Aller au contenu principal

Nature

  • Pérovskite

Autonomous closed-loop framework for reproducible perovskite solar cells

Auteurs Danpeng Gao (高丹鹏), Shuaihua Lu (陆帅华), Chunlei Zhang (张春雷), Ning Wang (王宁), Zexin Yu (余泽鑫), Xianglang Sun (孙祥浪), Rebecca Martin, Francesco Vanin, Liangchen Qian (钱良辰), Nicholas Long, Larry Lüer, Bo Li (李博), Martin Stolterfoht, Junhui Hou (侯军辉), Jun Yin (殷骏), Yen-Hung Lin (林彥宏), Haipeng Lu (吕海鹏), Nan Li (李楠), Nicola Gasparini, Christoph Joseph Brabec, Samuel D. Stranks, Xiao Cheng Zeng (曾晓成) & Zonglong Zhu (朱宗龙)

Résumé

The commercialization of perovskite solar cells is bottlenecked by inefficient, trial-and-error approaches reliant on human expertise in both material discovery and device fabrication (1-3). Here, we introduce an autonomous closed-loop framework that integrates machine learning (ML)-driven material discovery with an automated manufacturing platform. The system employs active learning and quantum modeling to rapidly identify high-performance molecules, while the platform uses Bayesian optimization and symbolic regression in a feedback loop to continuously refine the fabrication process. This integrated approach enabled the discovery of a passivation molecule, 5-(aminomethyl)nicotinonitrile hydroiodide (5ANI), which yielded 0.05 cm² solar cells with a power conversion efficiency (PCE) of 27.22% (certified maximum power point tracking (MPPT) efficiency of 27.18%) and 21.4 cm² mini-modules with a PCE of 23.49%. Moreover, the devices exhibited long-term operational stability, retaining 98.7% of their initial efficiency after 1,200 hours of continuous operation under the ISOS-L-1I protocol. Crucially, the automated platform achieved an efficiency reproducibility nearly 5 times that of manual fabrication. This work establishes an automated closed-loop system that synergizes ML-powered discovery with the high-fidelity data from automated manufacturing, setting a benchmark for autonomous discovery and manufacturing in photovoltaics and materials.

Produits associés