iSDAsoil extractable Aluminium
با مجموعهها، منظم بمانید
ذخیره و طبقهبندی محتوا براساس اولویتهای شما.
در دسترس بودن مجموعه داده 2001-01-01T00:00:00Z–2017-01-01T00:00:00Z ارائه دهنده مجموعه داده iSDA قطعه موتور زمین ee.Image("ISDASOIL/Africa/v1/aluminium_extractable")
open_in_new برچسب ها خاک isda آلومینیوم آفریقا توضیحات آلومینیوم قابل استخراج در عمق 0-20 سانتی متر و 20-50 سانتی متر، میانگین و انحراف معیار پیش بینی شده است.
مقادیر پیکسل باید با exp(x/10)-1
به عقب تبدیل شوند.
پیشبینی ویژگیهای خاک توسط Innovative Solutions for Decision Agriculture Ltd. (iSDA) در اندازه پیکسل 30 متر با استفاده از یادگیری ماشین همراه با دادههای سنجش از راه دور و مجموعه آموزشی بیش از 100000 نمونه خاک تجزیهشده انجام شد.
اطلاعات بیشتر را می توان در پرسش های متداول و مستندات اطلاعات فنی یافت. برای ارسال مشکل یا درخواست پشتیبانی، لطفاً به سایت iSDAsoil مراجعه کنید.
در مناطق جنگلی متراکم (به طور کلی بر فراز آفریقای مرکزی)، دقت مدل پایین است و بنابراین ممکن است مصنوعاتی مانند نواربندی (راه راه) دیده شود.
باندها اندازه پیکسل 30 متر
باندها
نام واحدها حداقل حداکثر اندازه پیکسل توضیحات mean_0_20
ppm 3 80 متر آلومینیوم، قابل استخراج، میانگین پیش بینی شده در عمق 0-20 سانتی متر
mean_20_50
ppm 4 79 متر آلومینیوم، قابل استخراج، میانگین پیش بینی شده در عمق 20-50 سانتی متر
stdev_0_20
ppm 1 53 متر آلومینیوم، قابل استخراج، انحراف استاندارد در عمق 0-20 سانتی متر
stdev_20_50
ppm 1 51 متر آلومینیوم، قابل استخراج، انحراف استاندارد در عمق 20-50 سانتی متر
نقل قول ها Hengl, T., Miller, MAE, Križan, J., et al. ویژگیهای خاک آفریقا و مواد مغذی با وضوح فضایی 30 متر با استفاده از یادگیری ماشین دو مقیاسی نقشهبرداری شدند. Sci Rep 11, 6130 (2021). doi:10.1038/s41598-021-85639-y
Hengl, T., Miller, MAE, Križan, J., et al. ویژگیهای خاک آفریقا و مواد مغذی با وضوح فضایی 30 متر با استفاده از یادگیری ماشین دو مقیاسی نقشهبرداری شدند. Sci Rep 11, 6130 (2021). doi:10.1038/s41598-021-85639-y
با Earth Engine کاوش کنید مهم: Earth Engine یک پلت فرم برای تجزیه و تحلیل علمی در مقیاس پتابایت و تجسم مجموعه داده های مکانی است، هم برای منافع عمومی و هم برای کاربران تجاری و دولتی. Earth Engine برای استفاده تحقیقاتی، آموزشی و غیرانتفاعی رایگان است. برای شروع، لطفاً برای دسترسی به Earth Engine ثبت نام کنید. ویرایشگر کد (جاوا اسکریپت)
var mean_0_20 =
'<RasterSymbolizer>' +
'<ColorMap type="ramp">' +
'<ColorMapEntry color="#000004" label="0-21.2" opacity="1" quantity="31"/>' +
'<ColorMapEntry color="#0C0927" label="21.2-35.6" opacity="1" quantity="36"/>' +
'<ColorMapEntry color="#231151" label="35.6-53.6" opacity="1" quantity="40"/>' +
'<ColorMapEntry color="#410F75" label="53.6-65.7" opacity="1" quantity="42"/>' +
'<ColorMapEntry color="#5F187F" label="65.7-72.7" opacity="1" quantity="43"/>' +
'<ColorMapEntry color="#7B2382" label="72.7-80.5" opacity="1" quantity="44"/>' +
'<ColorMapEntry color="#982D80" label="80.5-89" opacity="1" quantity="45"/>' +
'<ColorMapEntry color="#B63679" label="89-98.5" opacity="1" quantity="46"/>' +
