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Agriculture Ministry India

Data Warehouse And Its Applications In Agriculture Based On Rajasthan State
Data Warehouse And Its Applications In Agriculture Based On Rajasthan State
Mr Felix Deepak Minj [HOD Dept. of IT, Shekhawati Group of Institutions, Sikar]
Introduction
A Data warehouse is a repository of integrated information, available for queries and analysis. Data and information are extracted from heterogeneous sources as they are generated. This makes it much easier and more efficient to run queries over data that originally came from different sources. In other words Data warehouse is a database that is used to hold data for reporting and analysis.
A data warehouse is a single, complete and consistent data archive, extracted from different sources and made available to end-users in a form understandable and usable to them in the context of the business. A data warehouse consists of a set of subject-oriented, integrated, permanent, time-dependent data providing support to managerial decision-making.
Economic foundation and productivity growth depends on agricultural sectors. Agriculture is the driving force behind the way of live and source of earnings for the majority of peoples. More than 60 percents of population are living in rural areas and the majority are farmers. The rural communities as a main producer for country food productivity and food security earn only 11 percents of Gross Domestic Product (GDP). The arrival of information age guides this country to new development strategies.
National Electronics and Computer Technology Center (NECTEC) in collaboration with the Ministry of Agriculture, has launched “Agriculture Information Network” as a response to the unmet information requirements of the agricultural sector. Farmers should gain benefit from the contents provided which include risk assessment, agriculture warning system and agricultural knowledge base, which aim to improve technology, productivity, income and stability of India Agriculture Sector through the age of Information Technology. The data warehouse consists of common databases and geo-spatial databases from various departments and organizations in the country and abroad. Farmers can get access to the contents through Internet by themselves or from groups of professional people called “Information Brokers”.
Abstract:
First step towards understanding any agricultural system is the comprehension of relationships between the system and numerous physical, chemical and biological factors influencing it. Any decision regarding such systems requires analytical exploration of the involved data. The exploration task is to be supported by an efficient data storage and retrieval mechanism. In this paper we have presented the case of an Agri data warehouse for this purpose. We have briefly discussed the process we adopted for establishing the data warehouse encompassing pest, pesticide and metrological data. We have also shown how implementing an OLAP tool on top of the Agri data warehouse resulted in interesting findings from a decision support point of view.
Methodology
The information system will consist of several integrated sub-systems for input, storage, retrieval, analysis and output based on strong database design with its essential functions. Besides this it will include other functions such as manipulation and dissemination of information to various users. The information system, composed of set of files for use in a RDBMS and GIS will be capable of delivering accurate, useful and timely information to various applications. Design of spatial and non-spatial database will have specifications of different data fields, their logical array and inter-relationship with subsystem database.
Data warehouse
Data warehouse is a repository of an organization’s electronically stored data. Data warehouses are designed to facilitate reporting and analysis. This definition of the data warehouse focuses on data storage. However, the means to retrieve and analyze data, to extract, transform and load data, and to manage the data dictionary are also considered essential components of a data warehousing system. Many references to data warehousing use this broader context. Thus, an expanded definition for data warehousing includes business intelligence tools, tools to extract, transform, and load data into the repository, and tools to manage and retrieve metadata.
A data warehouse is used for answer any ad_hoc, complex, statistical or analytical queries. Data warehouse is situated at the center of a decision support system (DSS) of an organization. Data warehouse stores integrated historical data both summarized and detailed information for organization
Benefits of data warehousing
Some of the benefits that a data warehouse provides are as follows:
- A data warehouse provides a common data model for all data of interest regardless of the data’s source. This makes it easier to report and analyze information than it would be if multiple data models were used to retrieve information such as sales invoices, order receipts, general ledger charges, etc.
- Prior to loading data into the data warehouse, inconsistencies are identified and resolved. This greatly simplifies reporting and analysis.
- Information in the data warehouse is under the control of data warehouse users so that, even if the source system data is purged over time, the information in the warehouse can be stored safely for extended periods of time.
- Because they are separate from operational systems, data warehouses provide retrieval of data without slowing down operational systems.
- Data warehouses can work in conjunction with and, hence, enhance the value of operational business applications, notably customer relationship management (CRM) systems.
- Data warehouses facilitate decision support system applications such as trend reports (e.g., the items with the most sales in a particular area within the last two years), exception reports, and reports that show actual performance versus goals.
Data mart
A data mart is a subset of an organizational data store, usually oriented to a specific purpose or major data subject, that may be distributed to support business needs. Data marts are analytical data stores designed to focus on specific business functions for a specific community within an organization. Data marts are often derived from subsets of data in a data warehouse, though in the bottom-up data warehouse design methodology the data warehouse is created from the union of organizational data marts.
A data mart is a data repository that may or may not derive from a data warehouse and that emphasizes ease of access and usability for a particular designed purpose. In general, a data warehouse tends to be a strategic but somewhat unfinished concept; a data mart tends to be tactical and aimed at meeting an immediate need.
There can be multiple data marts inside a single corporation; each one relevant to one or more business units for which it was designed. Data marts may or may not be dependent or related to other data marts in a single corporation. If the data marts are designed using conformed facts and dimensions, then they will be related. In some deployments, each department or business unit is considered the owner of its data mart including all the hardware, software and data. This enables each department to use, manipulate and develop their data any way they see fit; without altering information inside other data marts or the data warehouse. In other deployments where conformed dimensions are used, this business unit ownership will not hold true for shared dimensions like customer, product, etc.
Reasons for creating a data mart
- Easy access to frequently needed data
- Creates collective view by a group of users
- Improves end-user response time
- Ease of creation
- Lower cost than implementing a full Data warehouse
- Potential users are more clearly defined than in a full Data warehouse
OLAP:
OLAP allows business users to slice and dice data at will. Normally data in an organization is distributed in multiple data sources and are incompatible with each other. A retail example: Point-of-sales data and sales made via call-center or the Web are stored in different location and formats. It would a time consuming process for an executive to obtain OLAP reports such as – What are the most popular products purchased by customers between the ages 15 to 30?
Part of the OLAP implementation process involves extracting data from the various data repositories and making them compatible. Making data compatible involves ensuring that the meaning of the data in one repository matches all other repositories. An example of incompatible data: Customer ages can be stored as birth date for purchases made over the web and stored as age categories (i.e. between 15 and 30) for in store sales.
It is not always necessary to create a data warehouse for OLAP analysis. Data stored by operational systems, such as point-of-sales, are in types of databases called OLTPs. OLTP, Online Transaction Process, databases do not have any difference from a structural perspective from any other databases. The main difference, and only, difference is the way in which data is stored.
OLAP can be a valuable and rewarding business tool. Aside from producing reports, OLAP analysis can aid an organization evaluate balanced scorecard targets.
Steps in the OLAP Creation Process
Agriculture Information System Network (AGRISNET):
Department of Agriculture and Cooperation (DAC) have taken steps to establish “Agricultural Information System Network (AGRISNET)” in collaboration with NIC. The Proposal recommends (i) the state-of-the-art IT infrastructure requirements to establish AGRISNET as the INTRANET over NICNET, (ii) development of databases and information systems for decision support for evaluation, monitoring and policy formulations, and (iii) human resources development, (iv) multi-media based training and demonstration of transfer of technology to strengthen Farm Research and Education using broadcast VSATs, (v) special interest groups in respect of subjects, problems, programmes, schemes, etc, and above all, to make Indian Agriculture on-line for INTERNET and INTRANET access through AGRISNET Nodes.
Geo_Phisical Setting of Rajasthan:
Rajasthan situated in the north_western part of India between 23o3’ and 30o12’ north latitudes and 69o30’ and 78o17’ east longitudes, is surrounded in north and west by Pakistan, in north_east by Panjab, Haryana and Uttar Pardesh, in south_east by Madhya Pradesh and in south_west Gujarat.
Area of 3.42 lakh sq. km. makes the state the first largest in the country having population density 165 persons per sq. km.
Aravalli Hills stretching from north_east to south_west from the most conspicuous geo physical features of the state.
Agriculture scenario of Rajasthan:
Rajasthan is predominantly agrarian state with about 70 percent of the population depending on agriculture and allied activities. Agriculture plays an important role in State economy with large contribution in State Domestic Product (SDP) viz. about 27 to 32 percent of the Gross State Domestic Product. At present, less than one fourth of the State’s area is under irrigation. The gross cropped area has been fluctuating from year to year depending on the monsoon conditions.
Land Utilization
(Area in ,000 Hect.)
Table 1.
Sl.No.
Calssification
Year
1
2002-03
2003-04
2004-05
2005-06
2
Reporting area for land utilization purpose
34266.378
34266.151
34266.092
34266.09
3
Forest
2651.014
2660.6
2660.816
2674.961
4
Area not available for cultivation(4+5)
4278.953
4259.109
4266.913
4262.26
5
Area put to non agricultural uses
1764.582
1760.266
1775.987
1823.361
6
Barren & un-culturable land
2514.371
2498.843
2490.926
2438.899
7
Total cropped area
13217.538
21664.039
21062.486
21699.348
Cropwise Irrigated Area
(Area in ,000 Hectares)
TABLE 2
2002-03
2003-04
2004-05
2005-06
(A) FoodGrain Crops
2612.071
2913.67
2825.294
3133.512
I. Cereals
2222.194
2452.542
2442.652
2713.854
(a) Kharif Cereals
244.032
202.223
292.841
414.405
1.Rice
41.808
43.257
35.788
43.352
2. Jowar
3.666
3.385
2.883
2.919
3. Bajra
183.277
141.901
224.431
320.823
4.Maize
15.179
13.653
29.701
47.28
5. Small Millets
0.102
0.027
0.038
0.031
(b) Rabi Cereals
1978.162
2250.319
2149.811
2299.449
1. Wheat
1794.545
2076.821
1983.247
2103.466
2. Barley
183.614
173.427
166.33
195.267
3. Small Millets
0.003
0.071
0.234
0.716
II. PULSES
389.877
461.128
382.642
419.658
(a) Kharif Pulses
32.758
37.744
19.715
20.198
1. Tur
0.596
0.198
0.79
0.79
2. Other Kharif Pulses
32.162
37.546
18.925
19.408
(b) Rabi Pulses
357.119
423.384
362.0927
399.46
1.Gram
341.108
394.842
329.504
363.483
2. Other Rabi Pulses
16.011
28.542
33.423
35.977
(B) OilSeeds
1262.561
1986.422
3012.988
3360.565
(a) Kharif oilseeds
146.795
170.32
296.769
416.73
1. Groundnut
118.458
114.833
169.666
226.593
2. Sesamum
8.573
4.315
6.321
8.814
3. Castorseed
16.707
49.326
74.831
96.73
4. Soyabean
3.057
1.846
45.951
84.593
(b) Rabi Oilseeds
1115.766
1816.102
2716.219
2943.835
1. Rape & Mustard
1104.898
1803.89
2705.807
2935.567
2. Linseed
0.618
1.168
2.314
0.61
3. Taramira
10.166
10.81
11.818
7.277
4. Others
0.084
0.234
280
0.381
© Fibres
366.332
326.404
413.452
447.145
1. Cotton
366.318
326.391
413.427
447.124
2. Sanhemp
0.014
0.013
0.025
0.021
3.Mesta
0
0
0
0
(D) Sugarcane
9.668
5.539
5.524
7.643
(E) Condiments & Spices
519.193
571.812
400.623
332.814
1.Dry Chilies
18.411
25.03
25.92
17.394
2. Ginger
0.181
0.134
0.086
0.103
3.Turmeric
0.129
0.091
0.091
0.08
4.Coriander
110.322
233.438
145.421
134.902
5.Cuminseed
321.09
226.775
159.24
134.983
6.Ajwain
0.008
0.011
0.006
0.018
7. Garlic
20.896
22.528
20.604
13.441
8. Saunf
3.626
6.197
4.802
3.804
9. Methi
43.85
56.748
43.751
27.803
10. Other
0.68
0.86
0.702
0.286
(F) Fruits
19.001
20.973
21.417
21.01
(G) Vegetables
75.969
87.579
94.486
100027
1. Potato
3.531
3.84
3.151
40.153
2. Onion
26.348
33.58
42.879
42.518
3. Sweet Potato
1.296
1.601
1.975
1.504
4. Others
44.794
48.558
46.481
51.852
(H) Drug & Narcotics
129.256
108.633
87.199
86.78
1.Tobacco
0.688
0.385
0.546
0.421
2.Others
128.568
108.248
86.653
86.359
(I) Fodder Crops
275.554
369.586
228.09
324.31
1. Guarseed
78.568
177.751
59.812
162.489
2. Other
196.975
191.835
168.278
161.821
(J) Other Crops
2.586
2.659
4.114
4.23
Cropwise Area
(Area in ,000 Hectares)
TABLE 3
2001-02
2002-03
2004-05
2005-06
(A) FoodGrain Crops
12742.92
8627.821
12079.15
12530.78
I. Cereals
9385.652
6824.992
8502.839
9040.687
(a) Kharif Cereals
6924.462
4832.385
6316.95
6714.435
1.Rice
144.378
83.585
101.361
407.492
