Sajedian Iman, Badloe Trevon, Rho Junsuk
Opt Express. 2019 Feb 18;27(4):5874-5883. doi: 10.1364/OE.27.005874.
Recently, a novel machine learning model has emerged in the field of reinforcement learning known as deep Q-learning. This model is capable of finding the best possible solution in systems consisting of millions of choices, without ever experiencing it before, and has been used to beat the best human minds at complex games such as, Go and chess, which both have a huge number of possible decisions and outcomes for each move. With a human-level intelligence, it has solved the problems that no other machine learning model has done before. Here, we show the steps needed for implementing this model to an optical problem. We investigate the colour generation by dielectric nanostructures and show that this model can find geometrical properties that can generate much purer red, green and blue colours compared to previously reported results. The model found these results in 9000 steps from a possible 34.5 million solutions. This technique can easily be extended to predict and optimise the design parameters for other optical structures.
最近,强化学习领域出现了一种名为深度Q学习的新型机器学习模型。该模型能够在由数百万种选择组成的系统中找到最佳解决方案,且无需事先经历过这些选择,它还被用于在诸如围棋和国际象棋等复杂游戏中击败最优秀的人类棋手,这两种游戏的每一步都有大量可能的决策和结果。凭借人类水平的智能,它解决了此前其他机器学习模型无法解决的问题。在此,我们展示了将该模型应用于光学问题所需的步骤。我们研究了介电纳米结构的颜色生成,并表明该模型能够找到与先前报道结果相比可产生更纯净红、绿、蓝颜色的几何特性。该模型从可能的3450万个解决方案中,在9000步内找到了这些结果。这项技术可以轻松扩展,以预测和优化其他光学结构的设计参数。