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Stronger Coupling of Quantum Dots in Hole Transport Layer Through Intermediate Ligand Exchange to Enhance the Efficiency of PbS Quantum Dot Solar Cells

SMALL METHODS(2024)

Univ Electro Commun

Cited 4|Views27
Abstract
Nowadays, the extensively used lead sulfide (PbS) quantum dot (QD) hole transport layer (HTL) relies on layer-by-layer method to replace long chain oleic acid (OA) ligands with short 1,2-ethanedithiol (EDT) ligands for preparation. However, the inevitable significant volume shrinkage caused by this traditional method will result in undesired cracks and disordered QD arrangement in the film, along with adverse increased defect density and inhomogeneous energy landscape. To solve the problem, a novel method for EDT passivated PbS QD (PbS-EDT) HTL preparation using small-sized benzoic acid (BA) as intermediate ligands is proposed in this work. BA is substituted for OA ligands in solution followed by ligand exchange with EDT layer by layer. With the new method, smoother PbS-EDT films with more ordered and closer QD packing are gained. It is demonstrated stronger coupling between QDs and reduced defects in the QD HTL owing to the intermediate BA ligand exchange. As a result, the suppressed nonradiative recombination and enhanced carrier mobility are achieved, contributing to approximate to 20% growth in short circuit current density (Jsc) and a 23.4% higher power conversion efficiency (PCE) of 13.2%. This work provides a general framework for layer-by-layer QD film manufacturing optimization. To solve the problem of volume shrinkage and inhomogeneous energy landscape, a novel method for PbS-EDT HTL preparation using small-sized benzoic acid (BA) as intermediate ligands is proposed in this work. Stronger coupling between QDs and reduced defects in the QD HTL are realized. Nearly 20% growth in Jsc and a 23.4% higher PCE of 13.2% are achieved. image
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Key words
hole transport layer (HTL),ligand exchange,PbS quantum dot (QD),solar cell
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