{"title":"基于Sentinel-2影像、实验室分析和主成分分析的稻田土壤质量指数(SQI)制图","authors":"P. Sari, I. Indarto, M. Mandala, B. E. Cahyono","doi":"10.19184/geosi.v6i2.24506","DOIUrl":null,"url":null,"abstract":"The use of intensive chemical inputs causes lower availability of nutrients, organic matter, cation exchange capacity, and soil degradation.Therefore, this study aims to assess the soil quality index (SQI) for paddy fields in Jember, East Java, Indonesia. Input data for this study consist of land cover (interpreted from the Sentinel-2 image), soil type, and slope maps. Furthermore, the procedure to calculate soil quality index (SQI) include (1) spatial analysis to create the land unit, (2) preparation of soil sampling, (3) soil chemical analysis, (4) principal component analysis (PCA), and (5) reclassifying soil quality index (SQI). The PCA results showed that three variables i.e., % sand, total- P, and % silt were strongly correlated to SQI, while three classes namely very low, low, and medium of SQI were sufficiently used to describe the spatial variability of the paddy field. Furthermore, approximately 41.14% of the paddy field area were classed as very low while 52.23%, and 6.63% were categorized as low and medium SQI respectively. Based on the results, about 93.37% of paddy fields in Jember Regency still require improvement in soil quality via the addition of ameliorants such as organic fertilizers to increase quality and productivity. This application needs to focus on areas with very low-low quality hence, the quality increased to the medium category. Keywords : Mapping; Soil Quality Index (SQI); PCA; Paddy field Copyright (c) 2021 Geosfera Indonesia and Department of Geography Education, University of Jember This work is licensed under a Creative Commons Attribution-Share A like 4.0 International License","PeriodicalId":33276,"journal":{"name":"Geosfera Indonesia","volume":"16 1","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2021-01-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Mapping of Soil Quality Index (SQI) for Paddy Fields Using Sentinel-2 Imagery, Laboratory Analysis, and Principal Component Analysis\",\"authors\":\"P. Sari, I. Indarto, M. Mandala, B. E. 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引用次数: 0
摘要
集约化化学投入的使用导致养分、有机物、阳离子交换能力降低和土壤退化。因此,本研究旨在评价印尼东爪哇省Jember地区稻田土壤质量指数(SQI)。本研究的输入数据包括土地覆盖(从Sentinel-2图像解释)、土壤类型和坡度图。土壤质量指数(SQI)的计算步骤包括(1)空间分析创建土地单元、(2)土壤取样准备、(3)土壤化学分析、(4)主成分分析(PCA)和(5)土壤质量指数重分类。主成分分析结果表明,沙粒、全磷、粉粒3个变量与SQI呈强相关,SQI极低、低、中3个等级可以很好地描述稻田的空间变异性。此外,约41.14%的稻田面积为极低,52.23%和6.63%的稻田面积分别为低和中SQI。结果表明,约93.37%的水田仍需要通过添加有机肥等改良剂来改善土壤质量,以提高质量和生产力。此应用程序需要关注非常低质量的区域,因此,质量增加到中等类别。关键词:映射;土壤质量指数;主成分分析;版权所有(c) 2021 Geosfera Indonesia and Department of Geography Education, University of Jember本作品采用知识共享署名共享a类4.0国际许可协议
Mapping of Soil Quality Index (SQI) for Paddy Fields Using Sentinel-2 Imagery, Laboratory Analysis, and Principal Component Analysis
The use of intensive chemical inputs causes lower availability of nutrients, organic matter, cation exchange capacity, and soil degradation.Therefore, this study aims to assess the soil quality index (SQI) for paddy fields in Jember, East Java, Indonesia. Input data for this study consist of land cover (interpreted from the Sentinel-2 image), soil type, and slope maps. Furthermore, the procedure to calculate soil quality index (SQI) include (1) spatial analysis to create the land unit, (2) preparation of soil sampling, (3) soil chemical analysis, (4) principal component analysis (PCA), and (5) reclassifying soil quality index (SQI). The PCA results showed that three variables i.e., % sand, total- P, and % silt were strongly correlated to SQI, while three classes namely very low, low, and medium of SQI were sufficiently used to describe the spatial variability of the paddy field. Furthermore, approximately 41.14% of the paddy field area were classed as very low while 52.23%, and 6.63% were categorized as low and medium SQI respectively. Based on the results, about 93.37% of paddy fields in Jember Regency still require improvement in soil quality via the addition of ameliorants such as organic fertilizers to increase quality and productivity. This application needs to focus on areas with very low-low quality hence, the quality increased to the medium category. Keywords : Mapping; Soil Quality Index (SQI); PCA; Paddy field Copyright (c) 2021 Geosfera Indonesia and Department of Geography Education, University of Jember This work is licensed under a Creative Commons Attribution-Share A like 4.0 International License