论文标题
用于加速高性能低成本太阳能电池的机器学习:系统评价
Machine learning for accelerating the discovery of high performance low-cost solar cells: a systematic review
论文作者
论文摘要
太阳能光伏(PV)技术已合并为一种有效且多功能的方法,用于将太阳的巨大能量转化为电力。需要开发新材料和太阳能电池架构的创新,以确保长时间的轻巧,便携式和灵活的微型电子设备可长期运行,并且电池需求减少。生物医学植入和可穿戴设备的最新进展与对有效的能源收获解决方案的兴趣日益增强。这样的设备主要依靠可充电电池来满足其能源需求。此外,人工智能(AI)和机器学习(ML)技术被吹捧为能量收集中的游戏改变者,尤其是在太阳能材料中。在本文中,我们系统地回顾了一系列ML技术,以优化低成本太阳能电池在微型电子设备中的性能。我们的系统评价表明,这些ML技术可以加快发现新的太阳能电池材料和体系结构。特别是,本综述涵盖了针对生产低成本太阳能电池的广泛的ML技术。此外,我们提出了一种根据数据综合,ML算法,优化和制造过程对文献进行分类的新方法。此外,我们的审查表明,具有贝叶斯优化(BO)的高斯工艺回归(GPR)ML技术可以设计最有希望的低 - 极性细胞结构。因此,我们的综述是对现有ML技术的批判性评估,并介绍了用于指导研究人员使用ML技术发现下一代低成本太阳能电池。
Solar photovoltaic (PV) technology has merged as an efficient and versatile method for converting the Sun's vast energy into electricity. Innovation in developing new materials and solar cell architectures is required to ensure lightweight, portable, and flexible miniaturized electronic devices operate for long periods with reduced battery demand. Recent advances in biomedical implantable and wearable devices have coincided with a growing interest in efficient energy-harvesting solutions. Such devices primarily rely on rechargeable batteries to satisfy their energy needs. Moreover, Artificial Intelligence (AI) and Machine Learning (ML) techniques are touted as game changers in energy harvesting, especially in solar energy materials. In this article, we systematically review a range of ML techniques for optimizing the performance of low-cost solar cells for miniaturized electronic devices. Our systematic review reveals that these ML techniques can expedite the discovery of new solar cell materials and architectures. In particular, this review covers a broad range of ML techniques targeted at producing low-cost solar cells. Moreover, we present a new method of classifying the literature according to data synthesis, ML algorithms, optimization, and fabrication process. In addition, our review reveals that the Gaussian Process Regression (GPR) ML technique with Bayesian Optimization (BO) enables the design of the most promising low-solar cell architecture. Therefore, our review is a critical evaluation of existing ML techniques and is presented to guide researchers in discovering the next generation of low-cost solar cells using ML techniques.