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Zawartość zarchiwizowana w dniu 2024-06-18

Nanostructured Efficient White LEDs based on short-period superlattices and quantum dots

Opis projektu


Core and disruptive photonic technologies
Developing highly efficient, high brightness monolithic and hybrid allsemiconductor based WHITE LEDs. Widespread implementation would reduce global energy consumption by approximately 10%.

NEWLED will develop high efficiency and high brightness monolithic and hybrid all-semiconductor WHITE light-emitting GaN-based diodes. Power losses due to phosphor conversion and the problem of different ageing rates of the GaN LED pump will be eliminated by the development of phosphor free structures with increased brightness (power emitted per surface per angle). NEWLED will enhance the efficiency of yellow InGaAlP/AlGaAs LEDs by bandgap engineered superlattices. Novel light extraction approaches will target advanced directionality and colour adjustment. Values of 50 to 60% overall efficiency with a conversion of greater than 200 lm/W in the exploited warm white LEDs are targeted as well as the realisation of a colour rendering index (CRI) of greater than 95. Advanced packaging will enable effective heat dissipation and light management. The devices will have immediate applications in automotive, industrial lighting and displays industries. Widespread implementation would reduce global energy consumption by approximately 10% and reduce CO2 emissions by 3Bn tonnes with consequent economic and environmental benefits.

Zaproszenie do składania wniosków

FP7-ICT-2011-8
Zobacz inne projekty w ramach tego zaproszenia

Koordynator

ASTON UNIVERSITY
Wkład UE
€ 1 089 098,00
Adres
ASTON TRIANGLE
B4 7ET Birmingham
Zjednoczone Królestwo

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Region
West Midlands (England) West Midlands Birmingham
Rodzaj działalności
Higher or Secondary Education Establishments
Kontakt administracyjny
Matthew Cooper (Mr.)
Linki
Koszt całkowity
Brak danych

Uczestnicy (15)