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Optimization Design of LED Heat Dissipation Structure Based on Strip Fins

机译:基于带翅片的LED散热结构优化设计

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摘要

To solve the heat dissipation problem of LED, a radiator structure based on strip fins is designed and the method to optimize the structure parameters of strip fins is proposed in this paper. The combination of RBF neural networks and particle swarm optimization (PSO) algorithm is used for modeling and optimization respectively. During the experiment, the 150 datasets of LED junction temperature when structure parameters of number of strip fins, length, width and height of the fins have different values are obtained by ANSYS software. Then RBF neural network is applied to build the non-linear regression model and the parameters optimization of structure based on particle swarm optimization algorithm is performed with this model. The experimental results show that the lowest LED junction temperature reaches 43.88 degrees when the number of hidden layer nodes in RBF neural network is 10, the two learning factors in particle swarm optimization algorithm are 0.5, 0.5respectively, the inertia factor is 1 and the maximum number of iterations is 100, and now the number of fins is 64, the distribution structure is 8*8, and the length, width and height of fins are 4.3mm, 4.48mm and 55.3mm respectively. To compare the modeling and optimization results, LED junction temperature at the optimized structure parameters was simulated and the result is 43.592°C which approximately equals to the optimal result. Compared with the ordinary plate-fin-type radiator structure whose temperature is 56.38°C, the structure greatly enhances heat dissipation performance of the structure.
机译:为了解决LED的散热问题,设计了一种基于带翅片的散热器结构,并提出了优化条带翅片的结构参数的方法。 RBF神经网络和粒子群优化(PSO)算法的组合分别用于建模和优化。在实验期间,LED结温的150个数据集在鳍片的数量的结构参数时,鳍片的长度,宽度和高度具有不同的值,通过ANSYS软件获得不同的值。然后应用RBF神经网络构建非线性回归模型,并使用该模型执行基于粒子群优化优化算法的结构的参数优化。实验结果表明,当RBF神经网络中的隐藏层节点的数量为10时,最低LED结温度达到43.88度,粒子群优化算法中的两个学习因素为0.5,0.5,惯性因子为1,最大值迭代次数为100,现在翅片的数量为64,分布结构为8 * 8,翅片的长度,宽度和高度分别为4.3mm,4.48mm和55.3毫米。为了比较建模和优化结果,模拟了优化结构参数的LED结温,结果是43.592°C,其近似等于最佳结果。与温度为56.38°C的普通板翅式散热器结构相比,该结构大大提高了结构的散热性能。

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