errors. Findings also show that the proposed ISSO algorithms are superior to the original SSO model in terms of computational accuracy and convergence velocity.
机译:引入了一种新颖的生物启发式群体算法,社会蜘蛛优化(SSO),以首次解决逆向瞬态辐射和耦合辐射传导问题。在原始模型的基础上,开发了五种改进的SSO(ISSO)算法以增强搜索能力和收敛速度。描述了相对于介质的物理参数的测量信号的灵敏度分析。此后,将SSO和ISSO算法用于解决一维参与介质中的逆估计问题。研究了两个涉及辐射传递问题的案例,其中重建了辐射源项,消光系数,散射反照率和散射对称因子。此外,考虑了耦合的辐射-传导热传递模型,并检索了主要参数,例如传导-辐射参数,边界发射率和散射反照率。所有检索结果均表明,即使存在测量误差,基于SSO的算法在解决逆估计问题方面也非常有效。研究结果还表明,提出的ISSO算法在计算精度和收敛速度方面均优于原始SSO模型。

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