A web-based decision support system to select proper machinery size and tractor power
A web-based decision support system to select proper machinery size and tractor power
One of the most important key factors for efficient and profitable agricultural production is agricultural mechanization. Since agricultural mechanization system expenses are nearly 30% of an agricultural enterprise investment, the mechanization system should be planned very carefully. Since internet technologies have spread into all areas, including agriculture, a web-based decision support system (DSS) was developed to plan an agricultural machinery system to be used in Turkey s farm enterprises. The developed DSS was written in PHP and the databases were created using the MySQL database administration system. Several tables to select proper machine size and tractor power, including tractor test report data, technical data of the machines produced in Turkey, field work days for Turkey s climatic conditions, and typical working speed and efficiencies of the machines, were included in the databases. For the areas over 10 ha surveys were done for collecting data according to main production and machinery commonly used. Average daily working time data were also estimated. By conducting simulations using the developed DSS based on the survey data, for the machines that are used for producing the most common products in the Adana region, machinery fleets were created and tractor power sizes were selected. According to the results, for farms smaller than 40 ha, one tractor of less than 157 kW would be sufficient, and for the areas that are over 40 ha, two or three tractors would be sufficient to complete the agricultural activities in an effective amount of time.
___
- ASABE (2011). Agricultural Machinery Management Data. ASABE Standards ASAE D497.5 MAR2011. St. Joseph, MI, USA: American Society of Agricultural and Biological Engineers.
- Druzdel MJ, Flynn RR (2010). Decision Support Systems. Encyclopedia of Library and Information Science. 3rd ed. New York, NY, USA: Taylor & Francis.
- Grisso RD, Perumpral JV, Zoz FM (2007). Spreadsheet for matching tractors and drawn implements. Appl Eng Agric 23: 259-265.
- Grisso R, Vaughan DH, Perumpral JV, Roberson GT, Pitman R, Hoy RM (2009). Using Tractor Test Data for Selecting Farm Tractors, Communications and Marketing. Blacksburg, VA, USA: College of Agriculture and Life Sciences, Virginia Polytechnic Institute and State University.
- Iowa State University (2009). Farm Machinery Selection. Ag Decision Maker. File A3-28. PM 952. Ames, IA, USA: Iowa State University.
- Loghmanpour Zarini R, Akram A, Alimardani R, Tabatabaekoloor R (2013). Development of decision support software for matching tractor-implement system used on Iranian farms. Am J Eng Res 2: 86-98.
- Mehta CR, Singh K, Selvan MM (2011). A decision support system for selection of tractor-implement system on Indian farms. J Terramechanics 48: 65-73.
- Sındır, KO, Evcim, Ü, Soğancı, A (1997). Tarla İşlemlerinde Çalışılabilir Gün Olasılıkları Rehberi. Ankara, Turkey: T.C. Başbakanlık Köy Hizmetleri Genel Müdürlüğü A.P.K. Dairesi Başkanlığı, Toprak ve Su Kaynakları Araştırma Şube Müdürlüğü.
- Zoz FM, Turner RJ, Shell LR (2002). Power delivery efficiency: a valid measure of belt and tire tractor performance. T ASAE 45: 509- 518.