材料科学
异质结
光电子学
薄脆饼
丝网印刷
晶体硅
太阳能电池
图层(电子)
共发射极
无定形固体
同质结
硅
接触电阻
基质(水族馆)
等效串联电阻
纳米技术
复合材料
电气工程
结晶学
化学
电压
海洋学
工程类
地质学
作者
L. Serenelli,M. Miliciani,M. Izzi,Rosa Chierchia,A. Mittiga,M. Tucci
出处
期刊:2017 IEEE 44th Photovoltaic Specialist Conference (PVSC)
日期:2014-06-01
卷期号:: 2528-2532
被引量:12
标识
DOI:10.1109/pvsc.2014.6925445
摘要
Amorphous / crystalline silicon heterojunction is the most attractive technique to obtain high efficiency solar cells. Usually such a kind of cells is produced starting from n-type silicon wafers, because of several advantages, like the high bulk lifetime and the possibility to easily contact the n-type base with i-n amorphous layers. The emitter is usually covered by Transparent Conductive Oxides (TCO) which works as high conductive layer and Anti Reflection Coating (ARC). The device is completed by a metal grid, made by screen printed silver, sintered at low temperature. Both the TCO and the grid strongly influence the final cell series resistance, and consequently the cell efficiency. When p-type wafer is adopted as substrate for heterojunction cell, the base contact is more difficult to obtain because of the energy bands alignment between the c-Si and the p-type a-Si:H layer. Recently n-type doped SiOx layer has attracted interest as emitter layer in heterojunction device, therefore in this work we show the results obtained on the metallization of n-type SiOx/ptype c-Si heterojunction solar cells by means of low temperature screen printing technique. In particular a new kind of low temperature sintering (<; 200°C) screen printable silver paste has been developed able to ensure high linear conductivity, low specific contact resistivity and strong adhesion to TCO's. We present electrical characterization using Transfer Length Method (TLM) technique. Since the base contact of SiO x /c-Si heterojunction is ensured by laser doping technique starting from p-type a-Si:H layer, we also show how the screen printed Ag paste can enhance the base contact of this solar cell.
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