Analyzing the Impact of Population Size in AI-Based Reconstruction of the Thermal Parameter in Heat Conduction Modeling

Elżbieta Gawrońska, M. Zych, R. Dyja, Michal Kowalkowski
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Abstract

The research shows a novel approach leveraging swarm algorithms, the artificial bee colony (ABC) and ant colony optimization (ACO), to rebuild the heat transfer coefficient, especially for the continuous border condition. The authors utilized their application software to do numerical computations, employing classical variants of swarm algorithms. The numerical calculations employed a functional determining error to assess the accuracy of the esti - mated result. The coefficient of the thermally conductive layer was recalibrated utilizing swarm methods within the range of 900–1500 W/m 2 K and subsequently compared to a predetermined reference value. A finite element mesh consisting of 576 nodes was used for the calculations. The study involved simulations with populations of 5, 10, 15, and 20 individuals. Furthermore, each scenario also considered noise of 0%, 2%, and 5% of the reference values. The results make it evident that the reconstructed values of the kappa coefficient, cooling curves, and temperatures for the ABC and ACO algorithms are physically correct. The consequences indicate a notable level of satisfaction and strong concurrence with the anticipated κ parameter values. The results from the numerical simulations demon - strate considerable promise for applying artificial intelligence algorithms to optimize production processes, analyze data, and facilitate data-driven decision-making. This contribution not only underscores the effectiveness of swarm intelligence in engineering applications but also opens new avenues for research in thermal process optimization.
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分析基于人工智能的热传导模型热参数重构中种群数量的影响
该研究展示了一种利用蜂群算法、人工蜂群(ABC)和蚁群优化(ACO)重建传热系数的新方法,特别是在连续边界条件下。作者利用其应用软件,采用经典的蜂群算法变体进行数值计算。数值计算采用了函数决定误差来评估估计结果的准确性。在 900-1500 W/m 2 K 的范围内,利用蜂群方法对导热层的系数进行了重新校准,然后与预定的参考值进行比较。计算中使用了由 576 个节点组成的有限元网格。研究涉及 5、10、15 和 20 个个体的模拟。此外,每个方案还考虑了参考值 0%、2% 和 5%的噪声。结果表明,ABC 和 ACO 算法的卡帕系数、冷却曲线和温度的重建值在物理上是正确的。结果表明,ABC 算法和 ACO 算法的卡帕系数、冷却曲线和温度的重建值在物理上是正确的。数值模拟的结果表明,应用人工智能算法来优化生产流程、分析数据和促进数据驱动决策是大有可为的。这一贡献不仅强调了蜂群智能在工程应用中的有效性,还为热工过程优化研究开辟了新的途径。
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