Sistem Informasi Peringatan Dini Pengendalian Hama dan Penyakit Tanaman Pangan Berbasis Mobile Computing

Authors

  • Harisno Harisno Bina Nusantara University
  • Wandy Apriyadi Bina Nusantara University
  • Yudiana Herman Bina Nusantara University
  • Tono Tono Bina Nusantara University

DOI:

https://doi.org/10.21512/comtech.v2i2.2848

Keywords:

information systems, early warning, pest, crop diseases, mobile computing

Abstract

Concerning the several pest attacks in Karawang, Cirebon, and Cianjur districts a mobile computing-based information system is built to accelerate the data flow and early warning information to the person in charge at Ministry of Agriculture. Based on interviews and surveys to the locations planted with rice, corn and soybeans some data of the breadth and intensity of pest attack is obtained, used as the basis design for the early warning data structure. The information systems development method refers to the systems development life cycle (SDLC): identification of needs data and information, analysis and system design, testing, implementation and evaluation system. The result is a mobile computing-based information system of pest control and crop disease early warning that can accelerate data and information transmission that the stakeholders in the Ministry of Agriculture can make decisions quickly and correctly.


Dimensions

Plum Analytics

References

Direktorat Perlindungan Tanaman Pangan. (2010). Pedoman Pengamatan dan Pelaporan Perlindungan Tanaman Pangan. Jakarta: Direktorat Jenderal Tanaman Pangan, Kementerian Pertanian RI.

Talukder, Asoke K. (2005). Mobile Computing: Technology, Applications and Service Creation. Toronto: McGraw-Hill.

Turban, Efraim, R. Kelly Rainer, Richard E. Portter. (2006). Introduction to Information Technolog, (6th ed.). Toronto: John Wiley & Sons.

Watson, Hugh J., Houdeshel, G., Rainer, Rex K. (1997). Building Executive Information Systems and Other Decision Support Applications. Toronto: John Wiley and Sons.

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Published

2011-12-01

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Section

Articles
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PDF downloaded 789  .