Open Access

Factors Affecting the Adoption of Agricultural Automation Using Davis’s Acceptance Model (Case Study: Ardabil)


Cite

ADEBIYI, S. – EKONOLA, J. 2010. Factors affecting adoption of cocoa rehabilitation techniques in Oyo State of Nigeria. In World Journal of Agricultural Sciences, vol. 9, no. 3, pp. 258–265.Search in Google Scholar

AKUDUGU, M. – GUO, E. – DADZIE, S. 2012. Adoption of modern agricultural production technologies by farm households in Ghana: What factors influence their decisions? In Journal of Biology, Agriculture and Healthcare, vol. 2, no. 3.Search in Google Scholar

AMEN, U. 2010. Consumer attitude towards mobile advertising. In Interdisciplinary Journal of Contemporary Research in Business, vol. 70, no. 3, pp. 75–104.Search in Google Scholar

BELOEV, I. H. 2016. A review on current and emerging application possibilities for unmanned aerial vehicle. In Acta Technologica Agriculturae, vol. 19, no. 3, pp. 70–76.Search in Google Scholar

BIAŁY, W. – ŽARNOVSKÝ, J. 2017. Acquiring EU funds for the development of research potential of enterprises as a method for developing smart specialisations. In Acta Technologica Agriculturae, vol. 20, no. 2, pp. 46–51.Search in Google Scholar

BONABANA-WABBI, J. 2002. Assessing Factors Affecting Adoption of Agricultural Technologies: The Case of Integrated Pest Management (IPM) in Kumi District. MSc. Thesis, Eastern Uganda. Available at: http://hdl.handle.net/10919/36266Search in Google Scholar

CALLUM, K. M. – JEFFREY, L. – KINSHUK. 2014. Comparing the role of ICT literacy and anxiety in the adoption of mobile learning. In Computers in Human Behavior, vol. 39, pp. 8–19.Search in Google Scholar

CHONG, A. – OOI, K. – TAN, B. 2010. Online banking adoption: an empirical analysis. In International Journal of Bank Marketing, vol. 28, pp. 267–287.Search in Google Scholar

DAVIS, F. D. 1989. Perceived usefulness, perceived ease of use, and user acceptance of information technology. In MIS Quarterly, vol. 13, no. 3, pp. 319–340.Search in Google Scholar

DOSS, C. R. 2003. Understanding Farm Level Technology Adoption: Lessons Learned from CIMMYT’s Microsurveysin Eastern Africa. CIMMYT Economics Working Paper 03–07. Mexico, D.F.: CIMMYT.Search in Google Scholar

EBRAHIMI, A. – BIZHNI, M. – SEDIGHI, H. 2017. Acceptance of nuclear technology in the field of agriculture: Application of DTBP and UTAUT theories. In The Second National Congress on the Development and Promotion of Iranian Agricultural Engineering and Soil Science, May 27, Tehran, Iran. (In Farsi)Search in Google Scholar

GOODARZI, A – SADEGHI FARD, S. 2014. Intelligence and the place of industrial automation in agriculture. In The Second National Agricultural and Sustainable Natural Resources Conference, July, Tehran, Iran. (In Farsi)Search in Google Scholar

KARIYASA, K. – DEWI, A. 2011. Analysis of factors affecting adoption of integrated crop management farmer. In International Journal of Food and Agricultural Economics, vol. 1, no. 2, pp. 29–38.Search in Google Scholar

KARUGIA, S. – BALTENWECK, I. – WAITHAKA, M. – MIANO, M. – NYIKAL, R. – ROMNEY, D. 2004. Perception of technology and its impact on technology uptake: The case of fodder legume in central Kenya highlands. In The Role of Social Scientists Proceedings of the Inaugural Symposium, 6–8 December, Grand Regency Hotel, Nairobi, Kenya.Search in Google Scholar

KEELAN, C. – THORNE, F. – FLANAFAN, P. – NEWMAN, C. 2014. Predicted willingness of Irish farmers to adopt GM. In Journal of Economics and Sustainable Development, vol. 12, pp. 208–216.Search in Google Scholar

KREJCIE, R. V. – MORGAN, D. W. 1970. Determining sample size for research activities. In Educational and Psychological Measurement, vol. 30, pp. 607–610. Available at: https://doi.org/10.1177/00131644700300030810.1177/001316447003000308Search in Google Scholar

KIM, H. W. – CHAN, H. C. – GUPTA, S. 2007. Value-based adoption of mobile internet: an empirical investigation. In Decision Support System, vol. 43, pp. 111–126.Search in Google Scholar

LOTFI, A. – BAKHSHAYESHI, M. 2010. Investigating the factors affecting e-library acceptance. In Fifth National Conference and Second International Conference on E-Learning and Education, Tehran.Search in Google Scholar

LIU, S. – LIAO, H. – PRATT, J. A. 2009. Impact of media richness and flow on e-learning technology acceptance. In Computers & Education, vol. 52, pp. 599–607.Search in Google Scholar

MALTE, N. – ROSSI, M. – TUUNIAINEN, V. – OORNI, A. 2008. An empirical investigation of mobile ticketing service adoption in public transportation. In Personal and Ubiquitous Computing, vol. 12, pp. 57–65.Search in Google Scholar

MANSOUR, I. H. – ELJELLY, A. M. – ABDULLAH, A. M., 2017. Consumers‘ attitude towards e-banking services in Islamic banks: the case of Sudan. In Review of International Business and Strategy, vol. 26, no. 2, pp. 244–260.10.1108/RIBS-02-2014-0024Search in Google Scholar

