THE DEVELOPMENT OF A WEBSITE PLATFORM FOR AUTOMATIC PINE TREE CALCULATION

Authors

  • Hafidz Daryansyah Universitas Ibn Khaldun Bogor, Indonesia.
  • Sahid Agustian Hudjimartsu Universitas Ibn Khaldun Bogor, Indonesia.
  • Puspa Eosina Universitas Ibn Khaldun Bogor, Indonesia.

DOI:

https://doi.org/10.53840/ejpi.v12i5.310

Keywords:

Automatic Calculations; Digital Maps; Pine Trees; Waterfalls; Websites

Abstract

Pine forests are the object of this research because they have many benefits both from an economic point of view and an ecological point of view economically. One of the main centers of pine forest population in Indonesia is in West Java, namely in Sukabumi which is located in several districts, including: Sagaranten, Bojong Lopang, Jampang and Pelabuhan Ratu sub-districts. The number of pine trees in an area makes pine forest managers need a lot of time and energy to count the number of trees manually and is also prone to calculation errors. this research will build a website with the title “TreeCount” with the aim of making it easier for the management of pine forest management to calculate the number of existing trees quickly and accurately, besides that it can see the coordinate points of existing trees through a digital map, thus helping management in making decisions for pine forest management. The method used is the waterfall method, this method describes a systematic and sequential approach to software development, which begins with analysis, design, coding, and testing. The result of this research is a website that can perform automatic pine tree calculations quickly according to the uploaded data, making it easier for pine forest managers to manage the calculation of the number of pine trees.

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Published

31-12-2025

How to Cite

THE DEVELOPMENT OF A WEBSITE PLATFORM FOR AUTOMATIC PINE TREE CALCULATION. (2025). E-Jurnal Penyelidikan Dan Inovasi, 12(5), 19-29. https://doi.org/10.53840/ejpi.v12i5.310

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