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首页> 外文期刊>Advanced Functional Materials >Exploration of Electrochemical Reactions at Organic-Inorganic Halide Perovskite Interfaces via Machine Learning in In Situ Time-of-Flight Secondary Ion Mass Spectrometry
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Exploration of Electrochemical Reactions at Organic-Inorganic Halide Perovskite Interfaces via Machine Learning in In Situ Time-of-Flight Secondary Ion Mass Spectrometry

机译:用机器学习在原位飞行时间二次离子质谱法中通过机器学习探索有机 - 无机卤化物钙钛矿接口的探讨

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摘要

The instability of hybrid organic-inorganic perovskite (HOIP) devices is one of the significant challenges preventing commercialization. Exploring these phenomena is severely limited by the complexity of the intrinsic electrochemistry of HOIPs, the presence of multiple volatile and mobile ionic species, and the possible role of environmentally induced reactions at surfaces and triple-phase junctions. Here, in situ studies of the electrochemistry of methylammonium lead bromide perovskite with the Au electrode interface are reported via light- and voltage-dependent time-of-flight secondary ion mass spectrometry (ToF-SIMS) imaging of lateral perovskite heterostructures. While ToF-SIMS allows for the visualization of the chemical composition along the surface and its evolution with light and electrical bias, the interpretation of the multidimensional data obtained is often limited due to strong correlations between chemical signatures and the need to track multiple peaks at once. Here, a machine learning workflow combining the Hough transform and non-negative matrix factorization and non-negative tensor decomposition is developed to avoid this limitation and extract salient features of associated chemical changes and to separate the light- and voltage-dependent dynamics. Combining these in situ characterizations and the machine learning workflow provides comprehensive information on the chemical nature of moving species, ion accumulation, and interfacial electrochemical reactions in HOIP devices.
机译:杂种有机无机钙钛矿(Hoop)器件的不稳定性是防止商业化的重大挑战之一。探索这些现象严重限制了寰皮内部电化学的复杂性,多种挥发性和移动离子物质的存在,以及环境诱导在表面和三相交叉处的可能作用。这里,通过横向钙钛酸盐异质结构的光和电压依赖性时间二次离子质谱(TOF-SIMS)成像,以与Au电极接口的甲基铅溴化物钙钛矿电化学的原位研究。虽然TOF-SIMS允许沿着表面的化学成分的可视化及其具有光和电偏压的演化,但由于化学签名与一次需要跟踪多个峰之间的需要,所获得的多维数据的解释通常是有限的。 。这里,开发了一种机器学习工作流,结合了霍夫变换和非负矩阵分解和非负张量分解,以避免这种限制和提取相关化学变化的突出特征,并分离光线和电压依赖性动态。将这些原位特色和机器学习工作流组合在一起提供了有关Hoip装置中的移动物种,离子积聚和界面电化学反应的化学性质的综合信息。

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