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IES TM30-15 Introduction and Latest Updates
1. TM-30: Introduction and Latest Developments
Michael Royer, PhD | Pacific Northwest National Laboratory
2. Credit(s) earned on completion of this course will be
reported to AIA CES for AIA members. Certificates of
Completion for both AIA members and non-AIA
members are available upon request.
This course is registered with AIA CES for
continuing professional education. As such, it does
not include content that may be deemed or
construed to be an approval or endorsement by the
AIA of any material of construction or any method or
manner of
handling, using, distributing, or dealing in any
material or product.
___________________________________________
Questions related to specific materials, methods, and services will
be addressed at the conclusion of this presentation.
3. TM-30 was developed, through a consensus process, to provide a
comprehensive set of objective informationâgoing beyond simple
average valuesâthat can be used collectively to make informed
decisions about subjective perceptions, such as preference or
naturalness, given a context. New research has shown the value
of this robust system in capturing human judgements of lighting
quality. Nonetheless, TM-30 is a tool, not an answer. Its limitations
must be understand, and it must be combined with other color
information, such as chromaticity, luminance, and distribution of
light, when choosing a source.
Abstract:
3
4. ďĄ Summarize the process that led to the recommendation by the IES
Color Metrics Task Group
ďĄ Describe the components of the color rendition evaluation system
and how they can be interpreted to aid design and specification
ďĄ Comprehend the conceptual framework for the underlying
calculations
ďĄ Recognize the limitations of the this system, and more generally
recognize the limitations of all measures for color rendition
ďĄ Understand how the objective information in TM-30 can be used to
aid in subjective design decisions (i.e., matching the right source to
an application).
Learning Objectives:
4
8. Fidelity Index (Rf)
Gamut Index (Rg)
High Level Average Values
Core Calculation Engine
Modern Color Science
New Color Samples
Color Vector Graphic
Color Distortion Graphic
Graphical Representations
Skin Fidelity (Rf,skin)
Fidelity by Hue (Rf,h#)
Chroma Shift by Hue (Rcs,h#)
Fidelity by Sample (Rf,CES#)
Detailed Values
8
9. Color Fidelity
Fidelity Index (Rf)
TM-30 Method for Evaluating Color Rendition
The accurate rendition
of color so that they
appear as they would
under familiar
(reference) illuminants
(0-100)
11. Color Fidelity
Fidelity Index (Rf)
TM-30 Method for Evaluating Color Rendition
The accurate rendition
of color so that they
appear as they would
under familiar
(reference) illuminants
(0-100)
Color Gamut
The average level of
saturation relative to
familiar (reference)
illuminants.
Gamut Index (Rg)
~60-140 when Rf > 60
12. 60
70
80
90
100
110
120
130
140
50 60 70 80 90 100
GamutIndex,Rg
Fidelity Index, Rf
Reduced Fidelity
IncreasedSaturationDecreasedSaturation
Reference
Illuminant
Two-AxisSystem
⢠Evaluate tradeoffs between
fidelity and saturation.
⢠Cohesive system from the
same calculation engine.
⢠But average values donât tell
the whole storyâŚ
13. Color Fidelity
Fidelity Index (Rf)
The accurate rendition
of color so that they
appear as they would
under familiar
(reference) illuminants
Color Gamut
The average level of
saturation relative to
familiar (reference)
illuminants.
