MIS for Indian Agriculture
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Transcript of MIS for Indian Agriculture
MIS In Agriculture
Introduction
Strengths
ThreatsOpportunity
Weakness
•Every day need of people.•Subsidy on fertilizers .•Government’s initiation to support kiosk for every 10 kms.
•Poor storage facility•Poor market for selling farmer’s products.•Farmers unaware of the suitable crop for their land and fertilizers required.
•Increasing population growth fuelling the need for agricultural products.•Government’s proposal to come up with soil card enables farmers know the right fertilizers required for their land.•Government’s support for fertilizer industries in India.
•Unpredictable weather condition.•Excessive use of chemical fertilizers and pesticides degrading the soil quantity.
Assumptions about the client
• We assume the farmer to be of upper middle class . •Like many farmers he is unaware of the right quantity of fertilizers required for the crop.•Like in many part of India, we assume rain is uncertain even at his location.•Like many farmers in India, we assume our farmer is facing issues in selling his agricultural products at a right market at an appropriate price. •The farmer can access the kiosks to get weather and other information.
Assumptions & Stakeholders Analytics
Seeding, Watering &
Fertililization
Harvesting & Returns
FinanceRe-
engineering & Technology
SWOT Analysis
Assumptions & Stakeholders Analytics
Seeding, Watering &
Fertililization
Harvesting & Returns
FinanceRe-
engineering & Technology
• Equipment manufacturers• Government / dealers purchasing our farm products.• Technology facilitators. • Bank and other micro financial bodies.
Stake holders :
Climatic condition
Crop decision
Agricultural Model
Water availability
Soil
Pest and fertilizer utilization
Forecasted with the aid of Analytics
Government profiling of soil (soil card)
Scientific farming via social
Sales of agricultural product Warehousing
Mobile based devices
MIS
How MIS can help
•Using MIS technology, farmer can get to know the on going price in the market. Accordingly he can assess the selling price.•Farmer can also get to know as where he can get a better price. So he can sell at the particular dealer/ location.•He can get to know the forecast of the weather and plan cultivation accordingly.•Use mobile call centre facility provided by government on the usage of fertilizers using MIS facilities.•Government’s plan of having kiosks at a distance of 10kms from one another can be tapped to get information of weather forecast/ rain fall expected, possible pesticides for fungal/ bacterial infections for crops.
Assumptions & Stakeholders Analytics
Seeding, Watering &
Fertililization
Harvesting & Returns
FinanceRe-
engineering & Technology
Weather forecasting : Predictive Analytics
Present data
Previous forecast
Time
Quality control
Assimilation of Data
Forecast run
Post Processing
Forecast weather
Forecasting Model
•Collect the data for the present which has been forecasted before .
•Quality control eliminates the measurements of the observed which are lying significantly higher / lower than that of the observed value. These if included affects our future forecast because they are outliers.
•We then properly format the data required for forecasting.
•Setting the boundary conditions in which our forecast will be consistent.
•Running the forecast.
Assumptions & Stakeholders Analytics
Seeding, Watering &
Fertililization
Harvesting & Returns
FinanceRe-
engineering & Technology
Content Management System
Agriculture KiosksInfrastructure support
Cloud service
Bank/ micro financial agencies
Tractor/ machine providers
Pesticide / fertiliser provider
Government/ purchasing dealers
Other farmers
•The key entity in CMS model for agriculture is interaction of farmers with kiosk. Here farmers can come and access the computer placed in kiosk and get information on weather forecast, new technology in agriculture , updates on general agriculture practices.
•Farmers purchase fertilisers/ pesticides and other chemicals required for agriculture. They also purchase tractors or take it for lease for a stipulated period of time.
•Short- term loans for operational activities and long-term loans for fixed asset / equipment purchase are financed by banks and other micro economic institutes.
•Government purchase a good percentage of agricultural price at a reasonable price . In addition to this, even many private dealers/ procurers also purchase agricultural products from the farmers.
DBMS
Assumptions & Stakeholders
AnalyticsSeeding, Watering
Fertililization
Harvesting & Returns
Marketing FinanceRe-
engineering & Technology
Decision Support System : Seeding
Database Management System ()
Analysis for decision making
Meteorological data
Market demand and variation in price
Dealer’s status
Soil Test outcome
Ploughing of land Seeding
•They abstract data and information to a higher level to enable decision making.
•Government provides soil cards to each farmers to assess their soil quality, fertilisers suitable for a particular crop in their farm land. With this farmers would have a list of suitable crops cultivable in their plot.
•Using Social model of SMAC technology, farmers can interact with one another and their by can get to know the changing demands and cultivate crops accordingly to maximize their profits.
•Farmers can access the weather conditions by accessing the service offered in kiosks. By this , they can plan cultivation accordingly.
•Farmers can also have a co-operative understanding with the dealers. As and when the dealer’s stock is about to get depleted, farmers can be messaged the need for the product. This reduces the overall overhead involved (eg : Increased warehousing can be minimised.)
Water availability
Assumptions & Stakeholders
AnalyticsSeeding, Watering
Fertililization
Harvesting & Renture
Marketing FinanceRe-
engineering & Technology
Decision Support System : Harvesting time
Database Management System (DBMS)
Analysis for decision making
Meteorological data
Market demand and variation in price
Dealer’s status
Pathogenic break breakthrough
Plucking scheduling Replenishment scheduling
•The availability of storage facility for the agricultural produce is a major influencing factor for appropriate harvesting period.•Mobile communication between dealers and farmers to dynamically inform requirement / scarcity. •Market’s demand for the product at the earliest. •If their is a pathogenic outbreak , then their is a high probability of the crops getting infected. So if their is an infection outbreak, then harvesting at the earliest is very essential.
