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Derwin Suhartono
Wahyu Aditya Nugraha
Miranty Lestari
Muhammad Yasin
Expert System inExpert System in
Detecting CoffeeDetecting Coffee
Plant DiseasesPlant Diseases
Research Background
 Coffee is an important commodity in
the world economy
 Coffee is also an important commodity
in the plantations
 The productivity and quality of the
commodity plantation are still quite
low
About Coffee
 Type of pine wood dicotyledonous (seed-
bearing two) plant, a descendant of the
family Rubiaceae
 Only 2 types of coffee being the main
varieties to be developed, they are Arabica
and Robusta
 In Indonesia, their production level
reached on 9.129.000 sacks per year
 The number of exports of Arabica coffee
per year i.e. 792.327 per sack/60 kg and
exports Robusta coffee per year i.e.
4.462.620 per sack/60 kg
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Coffee Diseases
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 Coffee Leaf Rust
 Brown Eye Spot
of Coffee
 Nematode
 Upas Fungus
 Root Fungus
Current Works
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 Expert System has been developed and
applied in many fields
 lack of knowledge and information on how to give the
right treatments for plant diseases
 spend much money
 Engineers in Pakistan developed an
application which aims to detect diseases and
pests on crops of wheat called Dr.Wheat
 IF-THEN rules method
Current Works
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 Engineers in India has developed image based
rapeseed-mustard diseases expert system for
detecting rapeseed-mustard diseases with the
feature which is image based
 Engineer in India has developed expert system
for the diagnosis of diseases in rice plant
 determining the main characteristics of the process of
diagnosis
 searching data with basic knowledge of human or domain
expert
 representing data processing
Methodology
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 direct interviews with some expert of the coffee plant
 examine documentation about coffee plant
 doing some research in the field and survey to
farmers
Methodology
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The Decision Tree
No. Code Description
1 A Leaves becomes yellow
2 B Brownish yellow spots appear
on the leaf OR leaves becomes
easily fallen
3 C Dull, shriveled, and hang leaves
4 D Leaves have orange powdery
spots on the underside of leaves
OR leaves become bald OR
patches spreading leaves
5 E Premature and empty leaves OR
short stem OR decomposed and
rotten root
6 F Spots appear on fruit so it
becomes rotten OR circular
spots appear on fruit forming a
halo
7 G Roots covered by a crust of soil
grains OR roots have woven
yarn blackish brown fungus
8 H Black spots on the roots OR
black spots on the stem
9 I Roots have woven threads of
white fungus
10 J Stem has a thin threads of fungi
such as silk OR stem necrosis
OR fruit necrosis
Methodology
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No. Code Description
1 R1 Coffee Leaf Rust
2 R2 Nematode
3 R3 Brown Eye Spot of Coffee
4 R4 Upas Fungus
5 R5 Brown Root Fungus
6 R6 Black Root Fungus
7 R7 White Root Fungus
8 R8 Healthy Plants
9 R9 Disease Not Detected
The Decision Tree
The system is moving forward
from the current state to the goal
state, whose goal state on the
condition here is the coffee plant
diseases (such as coffee leaf rust,
brown eye spot of coffee,
nematode and upas fungus) or
other information such as “healthy
plants” or “diseases not detected”
Result and Discussion
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Result and Discussion
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 Of the 20 samples randomly taken, 17
samples of specimens can be
detected by the system
 Of the 20 samples randomly taken, 3
samples of specimens cannot be
detected by the system
 Expert system can detect several
diseases at the coffee plant
 Of the 20 samples taken specimens, 3
samples were not detected by the
system, as it is caused by other
symptoms such as Hama attacked by
borers and caterpillars Soot Dew
Result and Discussion
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 Accuracy calculation of the system
can be adopted from the ratio of
total sample that can be detected
by the expert system with the total
sample which is randomly taken.
(17/20) * 100% = 85%
Conclusion
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1. By using this approach, researcher in
coffee plants and farmer could be helped
to identify the disease earlier
2. Detecting plant disease especially in
coffee plants by using expert system
reaches 85% accuracy
3. To make a better detection of the coffee
plants disease, additional variables such
as weather and temperature are needed.