MASOUDI, H. 2016. A new ground for innovating and developing entrepreneurship in the animal husbandry. In Entrepreneurship Journal in Agriculture, vol. 2, no. 3, pp. 256–273. (In Farsi).Search in Google Scholar

MIGNOUNA, B. – MANYONG, M. – RUSIKE, J. – MUTABAZI, S. – SENKONDO, M. 2011. Determinants of adopting imazapyr-resistant maize technology and its impact on household income in western Kenya. In AgBioforum, vol. 14, no. 3, pp. 158–163.Search in Google Scholar

MOMENI, M. – QIYOMI, A. 2017. Statistical Analysis Using SPSS. Negarandedanesh publication.Search in Google Scholar

OKUNLOLA, O. – OLUDARO, O. – AKINWAERE, B. 2011. Adoption of new technologies by fish farmers in Akure, Ondo. In Journal of Agricultural Technology, vol. 7, no. 6, pp. 1539–1548.Search in Google Scholar

PARK, Y. – CHEN, J. V. 2007. Acceptance and adoption of the innovative use of smartphone. In Industrial Management & Data Systems Information, vol. 107, no. 9, pp. 1349–1365.Search in Google Scholar

PUTLER, D. S. – ZILBERMAN, D. 1988. Computer Use in Agriculture: Evidence from Tulare County, California.10.2307/1241920Search in Google Scholar

ROBERTS, K. – ENGLISH, B. – LARSON, J. – COCHRAN, R. – GOODMAN, W. – LARKIN, S. – MARRA, M. – MARTIN, S. – SHURLEY, W. – REEVES, M. 2004. Adoption of site-specific information and variable-rate technologies in cotton precision farming. In Journal of Agricultural and Applied Economics, vol. 36. no. 1, pp. 143–158.Search in Google Scholar

SAGHAFI, F. – MOGHADDAM, E. N. – ASLANI, A. 2017. Examining effective factors in initial acceptance of high-tech localized technologies: Xamin, Iranian localized operating system. In Technological Forecasting and Social Change, vol. 122, pp. 275–288.Search in Google Scholar

SCHUELLER, J. K. 2006. Applied machine vision of plants: a review with implications for field deployment in automated farming operations. In Intelligent Service Robotics, vol. 3, no. 4, pp. 209–217.Search in Google Scholar

SHIRMOHAMMADI, M. 2004. Development of Technology Acceptance Model (TAM) and its Testing at the Ministry of the Interior. MSc. thesis, Tehran University (In Farsi).Search in Google Scholar

SIREGAR, J. J. – PUSPOKUSUMO, R. A. W. – RAHAYU, A. 2017. Analysis of affecting factors technology acceptance model in the application of knowledge management for small medium enterprises in industry creative. In Procedia Computer Science, vol. 116, pp. 500–508.Search in Google Scholar

SREEKANTHA, D. K. 2016. Automation in agriculture. In International Journal of Engineering Science Invention Research & Development, vol. 2, no. 6, pp. 458–472.Search in Google Scholar

SSERUNKUUMA, D. 2005. The adoption and impact of improved maize and land management technologies in Uganda. In The Electronic Journal of Agricultural and Development Economics, Food and Agriculture Organization of the United Nations, vol. 2, no. 1, pp. 67–84.Search in Google Scholar

TORABI, A. – MALEKI, A. – ISHAG BEIGI, A. 2014. The importance and position of the robot in the modern agriculture. In The Second National Conference on Agricultural Engineering, Environment and Sustainable Natural Resources, March 20, Tehran, Iran (In Farsi).Search in Google Scholar

TURNER, M. – KICHENHAM, B. – BRERETON, P. – CHARTERS, S. – BUDGEN, D. 2010. Does the technology acceptance model predict actual use? A systematic literature review. In Information and Software Technology, vol. 52, no. 5, pp. 463–479.Search in Google Scholar

VENKATESH, V. – DAVIS, F. D. 2000. A theoretical extension of the technology acceptance model: Four longitudinal field studies. In Management Science, vol. 46, no. 2, pp. 186–204.Search in Google Scholar

VERKANTESH, V. – MORRIS, M. G. – DAVIS, G. B. – DAVIS, F. D. 2003. User acceptance of information technology: Toward a unified view. In MIS Quarterly, vol. 27, no. 3, pp. 425–478.Search in Google Scholar

VERMA, P. – SINHA, N. 2018. Integrating perceived economic wellbeing to technology acceptance model: The case of mobile based agricultural extension service. In Technological Forecasting and Social Change, vol. 126, pp. 207–216.Search in Google Scholar

WAFAEI, N. 2009. Identifying and Prioritizing Factors Affecting Adoption of Mobile Banking from the Point of View of Customers (Case Study: National Bank of Iran Branches in Tehran). MSc. thesis, Tarbiat Modares University, Tehran (In Farsi).Search in Google Scholar

YADAV, R. – PATHAK, G. 2016. Determinants of consumers‘ green purchase behavior in a developing nation: Applying and extending the theory of planned behavior. In Ecological Economics, vol. 134. pp. 114–122.Search in Google Scholar

eISSN:
1338-5267
Language:
English
Publication timeframe:
4 times per year
Journal Subjects:
Engineering, Introductions and Overviews, other