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Philip Heilman and Guillermo Ponce
With help from the BLM, Forest
Service, and U. Arizona and Montana
Strengths
 Cover whole allotment and area around it
 Can go back in time (Landsat 5 to 1984)
 Can compare within and across allotments
Weaknesses
 Broader, but shallow (no composition)
 Not directly comparable to field measurements
 Error – but in many cases improvable
 Need interpretation
 A “Big Data” problem – takes skill and time
Strengths
 In fashion buzzword that makes it sound like you are on
the cutting edge (!)
 Veg Production = f(inputs) relative to others
 Reduce error even with very messy, non-linear systems
(now easier to try a range of modeling solutions
LM < RF < GBM < Deep Learning?)
Weaknesses
 Less interpretability than one would want
 Requires more hardware, programming, database and
GIS skills, truly a “Big Data” problem
2018 Overview and examination of 1 variable
(MaxNDVI as proxy for production)
2019 Expand to 2 proxys for production and 2
for cover
2020 Evaluation with Public Land Managers
(GIS issues, workflow?)
Data -> Information -> Knowledge -> Wisdom
Sensor Production Cover
Landsat (1984-) Maximum NDVI Value in the
Year
30 m Spatial Resolution
Annual 2000-2013
SATVI Derived Total
(Green + Senescent)
Foliar Cover
30 m Spatial Resolution
Pre and Post Monsoon
2008-2011
MODIS (2000-) Integrated Enhanced
Vegetation Index (iEVI)
250 m Spatial Resolution
Every 16 Days. 2000-2013
SATVI Derived Total
(Green + Senescent)
Foliar Cover
500 m Spatial Resolution
Every 8 Days, 2000-2013
AZ NM
Johnny Creek
Bonita Creek
MODIS (8 Day) % Cover
500m
100m
Algorithm
Field Measurements Used to Develop SATVI to Cover Relationship
Cover:
• 5% measured
•10% Landsat
(ID: 123-0.022)
Cover:
• 17% measured
•22% Landsat
(ID: 54-0.094)
Sensor Production Cover
Landsat (1984-) Maximum NDVI Value in the
Year
30 m Spatial Resolution
Annual 2000-2013
SATVI Derived Total
(Green + Senescent)
Foliar Cover
30 m Spatial Resolution
Pre and Post Monsoon
2008-2011
Landsat (1984-)
Products of Brady
Allred and team at U
Montana
Landsat and MODIS derived
terrestrial primary production
by Robinson et al., 2018, in
Remote Sensing in Ecology
and Conservation
Plant functional type
cover maps by Jones
M.O. et al., 2018 in
Ecosphere
https.rangelands.app
The road to wisdom? Well its plain
and simple to express:
Err
and err,
and err again,
but less
and less
and less. by Piet Hein
 Field data becoming more expensive to collect
 With limited monitoring, how to defend public land
management?
 Catalog of free (raw) imagery (Landsat 1984-;
MODIS 2000-; Google Earth Engine)
 Supporting technology is improving (GPS; GIS
datasets; aerial photography; big data technology,
but still difficult!)
Remote sensing + machine learning is on the verge of
being able to complement, but not replace, field data
July 31-1110-Philip Heilman

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July 31-1110-Philip Heilman

  • 1. Philip Heilman and Guillermo Ponce With help from the BLM, Forest Service, and U. Arizona and Montana
  • 2.
  • 3.
  • 4. Strengths  Cover whole allotment and area around it  Can go back in time (Landsat 5 to 1984)  Can compare within and across allotments Weaknesses  Broader, but shallow (no composition)  Not directly comparable to field measurements  Error – but in many cases improvable  Need interpretation  A “Big Data” problem – takes skill and time
  • 5. Strengths  In fashion buzzword that makes it sound like you are on the cutting edge (!)  Veg Production = f(inputs) relative to others  Reduce error even with very messy, non-linear systems (now easier to try a range of modeling solutions LM < RF < GBM < Deep Learning?) Weaknesses  Less interpretability than one would want  Requires more hardware, programming, database and GIS skills, truly a “Big Data” problem
  • 6. 2018 Overview and examination of 1 variable (MaxNDVI as proxy for production) 2019 Expand to 2 proxys for production and 2 for cover 2020 Evaluation with Public Land Managers (GIS issues, workflow?) Data -> Information -> Knowledge -> Wisdom
  • 7.
  • 8. Sensor Production Cover Landsat (1984-) Maximum NDVI Value in the Year 30 m Spatial Resolution Annual 2000-2013 SATVI Derived Total (Green + Senescent) Foliar Cover 30 m Spatial Resolution Pre and Post Monsoon 2008-2011 MODIS (2000-) Integrated Enhanced Vegetation Index (iEVI) 250 m Spatial Resolution Every 16 Days. 2000-2013 SATVI Derived Total (Green + Senescent) Foliar Cover 500 m Spatial Resolution Every 8 Days, 2000-2013
  • 10. MODIS (8 Day) % Cover
  • 11.
  • 13.
  • 14. Algorithm Field Measurements Used to Develop SATVI to Cover Relationship Cover: • 5% measured •10% Landsat (ID: 123-0.022) Cover: • 17% measured •22% Landsat (ID: 54-0.094)
  • 15.
  • 16. Sensor Production Cover Landsat (1984-) Maximum NDVI Value in the Year 30 m Spatial Resolution Annual 2000-2013 SATVI Derived Total (Green + Senescent) Foliar Cover 30 m Spatial Resolution Pre and Post Monsoon 2008-2011 Landsat (1984-) Products of Brady Allred and team at U Montana Landsat and MODIS derived terrestrial primary production by Robinson et al., 2018, in Remote Sensing in Ecology and Conservation Plant functional type cover maps by Jones M.O. et al., 2018 in Ecosphere https.rangelands.app
  • 17.
  • 18.
  • 19.
  • 20.
  • 21.
  • 22.
  • 23.
  • 24.
  • 25.
  • 26.
  • 27.
  • 28.
  • 29.
  • 30.
  • 31.
  • 32.
  • 33.
  • 34.
  • 35.
  • 36.
  • 37.
  • 38.
  • 39.
  • 40.
  • 41.
  • 42.
  • 43. The road to wisdom? Well its plain and simple to express: Err and err, and err again, but less and less and less. by Piet Hein
  • 44.  Field data becoming more expensive to collect  With limited monitoring, how to defend public land management?  Catalog of free (raw) imagery (Landsat 1984-; MODIS 2000-; Google Earth Engine)  Supporting technology is improving (GPS; GIS datasets; aerial photography; big data technology, but still difficult!) Remote sensing + machine learning is on the verge of being able to complement, but not replace, field data

Editor's Notes

  1. tannerite