OIL PATTERN IDENTIFICATION ANALYSIS USING SEMANTIC DEEP LEARNING METHOD from PLEIADES-1B SATELIITE IMAGERY with ARCGIS PRO SOFTWARE (Case Study: Village "a")

Novi Anita, Bangun Muljo Sukojo*, Sondy Hardian Meisajiwa, Muhammad Alfian Romadhon

*Corresponding author for this work

Research output: Contribution to journalConference articlepeer-review

Abstract

There are many petroleum mining activities scattered in developing countries, such as Indonesia. Indonesia is one of the largest oil-producing countries in Southeast Asia with the 23rd ranking. Since the Dutch era, Indonesia has produced a very large amount of petroleum. One of the oil producing areas is "A"Village. There is an old well that produces petroleum oil which is still active with an age of more than 100 years, for now the oil well is still used by the local community as the main source of livelihood. With this activity, resulting in an oil pattern around the old oil refinery, which over time will absorb into the ground. This study aims to analyze and identify the oil pattern around the old oil refinery in the "A"area. The data used is in the form of High-Resolution Satellite Imagery (CSRT), namely Pleiades-1B with a spatial resolution of 1.5 meters. Data were identified using the Deep Learning Semantic method. For the limitation of this research is the administrative limit of XX Regency with a scale of 1: 25,000 as supporting data when cutting the image. The method used is the Deep Learning Convolutional Neural Network series. This research is based on how to wait for the method of the former oil spill which is the consideration of the consideration used. This study produced a land cover map that was classified into 3 categories, namely oil patterns area, area not affected by oil and vegetation. As a supporting value to show the accuracy of the classification results, an accuracy test method is used with the confusion matrix method. To show the accuracy of this study using thermal data taken from the field. Thermal data used in the form of numbers that show the temperature of each land cover. Based on the above reference, a research related to the analysis of very high-resolution image data (Pleiades-1B) will be conducted to examine the oil pattern. This research uses the deep learning series convolutional neural network (CNN) method. With this research, it is hoped that it can help agencies in knowing the right method to identify oil in mainland areas.

Original languageEnglish
Article number012021
JournalIOP Conference Series: Earth and Environmental Science
Volume936
Issue number1
DOIs
Publication statusPublished - 20 Dec 2021
EventGeomatics International Conference 2021, GEOICON 2021 - Virtual, Online, Indonesia
Duration: 27 Jul 2021 → …

Fingerprint

Dive into the research topics of 'OIL PATTERN IDENTIFICATION ANALYSIS USING SEMANTIC DEEP LEARNING METHOD from PLEIADES-1B SATELIITE IMAGERY with ARCGIS PRO SOFTWARE (Case Study: Village "a")'. Together they form a unique fingerprint.

Cite this