'<ColorMapEntry color="#D3436E" label="98.5-108.9" opacity="1" quantity="47"/>' +
'<ColorMapEntry color="#EB5760" label="108.9-120.5" opacity="1" quantity="48"/>' +
'<ColorMapEntry color="#F8765C" label="120.5-133.3" opacity="1" quantity="49"/>' +
'<ColorMapEntry color="#FD9969" label="133.3-147.4" opacity="1" quantity="50"/>' +
'<ColorMapEntry color="#FEBA80" label="147.4-163" opacity="1" quantity="51"/>' +
'<ColorMapEntry color="#FDDC9E" label="163-199.3" opacity="1" quantity="53"/>' +
'<ColorMapEntry color="#FCFDBF" label="199.3-1800" opacity="1" quantity="55"/>' +
'</ColorMap>' +
'<ContrastEnhancement/>' +
'</RasterSymbolizer>' ;
var mean_20_50 =
'<RasterSymbolizer>' +
'<ColorMap type="ramp">' +
'<ColorMapEntry color="#000004" label="0-21.2" opacity="1" quantity="31"/>' +
'<ColorMapEntry color="#0C0927" label="21.2-35.6" opacity="1" quantity="36"/>' +
'<ColorMapEntry color="#231151" label="35.6-53.6" opacity="1" quantity="40"/>' +
'<ColorMapEntry color="#410F75" label="53.6-65.7" opacity="1" quantity="42"/>' +
'<ColorMapEntry color="#5F187F" label="65.7-72.7" opacity="1" quantity="43"/>' +
'<ColorMapEntry color="#7B2382" label="72.7-80.5" opacity="1" quantity="44"/>' +
'<ColorMapEntry color="#982D80" label="80.5-89" opacity="1" quantity="45"/>' +
'<ColorMapEntry color="#B63679" label="89-98.5" opacity="1" quantity="46"/>' +
'<ColorMapEntry color="#D3436E" label="98.5-108.9" opacity="1" quantity="47"/>' +
'<ColorMapEntry color="#EB5760" label="108.9-120.5" opacity="1" quantity="48"/>' +
'<ColorMapEntry color="#F8765C" label="120.5-133.3" opacity="1" quantity="49"/>' +
'<ColorMapEntry color="#FD9969" label="133.3-147.4" opacity="1" quantity="50"/>' +
'<ColorMapEntry color="#FEBA80" label="147.4-163" opacity="1" quantity="51"/>' +
'<ColorMapEntry color="#FDDC9E" label="163-199.3" opacity="1" quantity="53"/>' +
'<ColorMapEntry color="#FCFDBF" label="199.3-1800" opacity="1" quantity="55"/>' +
'</ColorMap>' +
'<ContrastEnhancement/>' +
'</RasterSymbolizer>' ;
var stdev_0_20 =
'<RasterSymbolizer>' +
'<ColorMap type="ramp">' +
'<ColorMapEntry color="#fde725" label="low" opacity="1" quantity="5"/>' +
'<ColorMapEntry color="#5dc962" label=" " opacity="1" quantity="9"/>' +
'<ColorMapEntry color="#20908d" label=" " opacity="1" quantity="10"/>' +
'<ColorMapEntry color="#3a528b" label=" " opacity="1" quantity="12"/>' +
'<ColorMapEntry color="#440154" label="high" opacity="1" quantity="14"/>' +
'</ColorMap>' +
'<ContrastEnhancement/>' +
'</RasterSymbolizer>' ;
var stdev_20_50 =
'<RasterSymbolizer>' +
'<ColorMap type="ramp">' +
'<ColorMapEntry color="#fde725" label="low" opacity="1" quantity="5"/>' +
'<ColorMapEntry color="#5dc962" label=" " opacity="1" quantity="9"/>' +
'<ColorMapEntry color="#20908d" label=" " opacity="1" quantity="10"/>' +
'<ColorMapEntry color="#3a528b" label=" " opacity="1" quantity="12"/>' +
