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Treatment of efficiency for temperature and concentration profiles reconstruction of soot and metal-oxide nanoparticles in nanofluid fuel flames

机译:纳米流体燃料火焰中烟灰和金属氧化物纳米颗粒的温度和浓度分布重构的效率处理

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摘要

The choice of the step size plays an important role in one dimensional searching (ODS) algorithm in the inverse radiation problem to simultaneously estimate temperature and concentration distributions of soot and metal-oxide nanoparticles in nanofluid fuel flames. In practice, it is difficult to determine the optimal step size and the inappropriate step size can introduce significant reconstruction error and cause high computation time. This paper adopts a nonlinear optimization (NLP) technique without the needing of setting up the step size to improve the reconstruction efficiency. The reconstruction performances of NLP technique were compared with the ODS algorithm with different step sizes. It was found that the NLP technique can reach the same or better reconstruction accuracy and experience much lower computation time in comparison with the ODS algorithm even with the optimal step size. (C) 2018 Elsevier Ltd. All rights reserved.
机译:步长的选择在逆辐射问题中的一维搜索(ODS)算法中起着重要作用,以同时估算纳米流体燃料火焰中烟灰和金属氧化物纳米颗粒的温度和浓度分布。在实践中,难以确定最佳步长,并且不合适的步长会引入明显的重构误差并导致高计算时间。本文采用非线性优化(NLP)技术,无需设置步长来提高重建效率。将NLP技术的重建性能与具有不同步长的ODS算法进行了比较。已经发现,即使具有最佳步长,与ODS算法相比,NLP技术也可以达到相同或更好的重构精度,并且计算时间要短得多。 (C)2018 Elsevier Ltd.保留所有权利。

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