论文标题
使用人工智能对功能化表面的发射率预测
Emissivity Prediction of Functionalized Surfaces Using Artificial Intelligence
论文作者
论文摘要
任何物体的辐射响应都由称为发射率的表面参数控制。在许多涉及热辐射(例如热伏尔耐热),热管理系统和被动辐射冷却的应用中,调整表面的发射率引起了极大的兴趣。尽管已经采用了几种表面工程技术(例如,表面功能化)以改变发射率,但在修改/制造过程之前,精确预测表面的发射率时存在知识差距。由于表面的促成因素,复杂的相互作用和相互依赖性以及测量发射率需要为每个样本提供繁琐的程序,因此通过基于物理的建模方法来预测发射率很具有挑战性。因此,急需一种新的方法可以系统地预测发射率并扩大热辐射的应用。在这项工作中,我们证明了采用人工智能(AI)技术来预测复杂表面的发射率的巨大优势。为此,我们使用飞秒激光表面处理(FLSP)制造了116个具有各种表面特征的散装铝6061个样品。通过收集表面特征数据,激光工作参数以及所有样品的发射率来建立全面的数据集。我们在两种不同的情况下证明了AI的应用。首先,仅根据其3D表面形态图像正确估计未知样品的发射率范围。其次,根据其表面特征数据和制造参数,精确预测了样品的发射率。 AI技术的实施通过与测量值显示出极好的一致性,从而实现了高度准确的发射率预测。
The radiative response of any object is governed by a surface parameter known as emissivity. Tuning the emissivity of surfaces has been of great interest in many applications involving thermal radiation such as thermophotovoltaics, thermal management systems, and passive radiative cooling. Although several surface engineering techniques (e.g., surface functionalization) have been pursued to alter the emissivity, there exists a knowledge gap in precisely predicting the emissivity of a surface prior to the modification/fabrication process. Predicting emissivity by a physics-based modeling approach is challenging due to surface's contributing factors, complex interactions and interdependence, and measuring the emissivity requires a tedious procedure for every sample. Thus, a new approach is much-needed to systematically predict the emissivity and expand the applications of thermal radiation. In this work, we demonstrate the immense advantage of employing artificial intelligence (AI) techniques to predict the emissivity of complex surfaces. For this aim, we fabricated 116 bulk aluminum 6061 samples with various surface characteristics using femtosecond laser surface processing (FLSP). A comprehensive dataset was established by collecting surface characteristic data, laser operating parameters, and measured emissivities for all samples. We demonstrated the application of AI in two distinct scenarios. First, the range of emissivity of an unknown sample was shown to be estimated correctly solely based on its 3D surface morphology image. Second, the emissivity of a sample was precisely predicted based on its surface characteristics data and fabrication parameters. The implementation of the AI techniques resulted in the highly accurate prediction of emissivity by showing excellent agreement with the measurements.