'<ColorMapEntry color="#440154" label="high" opacity="1" quantity="14"/>' +
'</ColorMap>' +
'<ContrastEnhancement/>' +
'</RasterSymbolizer>' ;
Map . setCenter ( 25 , - 3 , 2 );
var raw = ee . Image ( "ISDASOIL/Africa/v1/aluminium_extractable" );
Map . addLayer (
raw . select ( 0 ). sldStyle ( mean_0_20 ), {},
"Aluminium, extractable, mean visualization, 0-20 cm" );
Map . addLayer (
raw . select ( 1 ). sldStyle ( mean_20_50 ), {},
"Aluminium, extractable, mean visualization, 20-50 cm" );
Map . addLayer (
raw . select ( 2 ). sldStyle ( stdev_0_20 ), {},
"Aluminium, extractable, stdev visualization, 0-20 cm" );
Map . addLayer (
raw . select ( 3 ). sldStyle ( stdev_20_50 ), {},
"Aluminium, extractable, stdev visualization, 20-50 cm" );
var converted = raw . divide ( 10 ). exp (). subtract ( 1 );
Map . addLayer (
converted . select ( 0 ), { min : 0 , max : 100 },
"Aluminium, extractable, mean, 0-20 cm" ); در ویرایشگر کد باز کنید
[null,null,[],[[["\u003cp\u003eThis dataset provides predictions for extractable aluminum in African soil at two depths (0-20 cm and 20-50 cm), including both mean and standard deviation values.\u003c/p\u003e\n"],["\u003cp\u003eThe data covers the period from 2001 to 2017 and was produced by Innovative Solutions for Decision Agriculture Ltd.(iSDA) using machine learning and remote sensing techniques.\u003c/p\u003e\n"],["\u003cp\u003ePixel values are initially transformed and require back-transformation using the formula \u003ccode\u003eexp(x/10)-1\u003c/code\u003e to obtain actual extractable aluminum values in ppm (parts per million).\u003c/p\u003e\n"],["\u003cp\u003eThe dataset is available at a 30-meter resolution and can be accessed and analyzed using Google Earth Engine.\u003c/p\u003e\n"],["\u003cp\u003eUsers should be aware that model accuracy is lower in dense jungle areas, potentially leading to visual artifacts like banding.\u003c/p\u003e\n"]]],[],null,["# iSDAsoil extractable Aluminium\n\nDataset Availability\n: 2001-01-01T00:00:00Z--2017-01-01T00:00:00Z\n\nDataset Provider\n:\n\n\n [iSDA](https://isda-africa.com/)\n\nTags\n:\n[africa](/earth-engine/datasets/tags/africa) [aluminium](/earth-engine/datasets/tags/aluminium) [isda](/earth-engine/datasets/tags/isda) [soil](/earth-engine/datasets/tags/soil) \n\n#### Description\n\nExtractable aluminium at soil depths of 0-20 cm and 20-50 cm,\npredicted mean and standard deviation.\n\nPixel values must be back-transformed with `exp(x/10)-1`.\n\nSoil property predictions were made by\n[Innovative Solutions for Decision Agriculture Ltd. (iSDA)](https://isda-africa.com/)\nat 30 m pixel size using machine learning coupled with remote sensing data\nand a training set of over 100,000 analyzed soil samples.\n\nFurther information can be found in the\n[FAQ](https://www.isda-africa.com/isdasoil/faq/) and\n[technical information documentation](https://www.isda-africa.com/isdasoil/technical-information/). To submit an issue or request support, please visit\n[the iSDAsoil site](https://isda-africa.com/isdasoil).