LAND-SOIL CHARACTERISTICS FOR MAPPING PADDY CROPPING INTENSITY USING DECISION TREE ANALYSIS FROM SINGLE DATE ALI IMAGERY IN MAGELANG, CENTRAL JAVA, INDONESIA

Q4 Social Sciences
S. Arjasakusuma, P. Danoedoro, S. Herumurti, Yanuar Adji Nugroho, P. A. Aryaguna
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引用次数: 1

Abstract

Paddy field area and its cropping intensity are main information used to measure the crop production and the response of crop to changing climate conditions. Remote sensing technology has been used widely to map cropping pattern of paddy mostly using spectral analysis of multi temporal multispectral data of remote sensing. However, the cropping intensity of paddy was also influenced by the characteristics of planted land to paddy field which defines the level of land suitability for planting paddy.  This research aimed to map paddy rotation by using single date ALI imagery by assessing the land and soil characteristics based on the land suitability parameters for planting paddy.  Soil characteristics such as texture, acidity level, P205 (phosphor) and C-organic level collected from field work and terrain characteristics such as landform, surface water, and drainage density from visual delineation of SRTM 90 m was collected as inputs for the decision tree analysis to map the repetition of paddy planting throughout the year. The results showed the overall accuracy of 85% ± 8% (95 % level of confidence) for the final paddy rotation map where 2-times paddy per year was mostly found in the study area.
利用决策树分析在印度尼西亚中爪哇马格朗单日期阿里影像中绘制水稻种植强度的土地-土壤特征
水田面积及其种植强度是衡量作物产量和作物对气候条件变化响应的主要信息。遥感技术在水稻种植格局制图中得到了广泛的应用,主要是利用遥感多时相多光谱数据进行光谱分析。然而,水稻的种植强度也受到耕地对水田特性的影响,这决定了土地对水稻的适宜程度。本研究旨在利用单数据ALI影像,基于土地适宜性参数,评估土地和土壤特征,绘制水稻轮作图。从田间工作中收集的土壤特征,如质地、酸度水平、P205(磷)和c -有机水平,以及从SRTM 90 m的视觉描绘中收集的地形特征,如地形、地表水和排水密度,作为决策树分析的输入,以绘制全年水稻种植的重复情况。研究区水稻轮作以2次/年为主,最终轮作图总体精度为85%±8%(95%置信度)。
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来源期刊
Geoplanning Journal of Geomatics and Planning
Geoplanning Journal of Geomatics and Planning Earth and Planetary Sciences-Computers in Earth Sciences
CiteScore
1.00
自引率
0.00%
发文量
5
审稿时长
4 weeks
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