•Based on the above mentioned considerations, we can predict the appropriate harvesting time.
Warehouse availability
Resource availability
Market
Assumptions & Stakeholders
AnalyticsSeeding, Watering
Fertililization
Harvesting & Renture
Marketing FinanceRe-
engineering & Technology
CLOUD
BIG DATA
Warehouse Availability
Current Market Requirement
Population and food requirement
forecastAnalytics
Market needs for produce
Warehouse planning
• Sharing of warehouses – Farmers having partly empty or empty warehouses can utilize the space by renting it to farmers having excess farm produce.
• Current Market requirements can put into the cloud by the government for optimum farm produce.
• Population forecast by the government and other agencies will lead to not having unnecessary farm produce.
• All these will be stored in the bigdatawhich will be in the cloud.
• Analytics will be done on them to provide the end producers – farmers in an optimum level. For any excess produce which is due to wrong production can be put in the warehouse for future use or for export.
Current problems:-• Excess produce• No warehouse for excess capacities• Distribution of farm produce
Assumptions & Stakeholders
AnalyticsSeeding,
Watering & Fertililization
Harvesting & Returns
Marketing FinanceRe-
engineering & Technology
SCM in agriculture
• Using the kiosks for farmers the farm produce can be put in the cloud.
• The processors can accordingly pick up the farm produce and put them to distributors and distributors to retailers .
• The penultimate customers-retailers can order the farm produce after checking the data
from the cloud.• Processors will collect from
multiple farmers and distribute to multiple distributors .
Farmer
Village TraderCommission
AgentFarmer’s market
Wholesaler
Exporter Retailer Consumer
Marketing channels for onions in Tamil Nadu
Assumptions & Stakeholders
AnalyticsSeeding, Watering
Fertililization
Harvesting & Renture
Marketing FinanceRe-
engineering & Technology
Currency exchange rate
Current market price
Present food stock in domestic &foreign
countries
CLOUD
BIGDATA
Analytics
Time to Market Price to pitch in with
• Rupee to dollar exchange rate is included in system.
• The current market price in the foreign markets is also feed in to have a holistic view.
• The current food stock in the world is feed in to make the farmers get a right time to market and also the right time to pitch in to sell their produce.
SMAC in ERP – SAP-HANA
• SAP- HANA will be implemented for the same.
- Real time business- Smarter and faster service- Single platform
• Data will be cascaded to the end users through mobile phones and Kiosks
• Kiosks will be used as an input for the queries and concerns from the farmers
• The outer layer will be the user driven experience which will encompass the SAP Business suit.
• The entire Analytics will be done in the SAP Business suit.
• The entire data will be stored in the cloud for real time processing.
Banking
Information system.
• For a quicker approach for harvesting
• Buying the right pesticide for the crop
• Pre approved micro finance available from the bank.
• Data exchange is enabled between the two systems.
AIS
CLOUD
Time to harvest
Types of Fertilizers needed
Time to market
Analytics on fund management
BIS and AIS Connection
AIS and EIS connection
AIS
Analytics in data
EIS(Education Information System)
CLOUD
DARE ICAR
CLOUD
• DARE- Department Of Agriculture and Education will conduct education sessions for the farmers .
• Members of DARE can have live projects enabling a symbiotic environment with the farmers.
• ICAR- Indian Council for Agricultural Research will provide innovative ways for farming.
• Data from AIS about the farmers will be sent to EIS for more data analytics.
Quality Issues
Assurance Issues High level of automation from HANA drives cost savings , staff efficiency and round the clock quality assurance
Testing Issues Validity of data is being checked . Mainly done by predictive analysis from the past data.
Business Process Model
Government bodies
Private Dealers
BPM Suite
Final agriculture product
Interfaces
Interfaces
Fertilizer provider
Pesticides provider
Agricultural equipments provider
Cloud Service providers
Information from KaoiskAgricultural updates/
information
Farmers
Internal / External users
Work flow application services
Harvesting
Weeding
Irrigation
SeedingPloughing
Enterprise Architecture
Work flow model
Yield
Seed
Fertilizers
Pesticides
MIS input (From Kiosks / SMAC )
Sell
Pests Loss
Post-harvest Loss
Business Location System
MIS input from other farmers
Seeds
Pesticides
Fertilizers
Kiosks inputs (MIS)
Farmer / cultivation Warehouse
Other farmers (MIS)
Wholesaler/ government
/ village market
Retailers/ local
shops
Export
Collect trends (MIS)
Enterprise Architecture
References
•http://www.intechopen.com/books/climate-change-and-regional-local-responses/forecasting-weather-in-croatia-using-aladin-numerical-weather-prediction-model#F1•http://tnau.ac.in/eagri/eagri50/HORT381/pdf/lec05.pdf•http://www.imd.gov.in/section/nhac/dynamic/endofseasonreport.pdf•http://www.imdpune.gov.in/endofseasonreport2013.pdf•http://www.imd.gov.in/section/nhac/dynamic/monsoon_report_2011.pdf•http://www.tropmet.res.in/~kolli/MOL/Monsoon/year2010/Monsoon-2010.pdf•http://www.imd.gov.in/section/nhac/dynamic/endseasonreport09.pdf•http://www.tropmet.res.in/~kolli/MOL/Monsoon/year2008/Monsoon-2008.pdf•http://www.tropmet.res.in/~kolli/MOL/Monsoon/year2007/Monsoon-2007.pdf•http://reliefweb.int/report/india/india-meteorological-department-southwest-monsoon-2005-end-season-report•http://www.imd.gov.in/section/nhac/dynamic/endofmonsoon.htm
Thank you