In this research, those variables have not
been used yet as the limitation of data
source of them
References (1)
Company Logo
 International Coffee Organization, 2007. The Story of Coffee.
http://www.ico.org/coffee_story.asp?section=About_Coffee
(Accessed on November 15, 2012)
 Indonesian Coffee and Cocoa Research Institute, 2008. Post-
Harvest Research Group http://www.iccri.net/index.php?
option=com_content&view=article&id=87:laboratorium
%C2%ADpasca
%C2%ADpanen&catid=47:laboratorium&Itemid=116
(Accessed on July 18, 2012)
 Directorate General of Plantations, 2010. Coffee Plant Pest
Attack Modeling with Geographic Information System (GIS).
http://ditjenbun.deptan.go.id/bbp2tpsur/index.php?
option=com_content&view=article&id=40:permodelan-
serangan-opt-tanaman-kopi-dengan-geographic-information-
system-gis&catid=6:iptek&Itemid=24 (Accessed on August 12,
2012)
 Coffee Research Organization, 2006. Arabica and Robusta
Coffee Plant.
http://www.coffeeresearch.org/coffee/coffeeplant.htm
(Accessed on February 13, 2011)
References (2)
Company Logo
 International Coffee Organization, 2010. International Coffee
Organization - Country datasheets.
http://www.ico.org/countries/indonesia.pdf (Accessed on
November 15, 2012)
 Khan, F. S., Razzaq, S., Irfan, K., Maqbool, F., Farid, A., Illahi, I.,
and Ul Amin, T. 2008. Dr. Wheat: A Web-based Expert System
for Diagnosis of Diseases and Pests in Pakistani Wheat.
Proceedings of the World Congress on Engineering, 1: 978-988-
98671-9-5
 Kumar, V., Lehri, S., Sharma, A. K., Meena, P. D., and Kumar, A.
2004. Image Based Rapeseed-Mustard Disease Expert System :
An Effective Extension Tool. Indian Res. J. Ext. Edu, 8 (10-13)
 Sarma, S. K., Singh, K. R., and Singh, A. 2008. An Expert System
for diagnosis of diseases in Rice Plant. International Journal of
Artificial Intelligence, 1 (26-31)
 Hemmer, M.C., 2008. Expert Systems in Chemistry Research.
CRC Press, Florida. ISBN: 978 1 4200 5323 4, pp:10-29.‑ ‑ ‑ ‑
 Sasikumar, M., Ramani, S., Raman, S. M., Anjaneyulu, K., and
Chandrasekar, R., 2007. A Practical Introduction to Rule Based
Expert Systems. Narosa Publishers, New Delhi. pp:29-30
References (3)
Company Logo
 Russell, S., & Norvig, P., 2010. Artificial Intelligence : A Modern
Approach. 3rd Ed. Pearson Education Inc, New Jersey. ISBN:
978-0-13-604259-4, pp:240
 Siller, W., & Buckley, J. J. (2005). Fuzzy Expert Systems and
Fuzzy Reasoning. New Jersey: John Wiley & Sons, Inc
Company Logo
Company Logo

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Iceei2013 expert system in detecting coffee plant diseases

  • 1. LOGO Derwin Suhartono Wahyu Aditya Nugraha Miranty Lestari Muhammad Yasin Expert System inExpert System in Detecting CoffeeDetecting Coffee Plant DiseasesPlant Diseases
  • 2. Research Background  Coffee is an important commodity in the world economy  Coffee is also an important commodity in the plantations  The productivity and quality of the commodity plantation are still quite low
  • 3. About Coffee  Type of pine wood dicotyledonous (seed- bearing two) plant, a descendant of the family Rubiaceae  Only 2 types of coffee being the main varieties to be developed, they are Arabica and Robusta  In Indonesia, their production level reached on 9.129.000 sacks per year  The number of exports of Arabica coffee per year i.e. 792.327 per sack/60 kg and exports Robusta coffee per year i.e. 4.462.620 per sack/60 kg Company Logo
  • 4. Coffee Diseases Company Logo  Coffee Leaf Rust  Brown Eye Spot of Coffee  Nematode  Upas Fungus  Root Fungus
  • 5. Current Works Company Logo  Expert System has been developed and applied in many fields  lack of knowledge and information on how to give the right treatments for plant diseases  spend much money  Engineers in Pakistan developed an application which aims to detect diseases and pests on crops of wheat called Dr.Wheat  IF-THEN rules method
  • 6. Current Works Company Logo  Engineers in India has developed image based rapeseed-mustard diseases expert system for detecting rapeseed-mustard diseases with the feature which is image based  Engineer in India has developed expert system for the diagnosis of diseases in rice plant  determining the main characteristics of the process of diagnosis  searching data with basic knowledge of human or domain expert  representing data processing
  • 7. Methodology Company Logo  direct interviews with some expert of the coffee plant  examine documentation about coffee plant  doing some research in the field and survey to farmers