\n\nIn areas of dense jungle (generally over central Africa), model accuracy is\nlow and therefore artifacts such as banding (striping) might be seen.\n\n### Bands\n\n\n**Pixel Size**\n\n30 meters\n\n**Bands**\n\n| Name | Units | Min | Max | Pixel Size | Description |\n|---------------|-------|-----|-----|------------|--------------------------------------------------------------|\n| `mean_0_20` | ppm | 3 | 80 | meters | Aluminium, extractable, predicted mean at 0-20 cm depth |\n| `mean_20_50` | ppm | 4 | 79 | meters | Aluminium, extractable, predicted mean at 20-50 cm depth |\n| `stdev_0_20` | ppm | 1 | 53 | meters | Aluminium, extractable, standard deviation at 0-20 cm depth |\n| `stdev_20_50` | ppm | 1 | 51 | meters | Aluminium, extractable, standard deviation at 20-50 cm depth |\n\n### Terms of Use\n\n**Terms of Use**\n\n[CC-BY-4.0](https://spdx.org/licenses/CC-BY-4.0.html)\n\n### Citations\n\nCitations:\n\n- Hengl, T., Miller, M.A.E., Križan, J., et al. African soil properties and nutrients\n mapped at 30 m spatial resolution using two-scale ensemble machine learning.\n Sci Rep 11, 6130 (2021).\n [doi:10.1038/s41598-021-85639-y](https://doi.org/10.1038/s41598-021-85639-y)\n- Hengl, T., Miller, M.A.E., Križan, J., et al. African soil properties and nutrients\n mapped at 30 m spatial resolution using two-scale ensemble machine learning.\n Sci Rep 11, 6130 (2021).\n [doi:10.1038/s41598-021-85639-y](https://doi.org/10.1038/s41598-021-85639-y)\n\n### DOIs\n\n- \u003chttps://doi.org/10.1038/s41598-021-85639-y\u003e\n\n### Explore with Earth Engine\n\n| **Important:** Earth Engine is a platform for petabyte-scale scientific analysis and visualization of geospatial datasets, both for public benefit and for business and government users. Earth Engine is free to use for research, education, and nonprofit use. To get started, please [register for Earth Engine access.](https://console.cloud.google.com/earth-engine)\n\n### Code Editor (JavaScript)\n\n```javascript\nvar mean_0_20 =\n'\u003cRasterSymbolizer\u003e' +\n '\u003cColorMap type=\"ramp\"\u003e' +\n '\u003cColorMapEntry color=\"#000004\" label=\"0-21.2\" opacity=\"1\" quantity=\"31\"/\u003e' +\n '\u003cColorMapEntry color=\"#0C0927\" label=\"21.2-35.6\" opacity=\"1\" quantity=\"36\"/\u003e' +\n '\u003cColorMapEntry color=\"#231151\" label=\"35.6-53.6\" opacity=\"1\" quantity=\"40\"/\u003e' +\n '\u003cColorMapEntry color=\"#410F75\" label=\"53.6-65.7\" opacity=\"1\" quantity=\"42\"/\u003e' +\n '\u003cColorMapEntry color=\"#5F187F\" label=\"65.7-72.7\" opacity=\"1\" quantity=\"43\"/\u003e' +\n '\u003cColorMapEntry color=\"#7B2382\" label=\"72.7-80.5\" opacity=\"1\" quantity=\"44\"/\u003e' +\n '\u003cColorMapEntry color=\"#982D80\" label=\"80.5-89\" opacity=\"1\" quantity=\"45\"/\u003e' +\n '\u003cColorMapEntry color=\"#B63679\" label=\"89-98.5\" opacity=\"1\" quantity=\"46\"/\u003e' +\n '\u003cColorMapEntry color=\"#D3436E\" label=\"98.5-108.9\" opacity=\"1\" quantity=\"47\"/\u003e' +\n '\u003cColorMapEntry color=\"#EB5760\" label=\"108.9-120.5\" opacity=\"1\" quantity=\"48\"/\u003e' +\n '\u003cColorMapEntry color=\"#F8765C\" label=\"120.5-133.3\" opacity=\"1\" quantity=\"49\"/\u003e' +\n '\u003cColorMapEntry color=\"#FD9969\" label=\"133.3-147.4\" opacity=\"1\" quantity=\"50\"/\u003e' +\n '\u003cColorMapEntry color=\"#FEBA80\" label=\"147.4-163\" opacity=\"1\" quantity=\"51\"/\u003e' +\n '\u003cColorMapEntry color=\"#FDDC9E\" label=\"163-199.3\" opacity=\"1\" quantity=\"53\"/\u003e' +\n '\u003cColorMapEntry color=\"#FCFDBF\" label=\"199.3-1800\" opacity=\"1\" quantity=\"55\"/\u003e' +\n '\u003c/ColorMap\u003e' +\n '\u003cContrastEnhancement/\u003e' +\n'\u003c/RasterSymbolizer\u003e';\n\nvar mean_20_50 =\n'\u003cRasterSymbolizer\u003e' +\n '\u003cColorMap type=\"ramp\"\u003e' +\n '\u003cColorMapEntry color=\"#000004\" label=\"0-21.2\" opacity=\"1\" quantity=\"31\"/\u003e' +\n '\u003cColorMapEntry color=\"#0C0927\" label=\"21.2-35.6\" opacity=\"1\" quantity=\"36\"/\u003e' +\n '\u003cColorMapEntry color=\"#231151\" label=\"35.6-53.6\" opacity=\"1\" quantity=\"40\"/\u003e' +\n '\u003cColorMapEntry color=\"#410F75\" label=\"53.6-65.7\" opacity=\"1\" quantity=\"42\"/\u003e' +\n '\u003cColorMapEntry color=\"#5F187F\" label=\"65.7-72.7\" opacity=\"1\" quantity=\"43\"/\u003e' +\n '\u003cColorMapEntry color=\"#7B2382\" label=\"72.7-80.5\" opacity=\"1\" quantity=\"44\"/\u003e' +\n '\u003cColorMapEntry color=\"#982D80\" label=\"80.5-89\" opacity=\"1\" quantity=\"45\"/\u003e' +\n '\u003cColorMapEntry color=\"#B63679\" label=\"89-98.5\" opacity=\"1\" quantity=\"46\"/\u003e' +\n '\u003cColorMapEntry color=\"#D3436E\" label=\"98.5-108.9\" opacity=\"1\" quantity=\"47\"/\u003e' +\n '\u003cColorMapEntry color=\"#EB5760\" label=\"108.9-120.5\" opacity=\"1\" quantity=\"48\"/\u003e' +\n '\u003cColorMapEntry color=\"#F8765C\" label=\"120.5-133.3\" opacity=\"1\" quantity=\"49\"/\u003e' +\n '\u003cColorMapEntry color=\"#FD9969\" label=\"133.3-147.4\" opacity=\"1\" quantity=\"50\"/\u003e' +\n '\u003cColorMapEntry color=\"#FEBA80\" label=\"147.4-163\" opacity=\"1\" quantity=\"51\"/\u003e' +\n '\u003cColorMapEntry color=\"#FDDC9E\" label=\"163-199.3\" opacity=\"1\" quantity=\"53\"/\u003e' +\n '\u003cColorMapEntry color=\"#FCFDBF\" label=\"199.3-1800\" opacity=\"1\" quantity=\"55\"/\u003e' +\n '\u003c/ColorMap\u003e' +\n '\u003cContrastEnhancement/\u003e' +\n'\u003c/RasterSymbolizer\u003e';\n\nvar stdev_0_20 =\n'\u003cRasterSymbolizer\u003e' +\n '\u003cColorMap type=\"ramp\"\u003e' +\n '\u003cColorMapEntry color=\"#fde725\" label=\"low\" opacity=\"1\" quantity=\"5\"/\u003e' +\n '\u003cColorMapEntry