Self-driving AMADAP laboratory: Accelerating the discovery and optimization of emerging perovskite photovoltaics

被引:0
|
作者
Zhang, Jiyun [1 ,2 ]
Wu, Jianchang [1 ,2 ]
Stroyuk, Oleksandr [1 ]
Raievska, Oleksandra [1 ]
Lueer, Larry [2 ]
Hauch, Jens A. [1 ]
Brabec, Christoph J. [1 ,2 ]
机构
[1] Forschungszentrum Julich, Helmholtz Inst Erlangen Nurnberg, High Throughput Methods Photovolta, Erlangen, Germany
[2] Friedrich Alexander Univ Erlangen Nurnberg, Inst Mat Elect & Energy Technol, Fac Engn, Dept Mat Sci, Erlangen, Germany
关键词
Autonomous research; Chemical synthesis; Machine learning; Perovskites; Photovoltaic; Semiconducting; LEAD-FREE; EFFICIENT; PERFORMANCE; HISTORY; CHEMISTRY;
D O I
暂无
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
The development of new solar materials for emerging perovskite photovoltaics poses intricate multi-objective optimization challenges in a large high-dimensional composition and parameter space, with in some cases, millions of potential candidates to be explored. Solving it necessitates reproducible, user-independent laboratory work and intelligent preselection of innovative experimental methods. Materials Acceleration Platforms (MAPs) seamlessly combine robotic materials synthesis, characterization, and AI-driven data analysis, enabling the exploration of new materials. They revolutionize material development by replacing trial-and-error methods with precise, rapid experimentation and generating high-quality data for training machine learning (ML) algorithms. Device Acceleration Platforms (DAPs) focus on optimizing functional energy films and multilayer stacks. Unlike MAPs, DAPs concentrate on refining processing conditions for predetermined materials, crucial for disordered semiconductors. By fine-tuning processing parameters, DAPs significantly advance disordered semiconductor devices such as emerging photovoltaics. This article examines recent advancements in automated laboratories for perovskite material discovery and photovoltaics device optimization, showcasing in-house-developed MAPs and a DAP. These platforms cover the entire value chain, from materials to devices, addressing optimization challenges through robot-based high-throughput experimentation (HTE). Ultimately, a self-driven Autonomous Material and Device Acceleration Platforms (AMADAP) laboratory concept is proposed for autonomous functional solar material discovery using AI-guided combinational approaches.
引用
收藏
页数:11
相关论文
共 50 条
  • [41] Hit the Gym: Accelerating Query Execution to Efficiently Bootstrap Behavior Models for Self-Driving Database Management Systems
    Lim, Wan Shen
    Ma, Lin
    Zhang, William
    Butrovich, Matthew
    Arch, Samuel
    Pavlo, Andrew
    PROCEEDINGS OF THE VLDB ENDOWMENT, 2024, 17 (11): : 3680 - 3693
  • [42] Low Cost Platform for Teaching AI Self-Driving Cars Topics for Undergraduate Students in Emerging Countries
    Arce, Diego
    Balbuena, Jose
    Quiroz, Diego
    Oscanoa, Hector
    Cuellar, Francisco
    2021 IEEE FRONTIERS IN EDUCATION CONFERENCE (FIE 2021), 2021,
  • [43] Curriculum Proximal Policy Optimization with Stage-Decaying Clipping for Self-Driving at Unsignalized Intersections
    Peng, Zengqi
    Zhou, Xiao
    Wang, Yubin
    Zheng, Lei
    Liu, Ming
    Ma, Jun
    2023 IEEE 26TH INTERNATIONAL CONFERENCE ON INTELLIGENT TRANSPORTATION SYSTEMS, ITSC, 2023, : 5027 - 5033
  • [44] Multifunctional Regioisomeric Passivation Strategy for Fabricating Self-Driving, High Detectivity All-Inorganic Perovskite Photodetectors
    Wang, Yong
    Ye, Shuming
    Sun, Ziwei
    Zhu, Jiajun
    Liu, Ye
    Wang, Rongfei
    Lin, Feng
    Zhang, Wenhua
    Yang, Yu
    Wang, Chong
    ACS APPLIED MATERIALS & INTERFACES, 2023, 15 (50) : 59005 - 59015
  • [45] Path-Following Control for Connected Self-driving Rollers with Preview Distance Online Optimization
    Xie, Hui
    Gao, Yi
    Song, Kang
    PROCEEDINGS OF THE 39TH CHINESE CONTROL CONFERENCE, 2020, : 5559 - 5565
  • [46] Autonomous nanomanufacturing of lead-free metal halide perovskite nanocrystals using a self-driving fluidic lab
    Sadeghi, Sina
    Bateni, Fazel
    Kim, Taekhoon
    Son, Dae Yong
    Bennett, Jeffrey A.
    Orouji, Negin
    Punati, Venkat S.
    Stark, Christine
    Cerra, Teagan D.
    Awad, Rami
    Delgado-Licona, Fernando
    Xu, Jinge
    Mukhin, Nikolai
    Dickerson, Hannah
    Reyes, Kristofer G.
    Abolhasani, Milad
    NANOSCALE, 2024, 16 (02) : 580 - 591
  • [47] Computationally Efficient Fail-safe Trajectory Planning for Self-driving Vehicles Using Convex Optimization
    Pek, Christian
    Althoff, Matthias
    2018 21ST INTERNATIONAL CONFERENCE ON INTELLIGENT TRANSPORTATION SYSTEMS (ITSC), 2018, : 1447 - 1454
  • [48] Self-Driving Lab for Solid-Phase Extraction Process Optimization and Application to Nucleic Acid Purification
    Putz, Sebastian
    Doettling, Jonathan
    Ballweg, Tim
    Tschoepe, Andre
    Biniyaminov, Vitaly
    Franzreb, Matthias
    ADVANCED INTELLIGENT SYSTEMS, 2025, 7 (01)
  • [49] Deep reinforcement learning and robust SLAM based robotic control algorithm for self-driving path optimization
    Khan, Samiullah
    Niaz, Ashfaq
    Yinke, Dou
    Shoukat, Muhammad Usman
    Nawaz, Saqib Ali
    FRONTIERS IN NEUROROBOTICS, 2025, 18
  • [50] Evolution and characteristics of Crossover Innovation Network of Emerging Technologies: a study based on patent data of the self-driving car technology
    Jin, Yanxi
    Cao, Xing
    Ma, Hui
    TRANSINFORMACAO, 2024, 36