Fighting Natural Hazards with Satellite Products

Year after year, somewhere on Earth, natural or manmade disasters cause loss of life and widespread destruction, frequently spawning refugee situations. Major disasters can temporarily make existing maps obsolete, rewriting river boundaries, shorelines, and land features in an instant. When disasters strike and decision makers need to understand new situations on the ground, the best source of information often comes from the sky. Satellites, like Landsat, can tell decision makers what damage disasters have done, providing timely insight into flood extents, fire boundaries, lava flow directions, road traversability, and oil slick movements.

Floods are one of the most destructive natural disasters, which normally result in adversely sizeable impacts to human and regional economy of affected areas. Due to the sudden occurrence and short-term duration of flood events; the exploitation of multitemporal data is of paramount importance in order to observe and monitor the extent of flood disasters.

Floodplain Mapping

Landsat 8 imagery can easily contribute to the development of techniques for mapping flood extent and assessing flood damages through the combination of Remote Sensing and Geographical Information System (GIS) operations in order to improve the efficiency of flood disaster monitoring and management. Below you can browse an example of floodplain mapping (Colorado floods, 2013) using remote sensing products. More specifically, for the identification and classification of the flooded areas, a machine learning classification algorithm as well as an automated threshold algorithm for the Normalized Difference Water Index – NDWI (a satellite derived index from the Near Infrared and the Short Wave Infrared band) were implemented in order to automatically detect them.

Before the flood event in Colorado, 2013

Forest Fires

On the other hand, forest fires are a major disaster as well since they destroy forest resources and deprecate the local ecological environment. In this framework, satellite remote sensing offers a useful tool for fire monitoring, management and damage assessment. Fire affected areas can be discriminated in a remote sensing image due to the strong contrast with the unburned areas.

Burn scar maps derived from remote sensing images provide information on the spatial extent and distribution of the fire affected areas and the total area burned. The burned area, together with land cover information, provide the basis for estimating emission of carbon dioxide and help decision makers to assess the post fire damage to the economy and environment. The example below illustrates fire assessment in Canada that has been implemented using remote sensing products. For this example, the Normalized Burned Ration Index – NBRI calculated from near-infrared and short wave-infrared spectral bands was used. More specifically, one NBRI image before the fire event and one after the fire event were respectively selected. The difference among these NBRI images highlights the burned areas and can be used to monitor the behavior of the ecosystem as the time passes.

Before the fire event, Canada 2016

After the fire event, Canada 2016

Fire assessment and burnt areas calculation, Canada 2016

Concluding, Landsat 8 imagery can significantly contribute in natural hazard assessment anywhere in the world. You can easily download and process Landsat 8 raw data from various platforms freely (like Earth Explorer by USGS, Amazon AWS, Google Earth Engine) in order to make your own maps. In addition, you can use online tools and platforms that offer ready-to-use, high-end remote sensing products and maps which you can download and use on your projects.

Some of them are:

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ArcGIS will now offer satellite imagery and a powerful remote sensing analytics

Today Esri announced that it has partnered with DigitalGlobe, and Harris to offer ArcGIS users access to a library of satellite imagery along with analytical and deep learning tools designed to help users gain insights from imagery at scale.

DigitalGlobe resources are huge. They have 17-year, time-lapse library of satellite imagery for the whole world. Combined with powerful Harris’ ENVI remote sensing analytics platform will give Esri users a powerful new set of tool that will allow making a full use of satellite data.

The new service will be called AllAccess+Analytics and will integrate DigitalGlobe’s Geospatial Big Data platform – GBDX, with Esri’s ArcGIS Enterprise 10.5 and Harris’ ENVI remote sensing analytics software. The images will be hosted on GBDX where users will be able to leverage the platform’s machine learning algorithms, together with Esri Raster Analytics, and ENVI imagery analytics. Everything will be accessible via ArcGIS. We can read in the press release:

“The AllAccess+Analytics offering will allow subscribers to tap into more than 100 petabytes of the world’s highest-quality commercial satellite imagery and the industry’s most advanced analytic and machine learning tools. By integrating directly with the Esri environment used by tens of thousands GIS professionals every day, we are making it easier to access our industry-leading image library and answer complex questions at global scale with world-class analytical capabilities.”

As Matt Sheehan pointed out this announcement is fascinating because it plugs petabytes of DigitalGlobe data and powerful analytics capabilities directly into ArcGIS, and I totally agree with him.

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