光伏系统
光伏
太阳能
钙钛矿(结构)
工程物理
电压
汽车工程
太阳能电池
电气工程
太阳能电缆
材料科学
环境科学
光电-热混合太阳能集热器
工程类
能源消耗
功率(物理)
热的
电池(电)
可再生能源
太阳能
计算机科学
电
可扩展性
光电子学
能量转换效率
航空航天工程
发电
能量(信号处理)
光伏并网发电系统
作者
Qi Wang,Zongxu Na,Jianfei Gao,Yu Liu,Yuanwei Chen,Peng Gao,Yong Ding,Songyuan Dai,Mohammad Khaja Nazeeruddin,Huai Yang
出处
期刊:Nano-micro Letters
[Springer Science+Business Media]
日期:2026-01-05
卷期号:18 (1): 132-132
标识
DOI:10.1007/s40820-025-01985-w
摘要
Abstract Energy-saving buildings (ESBs) are an emerging green technology that can significantly reduce building-associated cooling and heating energy consumption, catering to the desire for carbon neutrality and sustainable development of society. Smart photovoltaic windows (SPWs) offer a promising platform for designing ESBs because they present the capability to regulate and harness solar energy. With frequent outbreaks of extreme weather all over the world, the achievement of exceptional energy-saving effect under different weather conditions is an inevitable trend for the development of ESBs but is hardly achieved via existing SPWs. Here, we substantially reduce the driving voltage of polymer-dispersed liquid crystals (PDLCs) by 28.1 % via molecular engineering while maintaining their high solar transmittance ( T sol = 83.8 %, transparent state) and solar modulating ability (Δ T sol = 80.5 %). By the assembly of perovskite solar cell and a broadband thermal-managing unit encompassing the electrical-responsive PDLCs, transparent high-emissivity SiO 2 passive radiation-cooling, and Ag low-emissivity layers possesses, we present a tri-band regulation and split-type SPW possessing superb energy-saving effect in all-season. The perovskite solar cell can produce the electric power to stimulate the electrical-responsive behavior of the PDLCs, endowing the SPWs zero-energy input solar energy regulating characteristic, and compensate the daily energy consumption needed for ESBs. Moreover, the scalable manufacturing technology holds a great potential for the real-world applications.
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