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Optimization of concrete hollow brick using hybrid genetic algorithm combining with artificial neural networks

机译:混合遗传算法与人工神经网络相结合的混凝土空心砖优化

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A structure optimization of concrete hollow brick with four rectangle enclosures is carried out to minimize the equivalent thermal conductivity (ETC) in the constraint of variable shape and position parameters. During the optimization hybrid genetic algorithm (HGA) is developed combining with artificial neural networks (ANN). The modified Latin hypercube sampling (i.e. the maximum minimum distance criterion) is employed to make a robust decision. The ETC of the samples is computed using the finite volume method (FVM) on the basis of 3D multi-mode heat transfer simulation. It indicates that the well-trained ANN can accurately predict the ETC of the concrete hollow brick which matches very well with data obtained from the FVM simulation. The optimization obtains 21.69% improvement on the ETC for the given range of design parameters. The optimized concrete hollow brick owns the largest void volume fraction, the minimum rid and wall thickness, same width of the enclosure, and the optimum staggered arrangement with two same large enclosures and two same small enclosures, which is resulted by the multi-mode heat transfer characteristic of the concrete hollow brick. A novel method of the optimum concrete hollow is proposed to construct new concrete hollow brick with many rows of enclosures. Relative Staggered Ratio (RSR) is used to discuss the effect of the staggered form. By combining two or more rows of the optimized enclosures to one brick with the same size the efficiency to block heat transfer is evidently improved. It is concluded by the present work that the combination of ANN and HCA and the popularizing method are powerful to the optimization of the concrete hollow brick.
机译:对具有四个矩形外壳的混凝土空心砖进行了结构优化,以在可变的形状和位置参数的约束下将等效热导率(ETC)最小化。在优化过程中,混合遗传算法(HGA)与人工神经网络(ANN)一起开发。修改后的拉丁超立方体采样(即最大最小距离标准)用于做出可靠的决策。在3D多模式传热模拟的基础上,使用有限体积法(FVM)计算样品的ETC。这表明训练有素的人工神经网络可以准确地预测混凝土空心砖的ETC,这与从FVM仿真获得的数据非常吻合。在给定的设计参数范围内,优化可以使ETC改善21.69%。经过优化的混凝土空心砖具有最大的空隙率,最小的壁厚和壁厚,相同的围护结构宽度以及两个相同的大围护结构和两个相同的小围护结构的错开布置,这是多模态热导致的。混凝土空心砖的传递特性。提出了一种新型的优化混凝土空心度的方法,以建造具有多排围墙的新型混凝土空心度墙。相对交错比率(RSR)用于讨论交错形式的效果。通过将两排或更多排优化后的外壳组合成一块具有相同大小的砖,可以显着提高阻止热传递的效率。通过本工作可以得出结论,人工神经网络和HCA的结合以及推广方法对混凝土空心砖的优化是有力的。

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