Gamut Index (Rg)
(0-100)
~60-140 when Rf > 60
Gamut Shape
Changes over
different hues
Color Vector Graphic
TM-30 Method for Evaluating Color Rendition
Hue Bin Fidelity
Hue Bin Chroma Shift
16. SummaryofUpgrades CRI Calculation Engine (1974) TM-30 Calculation Engine (2015)
CIE 1964 U*V*W* CAM02-UCS (CIECAM02)
Von Kries CAT CIE CAT02
8 color samples 99 color samples
Medium chroma/lightness
Spectral sensitivity varies
Uniform color space coverage
Spectral sensitivity neutral
Variety of real objectsMunsell samples only
Technical
Improvement
Ref Illuminant Step Function Ref Illuminant Continuous
(Uses same reference sources, but
blended between 4500 K and 5500 K)
No lower limit for scores 0 to 100 scale (fidelity)
Nice to Have
Fidelity Only Fidelity, Gamut, Graphical, Hues Philosophical
Change
16
19. ~16 point spread in
Rf scores at Ra = ~80
70
75
80
85
90
95
100
70 75 80 85 90 95 100
TM-30Rf
CIE Ra (CRI)
Filament
Daylight Models
Narrowband Fluorescent
Broadband Fluorescent
HID
Hybrid LED
Color Mixed LED
Phosphor LED
20. 49 point spread
(error) in fidelity
score at CRI of 80.
40
50
60
70
80
90
100
50 60 70 80 90 100
TM-30Rf
CIE Ra
5,000 Real and Modelled* SPDs
*All modelled SPDs composed of combinations of Gaussian
primaries; chromaticity on Planckian locus between 2700 K
and 7000 K
20
For more information:
Smet KAG, David A, Whitehead L. 2015. Why color space
uniformity and sample set spectral uniformity are essential
for color rendering measures. Leukos 12(1â2):39â50.
59. UnderstandingTheTool
1. A metric value doesnât tell you how the product will perform in any
given environment.
2. The âaccuracyâ/applicability of the metric depends on if the sample
set is similar to the actual space.
3. An average color rendering metric shouldnât be used to predict how a
source will render reds, or skin tones, or any specific set of objects.
4. TM-30 offers substantially more information, which is essential for
evaluating color rendering characteristics.
5. The best source is depends on the context (objects, type of
space/application, illuminance, occupants, etc.)
59
60. Resources
60
IES Technical Memorandum (TM) 30-15 (Includes Excel Calculators):
IES Method for Evaluating Light Source Color Rendition
http://bit.ly/1IWZxVu
Optics Express journal article that provides overview of the IES method:
Development of the IES method for evaluating the color rendition of light sources
http://bit.ly/1J32ftZ
Application webinar co-sponsored by US Department of Energy and Illuminating Engineering Society:
Understanding and Applying TM-30-15: IES Method for Evaluating Light Source Color Rendition
http://1.usa.gov/1YEkbBZ
Technical webinar co-sponsored by US Department of Energy and Illuminating Engineering Society:
A Technical Discussion of TM-30-15: Why and How it Advances Color Rendition Metrics
http://1.usa.gov/1Mn15LG
LEUKOS journal article supporting TM-30âs technical foundations:
Smet KAG, David A, Whitehead L. 2015. Why Color Space and Spectral Uniformity Are Essential for Color
Rendering Measures. LEUKOS. 12(1,2):39-50.
http://dx.doi.org/10.1080/15502724.2015.1091356
61. Resources
61
LEUKOS editorial discussing next steps:
Royer MP. 2015. IES TM-30-15 Is ApprovedâNow What? Moving Forward with New Color Rendition
Measures. LEUKOS. 12(1,2):3-5.
http://dx.doi.org/10.1080/15502724.2015.1092752
Lighting Research and Technology, Open Letter:
Correspondence: In support of the IES method of evaluating light source colour rendition
(More than 30 authors)
http://dx.doi.org/10.1177/1477153515617392
DOE Fact Sheet on TM-30
http://energy.gov/eere/ssl/downloads/evaluating-color-rendition-using-ies-tm-30-15
DOE TM-30 FAQs Page:
http://energy.gov/eere/ssl/tm-30-frequently-asked-questions
62. This concludes The American Institute of Architects
Continuing Education Systems Course
Editor's Notes
(DEMO 13/14)
D22 Demo
D22 Demo
D22 Demo
D22 Demo
D22 Demo
Experiment
Experiment
Things to watch out for in color preference experiments:
Things to watch out for in color preference experiments: