A simple DSS for potato crop scheduling in Nilgiri hills of Western Ghats
Downloads
Published
Keywords:
Decision support system, Infocrop-potato model, planting date, potential yield.Issue
Section
License

This work is licensed under a Creative Commons Attribution-ShareAlike 4.0 International License.
A decision support tool has been developed for providing information on the optimum time of planting and the likely consequences of early or late planting of potato in about 173 locations of Nilgiris region of Tamil Nadu state in India. This DSS was developed for the most popular variety of the region i.e., Kufri Jyoti, and the choice to select right time of harvest is also incorporated in this DSS by simulating the yields at 100 and 120 days. The tool consists of a database of simulated yield at 100 and 120 days after planting derived through InfoCrop-potato model. This DSS is developed with the database generated using the daily weather data developed through weather generators and the potential yields estimated with the help of InfoCrop-Potato model. These data were generated by running the model under rainfed conditions for five dates of planting using the weather data for each location generated through weather generators. A user interface was developed in Visual Basic to access this database. The DSS developed for the purpose of potato crop scheduling is of great significance, which enables the farmers as well as extension functionaries for taking right decisions on timing the planting and harvesting of potato crop on which the major fraction of Nilgiri's economy depends. The simulated results when compared with the actual data and a good degree of correlation was observed between two.Abstract
How to Cite
Downloads
Govindakrishnan, P.M., Singh, J.P., Lal, S.S. and Panigrahy, S. 2007. A methodology for preharvest predictionof mean potato yield at regional scale using INFOCROP-POTATO model. Potato J. 34: 125-26. Loague, K. and Green, R.E. 1991. Statistical and graphical methods for evaluating solute transport models. Over view and application. J. Contam. Hydrol. 7: 51-73. Magarey, R.D., Travis, J.W., Russo, J.M., Seem, R.C. and Magarey, P.A. 2002. Decision support systems: Quenching the thirst. Pl. Dis. : 1-14. Mayer, D.G. and Butler, D.G. 1993. Statistical validation. Ecol. Modlg. 68: 21-32. Nelson, L.A. 1991. Choosing corn hybrids. NebGuide G79-471, Cooperative Extension Service, Institute of Agriculture and Natural Resources, University of Nebraska, NebraskaLincoln, Lincoln NE. Shashi Rawat, Govindakrishnan, P.M. and Chauhan, R.K. 2012. Climate based delineation of areas suited for production of ware and processing potato in India. Potato J. 39: 75-80. Singh, J.P., Govindakrishnan, P.M., Lal, S.S. and Aggarwal, P.K. 2005. Increasing the efficiency of Agronomy experiments in potato using INFOCROP-POTATO model. Potato Res. 48: -52. Singh, J.P., Govindakrishnan, P.M., Lal, S.S. and Aggarwal, P.K. 2008. INFOCROP-POTATO A model for simulating growth and yield of potato in the Sub-Tropics. CPRI, Shimla, Technical Bulletin, 2008, 30 p. Singh, J.P., Govindakrishnan, P.M., Lal, S.S. and Aggarwal, P.K. 2005. Infocrop-potato: a simulation model for growth and yield in tropics and Subtropics. SWCACIP, New Delhi, Newslett. : 1-2. Singh, J.P., Praharaj, C.S., Lal, S.S., Govindakrishnan, P.M. and Aggarwal, P.K. Parameterization and validation of the INFOCROP-POTATO model. J. Indian Potato Assoc. 30: 57-58. Thomas, R.S. and No'am, Seligman. 2000. Criteria for publishing papers on crop modelling. Field Crop Res. 68: 165-72.
References
Similar Articles
- S. Elain Apshara, Comparative study on clonal and seedling progenies of selected cocoa (Theobroma cacao L.) genotypes , Indian Journal of Horticulture: Vol. 74 No. 02 (2017): Indian Journal of Horticulture
- R. D. Randhe, Murtaza Hasan, D. K. Singh, Pramod Kumar, P Prakash, Economic feasibility of grow bag based cucumber and capsicum cultivation under greenhouse , Indian Journal of Horticulture: Vol. 79 No. 4 (2022): Indian Journal of Horticulture
- Jyoti Devi, Sonia Sood, Vidya Sagar, Deciphering genetics of bell pepper for agro-morphological and quality traits through generation mean analysis , Indian Journal of Horticulture: Vol. 76 No. 04 (2019): Indian Journal of Horticulture
- Reshav Naik, Anil Bhusan, Brajeshwar Singh, Sanjeev Kumar, Sonali Sharma, Rakesh Kumar, Nishant, Enhancing acclimatization of in vitro raised potato seedlings via biological hardening , Indian Journal of Horticulture: Vol. 82 No. 03 (2025): Indian Journal of Horticulture
- S. Brahma, D.B. Phookan, M. Kachari, T. K. Hazarika, K. Das, Performance of capsicum as influenced by bio-regulators and micronutrients inside polyhouse under Assam conditions , Indian Journal of Horticulture: Vol. 67 No. Special Issue (2010): Indian Journal of Horticulture
- N. Kaushik, R.A. Kaushik, Sushil Kumar, K.D. Sharma, O.P. Dhankhar, Comparative performance of some agri-silvi-horti systems with drip irrigation under arid regions , Indian Journal of Horticulture: Vol. 68 No. 01 (2011): Indian Journal of Horticulture
- Rajnish Sharma, Parul Sharma, Assessing genetic variation using arbitrary oligonucleotide markers system in apple genotypes , Indian Journal of Horticulture: Vol. 76 No. 04 (2019): Indian Journal of Horticulture
- Umar Iqbal, Influence of phosphorous and potassium nutrition on growth, yield and fruit quality of Gala Mast apple , Indian Journal of Horticulture: Vol. 78 No. 4 (2021): Indian Journal of Horticulture
- Anuradha ., R.K. Goyal, S.S. Sindhu, A.K. Godara, Effect of PGPR on strawberry cultivation under greenhouse conditions , Indian Journal of Horticulture: Vol. 76 No. 03 (2019): Indian Journal of Horticulture
- I. Sreelathakumary, L. Rajamony, Screening for shade tolerant genotypes of chilli for homestead cultivation , Indian Journal of Horticulture: Vol. 67 No. 01 (2010): Indian Journal of Horticulture
<< < 26 27 28 29 30 31 32 33 34 35 > >>
You may also start an advanced similarity search for this article.
