Araştırma Makalesi

Agricultural Land Classification Using Vegetation Indices, PCA, and Google Earth Engine: Case Study of Söke/Aydın

Cilt: 11 Sayı: 1 19 Temmuz 2023
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Agricultural Land Classification Using Vegetation Indices, PCA, and Google Earth Engine: Case Study of Söke/Aydın

Öz

Land use and land cover (LULC) classification is known to be one of the most widely used indicators of environmental change and degradation all over the world. There are various algorithms and methods for LULC classification, whereby reliability of the classification maps presents the principal concern. The study focused on evaluation of accuracies of LULC maps produced from original bands of Sentinel-2 imageries together with Normalized Difference Vegetation Index (NDVI), Green NDVI (GNDVI), and Principal Component Analysis (PCA) using Google Earth Engine (GEE) platform to identify best enhancing method for agricultural land classification. Moreover, short-term LULC changes aimed to be identified in the specified area. To achieve the aims, all available imageries acquired in the same month of different years with less than 10% cloud contamination were used to compose averaged images for May 2018 and May 2022 for generating LULC2018 and LULC2022 maps. The area has separated into seven main classes, namely, olive (O), perennial cultivation (P), non-perennial cultivation (NP), forest (F), natural vegetation (N), settled area-bare land (S), and water surface (W) via random forest algorithym. Reliabilities of LULC maps were evaluated through accuracy assessment procedures considering stratified randomized control points. Transitions between each LULC classes were identified.

Anahtar Kelimeler

Kaynakça

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Ayrıntılar

Birincil Dil

İngilizce

Konular

Ziraat Mühendisliği

Bölüm

Araştırma Makalesi

Yayımlanma Tarihi

19 Temmuz 2023

Gönderilme Tarihi

10 Mayıs 2023

Kabul Tarihi

7 Haziran 2023

Yayımlandığı Sayı

Yıl 2023 Cilt: 11 Sayı: 1

Kaynak Göster

APA
İnalpulat, M., Civelek, N., Uşaklı, M., & Genç, L. (2023). Agricultural Land Classification Using Vegetation Indices, PCA, and Google Earth Engine: Case Study of Söke/Aydın. ÇOMÜ Ziraat Fakültesi Dergisi, 11(1), 96-104. https://doi.org/10.33202/comuagri.1295054
AMA
1.İnalpulat M, Civelek N, Uşaklı M, Genç L. Agricultural Land Classification Using Vegetation Indices, PCA, and Google Earth Engine: Case Study of Söke/Aydın. ÇOMÜ Ziraat Fakültesi Dergisi. 2023;11(1):96-104. doi:10.33202/comuagri.1295054
Chicago
İnalpulat, Melis, Neslişah Civelek, Metin Uşaklı, ve Levent Genç. 2023. “Agricultural Land Classification Using Vegetation Indices, PCA, and Google Earth Engine: Case Study of Söke/Aydın”. ÇOMÜ Ziraat Fakültesi Dergisi 11 (1): 96-104. https://doi.org/10.33202/comuagri.1295054.
EndNote
İnalpulat M, Civelek N, Uşaklı M, Genç L (01 Temmuz 2023) Agricultural Land Classification Using Vegetation Indices, PCA, and Google Earth Engine: Case Study of Söke/Aydın. ÇOMÜ Ziraat Fakültesi Dergisi 11 1 96–104.
IEEE
[1]M. İnalpulat, N. Civelek, M. Uşaklı, ve L. Genç, “Agricultural Land Classification Using Vegetation Indices, PCA, and Google Earth Engine: Case Study of Söke/Aydın”, ÇOMÜ Ziraat Fakültesi Dergisi, c. 11, sy 1, ss. 96–104, Tem. 2023, doi: 10.33202/comuagri.1295054.
ISNAD
İnalpulat, Melis - Civelek, Neslişah - Uşaklı, Metin - Genç, Levent. “Agricultural Land Classification Using Vegetation Indices, PCA, and Google Earth Engine: Case Study of Söke/Aydın”. ÇOMÜ Ziraat Fakültesi Dergisi 11/1 (01 Temmuz 2023): 96-104. https://doi.org/10.33202/comuagri.1295054.
JAMA
1.İnalpulat M, Civelek N, Uşaklı M, Genç L. Agricultural Land Classification Using Vegetation Indices, PCA, and Google Earth Engine: Case Study of Söke/Aydın. ÇOMÜ Ziraat Fakültesi Dergisi. 2023;11:96–104.
MLA
İnalpulat, Melis, vd. “Agricultural Land Classification Using Vegetation Indices, PCA, and Google Earth Engine: Case Study of Söke/Aydın”. ÇOMÜ Ziraat Fakültesi Dergisi, c. 11, sy 1, Temmuz 2023, ss. 96-104, doi:10.33202/comuagri.1295054.
Vancouver
1.Melis İnalpulat, Neslişah Civelek, Metin Uşaklı, Levent Genç. Agricultural Land Classification Using Vegetation Indices, PCA, and Google Earth Engine: Case Study of Söke/Aydın. ÇOMÜ Ziraat Fakültesi Dergisi. 01 Temmuz 2023;11(1):96-104. doi:10.33202/comuagri.1295054