color=\"#5dc962\" label=\" \" opacity=\"1\" quantity=\"9\"/\u003e' +\n '\u003cColorMapEntry color=\"#20908d\" label=\" \" opacity=\"1\" quantity=\"10\"/\u003e' +\n '\u003cColorMapEntry color=\"#3a528b\" label=\" \" opacity=\"1\" quantity=\"12\"/\u003e' +\n '\u003cColorMapEntry color=\"#440154\" label=\"high\" opacity=\"1\" quantity=\"14\"/\u003e' +\n '\u003c/ColorMap\u003e' +\n '\u003cContrastEnhancement/\u003e' +\n'\u003c/RasterSymbolizer\u003e';\n\nvar stdev_20_50 =\n'\u003cRasterSymbolizer\u003e' +\n '\u003cColorMap type=\"ramp\"\u003e' +\n '\u003cColorMapEntry color=\"#fde725\" label=\"low\" opacity=\"1\" quantity=\"5\"/\u003e' +\n '\u003cColorMapEntry color=\"#5dc962\" label=\" \" opacity=\"1\" quantity=\"9\"/\u003e' +\n '\u003cColorMapEntry color=\"#20908d\" label=\" \" opacity=\"1\" quantity=\"10\"/\u003e' +\n '\u003cColorMapEntry color=\"#3a528b\" label=\" \" opacity=\"1\" quantity=\"12\"/\u003e' +\n '\u003cColorMapEntry color=\"#440154\" label=\"high\" opacity=\"1\" quantity=\"14\"/\u003e' +\n '\u003c/ColorMap\u003e' +\n '\u003cContrastEnhancement/\u003e' +\n'\u003c/RasterSymbolizer\u003e';\n\nMap.setCenter(25, -3, 2);\n\nvar raw = ee.Image(\"ISDASOIL/Africa/v1/aluminium_extractable\");\nMap.addLayer(\n raw.select(0).sldStyle(mean_0_20), {},\n \"Aluminium, extractable, mean visualization, 0-20 cm\");\nMap.addLayer(\n raw.select(1).sldStyle(mean_20_50), {},\n \"Aluminium, extractable, mean visualization, 20-50 cm\");\nMap.addLayer(\n raw.select(2).sldStyle(stdev_0_20), {},\n \"Aluminium, extractable, stdev visualization, 0-20 cm\");\nMap.addLayer(\n raw.select(3).sldStyle(stdev_20_50), {},\n \"Aluminium, extractable, stdev visualization, 20-50 cm\");\n\nvar converted = raw.divide(10).exp().subtract(1);\nMap.addLayer(\n converted.select(0), {min: 0, max: 100},\n \"Aluminium, extractable, mean, 0-20 cm\");\n```\n[Open in Code Editor](https://code.earthengine.google.com/?scriptPath=Examples:Datasets/ISDASOIL/ISDASOIL_Africa_v1_aluminium_extractable) \n[iSDAsoil extractable Aluminium](/earth-engine/datasets/catalog/ISDASOIL_Africa_v1_aluminium_extractable) \nExtractable aluminium at soil depths of 0-20 cm and 20-50 cm, predicted mean and standard deviation. Pixel values must be back-transformed with exp(x/10)-1. Soil property predictions were made by Innovative Solutions for Decision Agriculture Ltd. (iSDA) at 30 m pixel size using machine learning coupled with remote sensing data and ... \nISDASOIL/Africa/v1/aluminium_extractable, africa,aluminium,isda,soil \n2001-01-01T00:00:00Z/2017-01-01T00:00:00Z \n-35.22 -31.46 37.98 57.08 \nGoogle Earth Engine \nhttps://developers.google.com/earth-engine/datasets\n\n- [https://doi.org/10.1038/s41598-021-85639-y](https://doi.org/https://isda-africa.com/)\n- [https://doi.org/10.1038/s41598-021-85639-y](https://doi.org/https://developers.google.com/earth-engine/datasets/catalog/ISDASOIL_Africa_v1_aluminium_extractable)"]]