The document outlines the BIRDS (Joint Global Multi-Nation Birds) project, which aims to build and launch a constellation of 1U CubeSats from five countries including Mongolia and Japan. The project will provide hands-on engineering experience for students and help non-space faring countries enter the space field. It details the satellite design, integration and testing process, ground station setup, operations plan and timeline, with a total cost of around $100,000 USD per satellite.
The document discusses GIS applications in Mongolia, including applications used by MonMap and ESRI. It provides examples of using different data sources like satellite imagery, aerial photos, and drone data to generate detailed spatial data for various uses. It also discusses specific GIS applications for tasks like infrastructure mapping, mining monitoring, agriculture, and more. High resolution data allows generation of data like digital terrain models and 3D features.
This document analyzes dust weather categorization in Mongolia using satellite data from 2000-2013. Ground-based meteorological data from 113 stations is compared to satellite-retrieved aerosol optical depth to categorize dust haze, blowing dust, and dust storms. Dust phenomenon types are categorized based on the correlation between aerosol optical depth and horizontal visibility. The study finds a good exponential relationship between aerosol optical depth and visibility in April, allowing dust weather to be categorized from satellite data with spatial frequencies consistent with ground reports.
Presentation the impact of forest fire on forest cover types 03-march2017GeoMedeelel
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This study analyzed the impact of forest fires on forest cover types in Eruu county, Mongolia between 2000 and 2011 using Landsat imagery. The forest was classified into seven types including cedar, pine, larch, birch, birch-pine mixed, birch-larch mixed and cedar-larch mixed. Overall accuracy of the forest maps was 86.33% in 2000 and 93.75% in 2011. Large fires between 2007-2009 impacted over 25,000 hectares, changing forests to burnt areas and over 52,000 hectares to grasslands. Major changes included reductions in cedar-larch mixed and increases in burnt areas.
This document outlines a study to estimate above-ground biomass and carbon stock in boreal forests in Mongolia using satellite data and machine learning. Boreal forests cover about 9.2% of Mongolia but have been declining in recent decades. The study aims to develop a suitable machine learning model to map forest biomass and carbon stock. Random forest was the best performing model with an R2 of 0.24 and RMSE of 33 Mg/ha. Important input features included shortwave infrared band 1, green leaf index, and radar polarization data. The predicted forest biomass ranged from 32.5-122.5 Mg/ha and carbon stock ranged from 16.5-62.5 Mg C/ha. Some reference
The document outlines a study that uses multispectral drones and ground sampling to collect vegetation data from pasture sites over three sampling periods in June, July, and August. Various vegetation indices will be calculated from the drone and ground spectrometer data to analyze changes in biomass, chlorophyll content, and other vegetation metrics over time. A total of 285 sample points will be collected and various biophysical parameters will be measured at each point to analyze temporal changes in pasture sites.
The Mongolian Geospatial Association has a board that executes the CEO and Secretary. It has 9 technical commissions and 3 member communities. The association has regular, student, institutional, honorary, and advisory members. It partners internationally and participates in activities in countries like the US, UAE, Taiwan, South Korea, and others. In 2021, the association held webinars, talks, workshops and participated in a United Nations workshop on GNSS applications. It celebrates GIS day and holds monthly geo-meetings and quarterly geo-forums.
The document provides an overview of CHCNAV's AlphaUni 300/900/1300 mobile mapping solutions. It describes the key features and performance specifications of the AlphaUni series, including its universal lidar platform design, accuracy levels, data storage capabilities, and compatibility with various installation methods for airborne, vehicle, boat, and backpack use cases. The document also introduces CHC's new BB4 UAV platform as a high-payload professional solution for airborne lidar applications.
Mongolia has been involved in space technology since 1965 under the INTERCOSMOS program. The first satellite data receiving station and weather satellite ground station were established in 1970. In 1981, J. Gurragchaa became the first Mongolian cosmonaut. In 2017, Mazaalai, Mongolia's first satellite, was launched into space.
The Space Technology Association of Mongolia is the main organization related to space technology. It has a board, CEO, secretary and various technical commissions. Members include students, regular members, institutions and honorary members. The association partners with space organizations in countries around the world and participates in international conferences and workshops on space technology.
Mongolia began developing space technology in 1965 under the INTERCOSMOS program. Some key early developments included establishing the first satellite data receiving station in 1970 and a meteorological satellite data station. The first Mongolian cosmonaut launched in 1981. More recently, Mongolia launched its first satellite, Mazaalai, in 2017.
The Association of Mongolian Geodesy and Cartography brings together members involved in fields like photogrammetry, GIS, and surveying. It has over 1500 members across categories like students, institutions, and honorary members. The Association partners with space technology organizations internationally and runs various events and programs.
Demonstration of super map ai gis technology GeoMedeelel
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This document demonstrates SuperMap's AI GIS technology. It discusses geospatial deep learning and the AI GIS workflow, including data acquisition and preparation, model building and management, and model application. It provides examples of using deep learning models for tasks like object detection, segmentation, and classification of imagery. The workflow and tools for training models with SuperMap software and deploying trained models as web services are also described. A case study on building extraction is presented to illustrate the full AI GIS process.
Supermap gis 10i(2020) ai gis technology v1.0GeoMedeelel
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This document provides information about SuperMap Software Co., Ltd. It includes:
1. Background information on SuperMap such as its founding date and headquarters location.
2. Market share data showing SuperMap has the largest share of the GIS software market in China.
3. An overview of SuperMap's products and technologies including distributed GIS, cross-platform GIS, 3D GIS, big data GIS, and AI GIS.