Countless phenomena such as floods, fires, and algae blooms routinely impact ecosystems, economies, and human safety. Your challenge is to use satellite data to create a machine learning model that detects a specific phenomenon and build an interface that not only displays the detected phenomenon, but also layers it alongside ancillary data to help researchers and decision-makers better understand its impacts and scopeFor example, dramatic imagery of tropical cyclones is used to understand storm size and severity. Strong wind events and thunderstorms can create widespread, blowing dust that limits visibility and impacts local health. In some scenarios, light to calm winds allow for broad development of low clouds and fog that limit visibility with impacts to pilots and road travel. Heavy rain events can lead to rapid snowmelt and other factors contributing to flooding conditions lasting for days or weeks, and severe thunderstorms can produce damaging winds, hail, and tornadoes with damage visible to crops and other vegetation.
In order for researchers to conduct detailed studies and create mitigation strategies to reduce these impacts, they need to be able to detect natural phenomena quickly and study them in depth. Earth observations from open-access NASA data sets are often used to monitor these hazards and their impacts. Machine learning-based models can help researchers rapidly map hazardous weather situations, and assess their intensity and scope of impacts.
NASA produces large volumes of satellite remote sensing data that could be used to detect and track natural phenomena. However, many of the phenomena are not detected or tracked automatically within the vast data archives. This leaves researchers with the monumental task of manually searching through petabytes of data for occurrences of the phenomena.
Countless phenomena such as floods, fires, and algae blooms routinely impact ecosystems, economies, and human safety. Your challenge is to use satellite data to create a machine learning model that detects a specific phenomenon and build an interface that not only displays the detected phenomenon, but also layers it alongside ancillary data to help researchers and decision-makers better understand its impacts and scopeFor example, dramatic imagery of tropical cyclones is used to understand storm size and severity. Strong wind events and thunderstorms can create widespread, blowing dust that limits visibility and impacts local health. In some scenarios, light to calm winds allow for broad development of low clouds and fog that limit visibility with impacts to pilots and road travel. Heavy rain events can lead to rapid snowmelt and other factors contributing to flooding conditions lasting for days or weeks, and severe thunderstorms can produce damaging winds, hail, and tornadoes with damage visible to crops and other vegetation.
In order for researchers to conduct detailed studies and create mitigation strategies to reduce these impacts, they need to be able to detect natural phenomena quickly and study them in depth. Earth observations from open-access NASA data sets are often used to monitor these hazards and their impacts. Machine learning-based models can help researchers rapidly map hazardous weather situations, and assess their intensity and scope of impacts.
NASA produces large volumes of satellite remote sensing data that could be used to detect and track natural phenomena. However, many of the phenomena are not detected or tracked automatically within the vast data archives. This leaves researchers with the monumental task of manually searching through petabytes of data for occurrences of the phenomena.
Countless phenomena such as floods, fires, and algae blooms routinely impact ecosystems, economies, and human safety. Your challenge is to use satellite data to create a machine learning model that detects a specific phenomenon and build an interface that not only displays the detected phenomenon, but also layers it alongside ancillary data to help researchers and decision-makers better understand its impacts and scopeFor example, dramatic imagery of tropical cyclones is used to understand storm size and severity. Strong wind events and thunderstorms can create widespread, blowing dust that limits visibility and impacts local health. In some scenarios, light to calm winds allow for broad development of low clouds and fog that limit visibility with impacts to pilots and road travel. Heavy rain events can lead to rapid snowmelt and other factors contributing to flooding conditions lasting for days or weeks, and severe thunderstorms can produce damaging winds, hail, and tornadoes with damage visible to crops and other vegetation.
In order for researchers to conduct detailed studies and create mitigation strategies to reduce these impacts, they need to be able to detect natural phenomena quickly and study them in depth. Earth observations from open-access NASA data sets are often used to monitor these hazards and their impacts. Machine learning-based models can help researchers rapidly map hazardous weather situations, and assess their intensity and scope of impacts.
NASA produces large volumes of satellite remote sensing data that could be used to detect and track natural phenomena. However, many of the phenomena are not detected or tracked automatically within the vast data archives. This leaves researchers with the monumental task of manually searching through petabytes of data for occurrences of the phenomena.
ESA, JAXA, CSA, CNES,MOPITT,JASMINE