1 / 57

Quantifying Photometric Spectral Mismatch Uncertainties in LED Measurements

Quantifying Photometric Spectral Mismatch Uncertainties in LED Measurements. Richard Young Optronic Laboratories Kathleen Muray INPHORA Carolyn Jones CJ Enterprises. Introduction. Ideally, photometer response should match the photopic curve.

skemper
Télécharger la présentation

Quantifying Photometric Spectral Mismatch Uncertainties in LED Measurements

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Quantifying Photometric Spectral Mismatch Uncertainties in LED Measurements Richard Young Optronic Laboratories Kathleen Muray INPHORA Carolyn Jones CJ Enterprises

  2. Introduction Ideally, photometer response should match the photopic curve We can see mis-matches at low response better on a logarithmic plot.

  3. Introduction They often deviate in the Blue Photometer 1 Photometer 2 Photometer 3 The highest response and best fit are normally around 555 nm And in the Red Photometers use filter/detector combinations to approximate photopic response This approximation can sometimes be quite good, but is never perfect. This plot shows 3 photometers.

  4. Introduction • If the photometer is calibrated with a white light source, such as illuminant A: • Correct measurements will only be made if the test source is also illuminant A. • The errors in measuring other sources depend on: • The accuracy of matching the photometer response to the photopic curve. • The difference between the test source and illuminant A.

  5. Introduction • If the photometer response is very close to photopic: • There is little error, relaxing the need for similarity between calibration and test sources. • If the test source is very close to illuminant A: • There will be little error, relaxing the accuracy requirements of the photometer response.

  6. Introduction • However, an LED is so different from illuminant A that the photometer needs to match the photopic response curve very closely. • A “goodness of fit” parameter, f1’, has been used for many years as the selection parameter for photometers. • It is intended to apply to white light sources and DOES NOT WORK for LEDs (with the possible exception of white LEDs).

  7. Introduction • To remind you how f1’ is defined: Where: Illuminant A Publication CIE 69-1987: Methods of characterizing illuminance meters and luminance meters: Performance, characteristics and specifications The calculation requires the photometer relative response.

  8. Introduction Especially in the Blue And in the Red LEDs are generally narrow band, and are very unlike illuminant A Measurements of LEDs can therefore have large errors associated with white light calibrations.

  9. Introduction • If the relative spectral distribution of the LED and photometer response are known, the measured photopic value can be corrected for the difference between the calibration source and the LED. • This is called the spectral mismatch correction factor, F (also known as color correction factor in some older documents). • When the calibration source is illuminant A, the spectral mismatch factor is given the symbol F*.

  10. Spectral Mismatch Factors Here are the spectral distributions for a range of LEDs We can therefore calculate the spectral mismatch factors for Photometer 1.

  11. Spectral Mismatch Factors LED measurements using this photometer, can be multiplied by the appropriate F* to give corrected results.

  12. Spectral Mismatch Factors • Can we calculate the spectral mismatch factors without measuring a whole range of LEDs? • Although spectral distributions of LEDs are often asymmetric, they have a similarity of shape that might be reproduced by calculation. • To keep the calculation simple and relevant, it should be based on information readily available: peak wavelength and full-width-at-half-maximum (FWHM).

  13. Spectral Mismatch Factors • Using a Gaussian curve within the FWHM limits and an exponential curve outside, the LED spectrum is represented reasonably well.

  14. Spectral Mismatch Factors • Mathematically, for lL l  lH • [lL is the lower and lH is the upper FWHM limit, lp is the peak wavelength]

  15. Spectral Mismatch Factors • For l <lL and lH > l • [lL is the lower and lH is the upper FWHM limit, lp is the peak wavelength]

  16. …and here are the predicted F* values using the modelled LED spectra (shown in red). Spectral Mismatch Factors So, here are the F* factors calculated from real LED spectra again…

  17. Spectral Mismatch Factors • The agreement between real and modelled LED spectral calculations means we can express F* as a smooth curve rather than individual points. • We don’t have to do all those LED spectral measurements. • We can express F* for different FWHM values at each peak wavelength. • And then something interesting happens…

  18. Spectral Mismatch Factors We see that the F* curve has places where FWHM hardly matters And other places where F* changes rapidly with FWHM There are wavelength ranges where F* changes rapidly And other ranges where F* hardly changes at all

  19. Spectral Mismatch Factors • LEDs differ in peak wavelength and FWHM, so if we want to describe how F* changes for real LEDs: • We must include a wavelength component • We must include a FWHM component

  20. Spectral Mismatch Factors • The mathematical model for the LED spectra works for this photometer, but does it work for all?

  21. Spectral Mismatch Factors It seems to work even better for Photometer 2 than it did for Photometer 1.

  22. Spectral Mismatch Factors This is because the mathematical model is symmetric and the LED spectrum is not. These LEDs are narrow band and highly asymmetric, combined with a poor photopic fit of the detector However, it still matches the general shape of the F* curve, which is all that is required in this paper. Photometer 3 shows some differences as the F* value increases

  23. Spectral Mismatch Factors • The point of this presentation is not to replace LED spectral measurement in the calculation of spectral mismatch factors. • Though it seems to do a good job of this. • The point is, when testing LEDs in a production environment, there are small changes in peak wavelength and FWHM between devices of the same type. • And measuring the spectrum, or even peak wavelength, to get a new F* for each device is not practical.