  • 8. Methodology Company Logo The Decision Tree No. Code Description 1 A Leaves becomes yellow 2 B Brownish yellow spots appear on the leaf OR leaves becomes easily fallen 3 C Dull, shriveled, and hang leaves 4 D Leaves have orange powdery spots on the underside of leaves OR leaves become bald OR patches spreading leaves 5 E Premature and empty leaves OR short stem OR decomposed and rotten root 6 F Spots appear on fruit so it becomes rotten OR circular spots appear on fruit forming a halo 7 G Roots covered by a crust of soil grains OR roots have woven yarn blackish brown fungus 8 H Black spots on the roots OR black spots on the stem 9 I Roots have woven threads of white fungus 10 J Stem has a thin threads of fungi such as silk OR stem necrosis OR fruit necrosis
  • 9. Methodology Company Logo No. Code Description 1 R1 Coffee Leaf Rust 2 R2 Nematode 3 R3 Brown Eye Spot of Coffee 4 R4 Upas Fungus 5 R5 Brown Root Fungus 6 R6 Black Root Fungus 7 R7 White Root Fungus 8 R8 Healthy Plants 9 R9 Disease Not Detected The Decision Tree The system is moving forward from the current state to the goal state, whose goal state on the condition here is the coffee plant diseases (such as coffee leaf rust, brown eye spot of coffee, nematode and upas fungus) or other information such as “healthy plants” or “diseases not detected”
  • 11. Result and Discussion Company Logo  Of the 20 samples randomly taken, 17 samples of specimens can be detected by the system  Of the 20 samples randomly taken, 3 samples of specimens cannot be detected by the system  Expert system can detect several diseases at the coffee plant  Of the 20 samples taken specimens, 3 samples were not detected by the system, as it is caused by other symptoms such as Hama attacked by borers and caterpillars Soot Dew
  • 12. Result and Discussion Company Logo  Accuracy calculation of the system can be adopted from the ratio of total sample that can be detected by the expert system with the total sample which is randomly taken. (17/20) * 100% = 85%
  • 13. Conclusion Company Logo 1. By using this approach, researcher in coffee plants and farmer could be helped to identify the disease earlier 2. Detecting plant disease especially in coffee plants by using expert system reaches 85% accuracy 3. To make a better detection of the coffee plants disease, additional variables such as weather and temperature are needed. In this research, those variables have not been used yet as the limitation of data source of them
  • 14. References (1) Company Logo  International Coffee Organization, 2007. The Story of Coffee. http://www.ico.org/coffee_story.asp?section=About_Coffee (Accessed on November 15, 2012)  Indonesian Coffee and Cocoa Research Institute, 2008. Post- Harvest Research Group http://www.iccri.net/index.php? option=com_content&view=article&id=87:laboratorium %C2%ADpasca %C2%ADpanen&catid=47:laboratorium&Itemid=116 (Accessed on July 18, 2012)  Directorate General of Plantations, 2010. Coffee Plant Pest Attack Modeling with Geographic Information System (GIS). http://ditjenbun.deptan.go.id/bbp2tpsur/index.php? option=com_content&view=article&id=40:permodelan- serangan-opt-tanaman-kopi-dengan-geographic-information- system-gis&catid=6:iptek&Itemid=24 (Accessed on August 12, 2012)  Coffee Research Organization, 2006. Arabica and Robusta Coffee Plant. http://www.coffeeresearch.org/coffee/coffeeplant.htm (Accessed on February 13, 2011)
  • 15. References (2) Company Logo  International Coffee Organization, 2010. International Coffee Organization - Country datasheets. http://www.ico.org/countries/indonesia.pdf (Accessed on November 15, 2012)  Khan, F. S., Razzaq, S., Irfan, K., Maqbool, F., Farid, A., Illahi, I., and Ul Amin, T. 2008. Dr. Wheat: A Web-based Expert System for Diagnosis of Diseases and Pests in Pakistani Wheat. Proceedings of the World Congress on Engineering, 1: 978-988- 98671-9-5  Kumar, V., Lehri, S., Sharma, A. K., Meena, P. D., and Kumar, A. 2004. Image Based Rapeseed-Mustard Disease Expert System : An Effective Extension Tool. Indian Res. J. Ext. Edu, 8 (10-13)  Sarma, S. K., Singh, K. R., and Singh, A. 2008. An Expert System for diagnosis of diseases in Rice Plant. International Journal of Artificial Intelligence, 1 (26-31)  Hemmer, M.C., 2008. Expert Systems in Chemistry Research. CRC Press, Florida. ISBN: 978 1 4200 5323 4, pp:10-29.‑ ‑ ‑ ‑  Sasikumar, M., Ramani, S., Raman, S. M., Anjaneyulu, K., and Chandrasekar, R., 2007. A Practical Introduction to Rule Based Expert Systems. Narosa Publishers, New Delhi. pp:29-30
  • 16. References (3) Company Logo  Russell, S., & Norvig, P., 2010. Artificial Intelligence : A Modern Approach. 3rd Ed. Pearson Education Inc, New Jersey. ISBN: 978-0-13-604259-4, pp:240  Siller, W., & Buckley, J. J. (2005). Fuzzy Expert Systems and Fuzzy Reasoning. New Jersey: John Wiley & Sons, Inc