Rutronik introduces OSLON Black SFH 471XB series from ams OSRAM

Rutronik is introducing the OSLON Black SFH 471XB infrared LEDs from ams OSRAM with the latest IR:6 thinfilm chip technology.

This advanced design redefines the possibilities of infrared technology. The LEDs impress with improved optical power (940mW and 980mW) and up to 35% higher WPE (Wall Plug Efficiency) at a wavelength of 850nm. They come in clear silicone housings and are ideal for use in light therapy devices, security systems or industrial automation. These and other LEDs from ams OSRAM are available on Rutronik’s website.

Thanks to their improved design, the IR LEDs of the OSLON Black SFH 471XB family deliver exceptional light output and reliability even under the most challenging conditions, setting new standards with integrated IR:6 technology. An improvement of up to 25% in brightness results in, for example, the same light output with fewer LEDs in light therapy devices thereby significantly reducing the space required.

Specifications:

OSLON Black SFH 4713B

  • Brightness: 980mW
  • 80° beam angle

 OSLON Black SFH 4714B

  • Brightness: 980mW
  • 150° beam angle

OSLON Black SFH 47167B

  • Brightness: 940mW 
  • 110 °x130 ° rectangular FoI (Field of Illumination)  

Common benefits briefly:

  • Housing made of clear silicone
  • ESD: 2 kV according to ANSI/ESDA/JEDEC JS-001 (HBM, class 2)
  • High-efficiency IR light source
  • Wavelength: 850nm
  • Low thermal resistance of max. 2.5 K / W (SFH 4713B: 2.6 K / W)
  • Operating temperature range from -40 °C to +125 °C

Application examples:

  • Access control and security
  • Authentication
  • Eye, face, and hand tracking
  • Factory automation
  • Home and building automation
  • Medical devices

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