  24. Spectral Mismatch Factors • At this point it is worth noting that if a calibrated LED is used to calibrate the photometer rather than a white light source, the photometer will already read correctly for that LED. • It is equivalent to calibrating and applying the F* factor in one process. • All other LEDs will still need a spectral mismatch factor, F, to correct the measurement result. • And that includes the production devices.

  25. Magnify Spectral Mismatch Factors Let us take a closer look at some of these F* values.

  26. Spectral Mismatch Factors The size of the error depends on how different the wavelength is and how quickly the F* factor changes in that region. This means that measurements of LEDs that have a slightly different wavelength still have an associated error When we apply the F* factor, we are effectively offsetting the curve at one wavelength

  27. fLED • We can define a “goodness of fit” parameter, like f1’ but specifically applying to LEDs – fLED. • The fLED parameter is “the average absolute spectral mismatch error over a wavelength region relative to the central wavelength of that region.” NOTE: It is NOT a correction factor to be applied, but it IS an indicator of the suitability and quality of the photometer for measurement of any single color LED.

  28. fLED • There is one value of fLED for each wavelength and FWHM, but because we can effectively model the LED spectral distribution, it can be easily calculated from the photometer response. • fLED has two components. • Errors introduced by measuring LEDs at different wavelengths to the calibration –wLED. • Errors introduced by measuring LEDs at different FWHMs to the calibration – hLED.

  29. wLED • Mathematically, the F* value for an LED at the central wavelength, c, is: • Where s() is the photometer response and ScLED() is the LED spectral distribution.

  30. wLED • Similarly, the F* value for an LED at some other wavelength, p, is: • Where s() is the photometer response and SpLED() is the LED spectral distribution.

  31. wLED • The error when measuring an LED at wavelength p using the Fc* value at wavelength c is: NOTE: This equation no longer contains a reference to the calibration source, so it does not matter if it was calibrated with white light or a calibrated LED. p,c depends only on the photometer and the LED spectral distributions. If the modelled spectral distributions are used, it is purely a photometer characteristic.

  32. wLED • Recall the definition of fLED: • “the average absolute spectral mismatch error over a wavelength region relative to the central wavelength of that region.” • We can now define wLED in mathematical terms: Where p1 and p2 are the wavelength limits of the region

  33. wLED • So wLED can be calculated for any central wavelength and FWHM. • It should be shown as wLED(c,FWHM) to reflect this. • Since it is independent of calibration source, a full photometer response curve is not required. •  3 FWHMs around the central wavelength should be sufficient. • The photometer response does need to be done at 1nm intervals or smaller for good results.

  34. wLED • We still need to define the wavelength “region” in order to calculate wLED(c,FWHM). • Based on data for over 900 LEDs in 63 batches, covering most of the visible range, we propose ± 5 nm around the central wavelength.

  35. wLED The first stage is to calculate p,c over the region. This is the result for photometer 1 at 20 nm FWHM.

  36. wLED The next stage is to calculate wLED values. These results show that wLED varies strongly with FWHM.

  37. hLED • Using similar reasoning to wLED calculations • The error when measuring an LED at FWHM h using the FH* value at FWHM H, both at peak wavelength c is:

  38. hLED • We can define hLED in similar mathematical terms to wLED: Where h1 and h2 are ± 5 nm limits around the central FWHM value, H

  39. hLED Like wLED, hLED is strongly dependent on FWHM.

  40. hLED • So now we have the two components: • wLED(c,H) gives the error for peak wavelength change. • hLED (c,H) gives the error for FWHM change. • We can combine them to give the general error indicator, fLED(c,H):

  41. You can see that high hLED is generally close to a low wLED. fLED This means there are wavelengths where the photometer error is more sensitive to LED peak wavelength shifts and others where it is more sensitive to FWHM changes. Here is an example of wLED We add hLED And finally fLED.

  42. fLED Where the photometer response crosses the photopic curve, their slopes are very different Giving large errors with wavelength changes But high and low contributions offset one another for changes in FWHM. This is the photometer response graph shown earlier but rescaled.

  43. fLED • fLED(c,H) values can aid in the design of photometers. • It provides instant feedback on the performance of the photometer for LED measurements. • It shows that it is the slope of the response rather than the absolute value that is important. • It does not require spectral data over the full visible region. • Photometer 4, specially designed for blue LEDs, can now be added to our list.

  44. fLED Photometer 4 is confirmed as generally the best for blue LEDS. But photometer 1 is best at 430 nm.

  45. fLED Values of fLED(c,H) show the suitability for LED measurement, but bear no relation to the f1’ value. Photometer 3: f1’ = 2.51% Photometer 3 is the worst At 40 nm FWHM Photometer 4 is the best for blue LEDS even at 430 nm Photometer 1: f1’ = 6.35% Photometer 2: f1’ = 1.98%

  46. fLED A 3-D plot shows the variations of fLED(c,H). The value is color coded to show iso-value lines. Seen from above, this is a map.

  47. These would be measured with <1% fLED. These would be measured with <2% fLED. fLED – Photometer 1 We can overlay a plot of FWHM vs. wavelength for some modern LEDS

  48. fLED – Photometer 2 Photometer 2 has <1% fLED for most LEDs. But offers no significant improvement for these LEDs.

  49. Photometer 3 also has a wide range of <1% fLED. fLED – Photometer 3 But up to 7% fLED for these LEDs.

  50. fLED – Photometer 4 Photometer 4 data has a limited wavelength range, but <1% fLED extends further into the blue region than the others. And has fLED<3% even for these LEDs.

More Related