Srifitriani, Abditama
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PELATIHAN PENELITIAN TINDAKAN KELAS (PTK) BAGI GURU SD NEGERI DI KECAMATAN SUKARAJA KABUPATEN SELUMA Dihamri, Dihamri; Haimah, Haimah; Srifitriani, Abditama
Jurnal Pengabdian Masyarakat Borneo Vol 2, No 1 (2018)
Publisher : LPPM UBT

Show Abstract | Download Original | Original Source | Check in Google Scholar | Full PDF (670.774 KB) | DOI: 10.35334/jpmb.v2i1.431

Abstract

Guru- guru Sekolah Dasar (SD) kesulitan naik pangkat khususnya dari golongan IV/a ke IV/b karena tidak dapat memenuhi persyaratan dalam  bidang karya tulis ilmiah. Tujuan akhir  pengabdian ini adalah agar  guru-guru SD memiliki kompetensi  menyusun proposal Penelitian Tindakan Kelas (PTK). Pelatihan akan bermanfaat bagi guru dalam peningkatan profesional dan memenuhi persyaratan kenaikan pangkat. Metode yang digunakan untuk mencapai  tujuan tersebut adalah pelatihan dan bimbingan. Guru-guru  dilatih penyusunan proposal  PTK.  Pelatihan dilaksanakan enam kali pertemuan, bimbingan kelompok tiga kali pertemuan dan bimbingan individu masing-masing  tiga kali pertemuan. Bimbingan juga dilakukan lewat hp (handphone), wa (WhatsApp), dan email. Selama kegiatan dilakukan monitoring dan setelah kegiatan diadakan evaluasi. Kegiatan pelatihan dilaksanakan sesuai rencana. Hasilnya guru-guru dapat menyusun proposal PTK bahkan ada yang dapat menyusun laporan PTK.
Study of Model Object-Based Image Analysis (OBIA) For Data Interpretation Based Mangrove Vegetation Landsat 8 Operational Land Imager on the West Coast City of Bengkulu Srifitriani, Abditama; Supriyono, Supriyono; Parwito, Parwito
Sumatra Journal of Disaster, Geography and Geography Education Vol 3 No 2 (2019): Sumatra Journal of Disaster, Geography and Geography Education (SJDGGE)
Publisher : Sumatra Journal of Disaster, Geography and Geography Education

Show Abstract | Download Original | Original Source | Check in Google Scholar | Full PDF (300.515 KB) | DOI: 10.24036/sjdgge.v3i2.221

Abstract

Mangrove identification by using the image has been done with the classification model by pixel in the image value. But in this study see the interpretation of Landsat image data to the analysis of the object in the mangrove. Mangrove forests as major ecosystems support life activities in the coastal area and play an important role in maintaining the balance of the biological cycle in the environment. The potential of natural resources needs to be managed and utilized optimally to support the implementation of national development and improving people's welfare. So as to develop the coastal economic continuity with the management of mangrove forests as ecotourism. Identification observation and extensive distribution of mangrove forests in the western coastal city of Bengkulu was conducted in April 2019 by boat. Digital data Landsat 8 OLI (Operational Land Imager) parth / raw 125/63 used to map the mangrove forest. The method used in this study is a controlled multispectral classification Object-Based Image Analysis (OBIA) with the segmentation algorithm. Segmentation is performed using an algorithm Multiresolution Segmentation Segmentation and Spectral Difference. The results of the data analysis of Landsat 8 OLI and validation of field observation data, shows that the accuracy and wide distribution of mangrove forests in the coastal areas west of the city of Bengkulu is 255.24 ha. This method can be made an alternative to identifying information in mapping mangrove vegetation. Mangroves in the coastal areas west of the city of Bengkulu dominated by Rhizophora apiculata, Rhizophora mucronata and relatively good. Segmentation is performed using an algorithm Multiresolution Segmentation Segmentation and Spectral Difference. The results of the data analysis of Landsat 8 OLI and validation of field observation data, shows that the accuracy and wide distribution of mangrove forests in the coastal areas west of the city of Bengkulu is 255.24 ha. This method can be made an alternative to identifying information in pemetaanya mangrove vegetation. Mangroves in the coastal areas west of the city of Bengkulu dominated by Rhizophora apiculata, Rhizophora mucronata and relatively good. Segmentation is performed using an algorithm Multiresolution Segmentation Segmentation and Spectral Difference. The results of the data analysis of Landsat 8 OLI and validation of field observation data, shows that the accuracy and wide distribution of mangrove forests in the coastal areas west of the city of Bengkulu is 255.24 ha. This method can be made an alternative to identifying information in pemetaanya mangrove vegetation. Mangroves in the coastal areas west of the city of Bengkulu dominated by Rhizophora apiculata, Rhizophora mucronata and relatively good. This method can be made an alternative to identifying information in pemetaanya mangrove vegetation. Mangroves in the coastal areas west of the city of Bengkulu dominated by Rhizophora apiculata, Rhizophora mucronata and relatively good. This method can be made an alternative to identifying information in pemetaanya mangrove vegetation. Mangroves in the coastal areas west of the city of Bengkulu dominated by Rhizophora apiculata, Rhizophora mucronata and relatively good.
Mangrove Density Analysis Using Landsat 8 The Operational Land Imager (OLI) a Case Study Bengkulu City Srifitriani, Abditama; Parwito, Parwito; Supriyono, Supriyono; Oktalia, Lola
Sumatra Journal of Disaster, Geography and Geography Education Vol 4 No 2 (2020): Sumatra Journal of Disaster, Geography and Geography Education ( Desember Edition
Publisher : Sumatra Journal of Disaster, Geography and Geography Education

Show Abstract | Download Original | Original Source | Check in Google Scholar | Full PDF (273.391 KB) | DOI: 10.24036/sjdgge.v4i2.346

Abstract

The change in crown density is an indication for monitoring its quality. The use of satellite imagery on remote sensing data in the form of Landsat has been carried out. Along with the development of the Landsat series satellite imagery, in this study, Landsat 8 OLI image processing was carried out on May 27, 2019, to analyze the distribution and density of mangroves using vegetation index analysis on the West Coast of Bengkulu City. The mangrove identification stages were carried out using the composite band RGB 564, then the mangrove and non-mangrove objects were separated using the unsupervised classification method. The next step is to analyze mangrove density using the NDVI formula. The results showed that the mangrove area on the West Coast of Bengkulu was 155.24 Ha. The analysis of the vegetation index in the mangrove area showed that dense density classes dominated the mangrove density conditions