2. Jowar
614.653
532.393
568.639
592.092
3. Bajra
5129.949
3215.39
4587.712
4993.678
4.Maize
1017.433
983.553
1042.511
1004.963
5. Small Millets
18.049
17.465
16.727
16.21
(b) Rabi Cereals
2461.19
1992.607
2185.889
2326.252
1. Wheat
2287.498
1800.659
2010.241
2123.91
2. Barley
173.664
191.945
175.414
201.626
3. Small Millets
0.028
0.003
0.234
0.716
II. PULSES
3357.272
1802.829
3576.313
3490.097
(a) Kharif Pulses
2352.499
1335.218
2488.817
2363.984
1. Tur
23.805
16.531
16.916
20.388
2. Other Kharif Pulses
2328.694
1318.687
2471.901
2343.596
(b) Rabi Pulses
1004.773
467.611
1087.496
1126.113
1.Gram
969.625
449.68
1036.792
1081.932
2. Other Rabi Pulses
35.148
17.931
50.704
44.181
(B) OilSeeds
3105.618
2448.976
5154.275
5284.44
(a) Kharif oilseeds
1260.897
930.078
1468.348
1615.089
1. Groundnut
242.627
241.832
290.032
320.765
2. Sesamum
316.355
190.479
446.695
422.079
3. Castorseed
45.999
26.117
109.717
127.941
4. Soyabean
655.916
471.65
621.904
744.304
(b) Rabi Oilseeds
1844.721
1518.898
3685.927
3669.351
1. Rape & Mustard
1760.185
1191.466
3286.659
3558.678
2. Linseed
3.89
0.878
3.036
1.422
3. Taramira
80.589
326.443
395.164
106.995
4. Others
0.057
0.111
1.068
2.255
© Fibres
512.243
387.663
439.328
473.053
1. Cotton
510.147
385.685
437.776
471.563
2. Sanhemp
2.068
1.974
1.552
1.49
3.Mesta
0.028
0.004
0
0
(D) Sugarcane
9.06
9.987
5.724
7.922
(E) Condiments & Spices
774.153
534.895
418.201
349.689
1.Dry Chilies
32.694
20.412
28.016
19.247
2. Ginger
0.261
0.181
0.086
0.105
3.Turmeric
0.135
0.131
0.091
0.08
4.Coriander
204.66
112.333
148.334
136.755
5.Cuminseed
381.534
321.201
159.537
135.113
6.Ajwain
11.167
9.429
10.755
12.266
7. Garlic
15.068
20.907
20.605
13.441
8. Saunf
9.539
4.134
4.885
3.895
9. Methi
107.865
43.856
43.778
27.81
10. Other
11.23
2.311
2.114
0.977
(F) Fruits
20.26
19.928
23.043
22.178
(G) Vegetables
87.005
79.585
98.511
104.246
1. Potato
2.448
3.537
3.174
4.153
2. Onion
28.399
26.501
42.924
42.562
3. Sweet Potato
1.203
1.445
2.119
1.55
4. Others
54.955
48.102
50.294
55.981
(H) Drug & Narcotics
109.145
135.526
112.841
106.516
1.Tobacco
0.794
0.808
0.701
0.52
2.Others
108.351
134.718
112.14
105.996
(I) Fodder Crops
3387.475
932.014
2678.754
2768.169
1. Guarseed
2409.948
556.429
1944.348
2444.648
2. Other
977.527
375.585
734.406
323.521
(J) Other Crops
50.428
41.143
52.657
52.351
Conclusions
Analytical exploration of vast amount of agricultural data can best be support by appropriate application of Data Warehousing and OLAP technologies. A Data Warehouse provides efficient and reliable structure of storage for vast amount data while OLAP techniques provide mechanisms for analysis of this data.
References
[1] Data warehouse and its applications in Agriculture, Anil Rai, Indian Agricultural Statistics Research Institute Library Avenue, New Delhi.
[2] Information Technology in Agriculture, S.C. Mittal.
[3] Data Warehousing concepts, Techniques, Products and Applications, C.S.R.Prabhu.
[4] 50 years Agricultural Statistics of Rajasthan, Published form Directorate of Economics and Statistics, Jaipur
[5] Data Ware housing ,C.S.R.Prabhu
[6] Data Mining, Jiawei Han, Micheline Kamber
[7] www.statistical.rajasthan.gov.in
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