Sajedian Iman, Badloe Trevon, Lee Heon, Rho Junsuk
Department of Materials Science and Engineering, Korea University, Seoul, 02842, Republic of Korea.
Department of Mechanical Engineering, Pohang University of Science and Technology (POSTECH), Pohang, 37673, Republic of Korea.
Nano Converg. 2020 Aug 3;7(1):26. doi: 10.1186/s40580-020-00233-8.
Using reinforcement learning, a deep Q-network was used to design polarization-independent, perfect solar absorbers. The deep Q-network selected the geometrical properties and materials of a symmetric three-layer metamaterial made up of circular rods on top of two films. The combination of all the possible permutations gives around 500 billion possible designs. In around 30,000 steps, the deep Q-network was able to produce 1250 structures that have an integrated absorption of higher than 90% in the visible region, with a maximum of 97.6% and an integrated absorption of less than 10% in the 8-13 µm wavelength region, with a minimum of 1.37%. A statistical analysis of the distribution of materials and geometrical parameters that make up the solar absorbers is presented.
利用强化学习,深度Q网络被用于设计偏振无关的完美太阳能吸收器。深度Q网络选择了由两层薄膜上的圆形棒组成的对称三层超材料的几何特性和材料。所有可能排列的组合给出了大约5000亿种可能的设计。在大约30000步中,深度Q网络能够生成1250种结构,这些结构在可见光区域的积分吸收率高于90%,最高可达97.6%,而在8 - 13微米波长区域的积分吸收率低于10%,最低可达1.37%。本文还对构成太阳能吸收器的材料和几何参数的分布进行了统计分析。