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E-Books / Video TrainingFire Hotspots Analysis Using Gis



Fire Hotspots Analysis Using Gis
Last updated 1/2022
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz
Language: English | Size: 1.47 GB | Duration: 2h 23m
Spatial auto correlation and hotspots analysis


What you'll learn
Download of VIIRS-375m Active Fire Data from NASA's Fire Information for Resource Management System (FIRMS)
To be familiar with Fire Hotspots Analysis (Getis-Ord Gi*)
To be familiar with Spatial Autocorrelation and Moran's I (Index)
Generate of various distribution patterns, charts and graphs (Statistical Analysis)
Requirements
Basic knowledge of GIS and ArcGIS software
Laptop with installation of ArcGIS 10.x.x
Description
The course is designed for explore and download of VIIRS-375m Active Fire Data of specific study area. The Visible Infrared Imaging Radiometer Suite (VIIRS), which was produced by NASA's Fire Information for Resource Management System (FIRMS), is a recent developed moderate resolution sensor provides daily global active fire products at finer spatial resolution of 375m with strong fire sensitivity since 2012. So, the VIIRS-375m fire product have high capability to detect cooler and smaller fires. Further, using of Spatial Statistics Tools of ArcGIS, fire hotspots area were identified for the acquired active fire dataset. Hot spot analysis that performs to show where you have clusters and where you don't have clusters in any data that you are working with. In other words, it finds places where values that are very different from the average, either really high or really low, cluster together spatially in a nonrandom way. The Hotspot analysis tool returns three levels of confidence ie 90%, 95% and 99% confident. A feature belongs to a nonrandom cluster of high values ie a hot spot or to a nonrandom cluster of low values ie a cold spot. In addition, Spatial autocorrelation helps to understand the degree to which one object is similar to other nearby objects. Moran's I (Index) measures spatial autocorrelation. Positive spatial autocorrelation is when similar values cluster together in a map. Negative spatial autocorrelation is when dissimilar values cluster together in a map. Moran's I can be classified as positive, negative, and no spatial auto-correlation. Positive spatial autocorrelation occurs when Moran's I is close to +1. A value of 0 for Moran's I typically indicates no autocorrelation. The statistical analysis such as preparation of chart, graph and pattern provides an addition information about the fire data distribution in space and time. The course is ended with the preparation of an informative and comprehensive fire hotspots map layout design. The proper compilation of each analyzed data into ArcGIS platform finally concluded into a better and informative map design and presentation. The process of map composition starts with preparation of appropriate layout for the map. Apart from the data, a map has certain other essential components that make map, a package of effective and clear communication.
Overview
Section 1: Overview and Acquisition of Active Fire Data
Lecture 1 Download of VIIRS-375m Active Fire Data from FIRMS
Section 2: Hotspots Analysis (Getis-Ord Gi*)
Lecture 2 Fire Data Preparation and Spatial Autocorrelation
Lecture 3 Fire Hotspots Analysis
Section 3: Statistical Analysis of Fire Data Distribution
Lecture 4 Creation of Chart, Graph and Statistical Analysis
Section 4: Map Layout Design
Lecture 5 Fire Hotspots Map Layout Design
Civil Engineer,Environmentalist,Forestry,Geologist,Urban Planner,Natural Resource Management,Bio diversity,Engineer,GIS Enthusiastic


Homepage
https://www.udemy.com/course/fire-hotspots-analysis-using-gis/


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