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  5. Characterization of perovskite solar cells: Towards a reliable measurement protocol

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Article
en
2016

Characterization of perovskite solar cells: Towards a reliable measurement protocol

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en
2016
Vol 4 (9)
Vol. 4
DOI: 10.1063/1.4960759

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Mukundan Mukundan Thelakkat
Mukundan Mukundan Thelakkat

Universität Bayreuth

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Eugen Zimmermann
Ka Kan Wong
Michael Müller
+11 more

Abstract

Lead halide perovskite solar cells have shown a tremendous rise in power conversion efficiency with reported record efficiencies of over 20% making this material very promising as a low cost alternative to conventional inorganic solar cells. However, due to a differently severe “hysteretic” behaviour during current density-voltage measurements, which strongly depends on scan rate, device and measurement history, preparation method, device architecture, etc., commonly used solar cell measurements do not give reliable or even reproducible results. For the aspect of commercialization and the possibility to compare results of different devices among different laboratories, it is necessary to establish a measurement protocol which gives reproducible results. Therefore, we compare device characteristics derived from standard current density-voltage measurements with stabilized values obtained from an adaptive tracking of the maximum power point and the open circuit voltage as well as characteristics extracted from time resolved current density-voltage measurements. Our results provide insight into the challenges of a correct determination of device performance and propose a measurement protocol for a reliable characterisation which is easy to implement and has been tested on varying perovskite solar cells fabricated in different laboratories.

How to cite this publication

Eugen Zimmermann, Ka Kan Wong, Michael Müller, Hao Hu, Philipp Ehrenreich, Markus Kohlstädt, Uli Würfel, Simone Mastroianni, Gayathri Mathiazhagan, Andreas Hinsch, T.P. Gujar, Mukundan Mukundan Thelakkat, Thomas Pfadler, Lukas Schmidt‐Mende (2016). Characterization of perovskite solar cells: Towards a reliable measurement protocol. , 4(9), DOI: https://doi.org/10.1063/1.4960759.

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Publication Details

Type

Article

Year

2016

Authors

14

Datasets

0

Total Files

0

Language

en

DOI

https://doi.org/10.1063/1.4960759

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