钙钛矿(结构)
辐射传输
异质结
钙钛矿太阳能电池
无辐射复合
材料科学
自发辐射
化学
光电子学
能量转换效率
化学物理
物理
光学
半导体
结晶学
激光器
半导体材料
作者
Martin Stolterfoht,Pietro Caprioglio,Christian Wolff,J.A. Marquez,Joleik Nordmann,Shanshan Zhang,Daniel Rothhardt,Ulrich Hörmann,Alex Redinger,Lukas Kegelmann,Steve Albrecht,Thomas Kirchartz,Michael Saliba,Thomas Unold,Dieter Neher
出处
期刊:University of Luxembourg - Open Repository and Bibliography
日期:2018-10-02
被引量:246
摘要
Charge transport layers (CTLs) are key components of diffusion controlled perovskite solar cells, however, they can induce additional non-radiative recombination pathways which limit the open circuit voltage (V_OC) of the cell. In order to realize the full thermodynamic potential of the perovskite absorber, both the electron and hole transport layer (ETL/HTL) need to be as selective as possible. By measuring the quasi-Fermi level splitting (QFLS) of perovskite/CTL heterojunctions, we quantify the non-radiative interfacial recombination current for a wide range of commonly used CTLs, including various hole-transporting polymers, spiro-OMeTAD, metal oxides and fullerenes. We find that all studied CTLs limit the V_OC by inducing an additional non-radiative recombination current that is significantly larger than the loss in the neat perovskite and that the least-selective interface sets the upper limit for the V_OC of the device. The results also show that the V_OC equals the internal QFLS in the absorber layer of (pin, nip) cells with selective CTLs and power conversion efficiencies of up to 21.4%. However, in case of less selective CTLs, the V_OC is substantially lower than the QFLS which indicates additional losses at the contacts and/or interfaces. The findings are corroborated by rigorous device simulations which outline several important considerations to maximize the V_OC. This work shows that the real challenge to supress non-radiative recombination losses in perovskite cells on their way to the radiative limit lies in the suppression of carrier recombination at the perovskite/CTL interfaces.
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