diff --git a/datasets/co2.mdx b/datasets/co2.mdx
index e479eaecb..43ea2a71b 100644
--- a/datasets/co2.mdx
+++ b/datasets/co2.mdx
@@ -1,7 +1,7 @@
---
id: co2
name: "Carbon Dioxide"
-description: "The Impact of the COVID-19 Pandemic on Atmospheric CO2"
+description: "The Impact of the COVID-19 Pandemic on Atmospheric CO₂"
media:
src: ::file ./co2--dataset-cover.jpg
alt: Power plant shooting steam at the sky.
@@ -16,7 +16,7 @@ taxonomy:
layers:
- id: co2-mean
stacCol: co2-mean
- name: Mean CO2
+ name: Mean CO₂
type: raster
description: "The average background concentration of carbon dioxide (CO₂) in our atmosphere."
initialDatetime: newest
@@ -53,7 +53,7 @@ layers:
- mean
- id: co2-diff
stacCol: co2-diff
- name: Difference CO2
+ name: Difference CO₂
type: raster
description: "The changes in carbon dioxide (CO₂) levels in our atmosphere versus previous years."
initialDatetime: newest
@@ -89,30 +89,30 @@ layers:
- ## Tracking CO2
+ ## Tracking CO₂
- Lockdowns and other social distancing measures implemented in response to the COVID-19 pandemic have led to temporary reductions in carbon dioxide (CO2) emissions from fossil fuel combustion and other human activities.
+ Lockdowns and other social distancing measures implemented in response to the COVID-19 pandemic have led to temporary reductions in carbon dioxide (CO₂) emissions from fossil fuel combustion and other human activities.
-Scientists largely agree that the build-up of excess CO2 and other greenhouse gases within Earth's atmosphere has contributed to the rapid increase of global climate change. Determining whether these temporary reductions in CO2 emission are significant enough to contribute to the overall lowering of the world's carbon footprint will require more time and rigorous scientific study.
+Scientists largely agree that the build-up of excess CO₂ and other greenhouse gases within Earth's atmosphere has contributed to the rapid increase of global climate change. Determining whether these temporary reductions in CO₂ emission are significant enough to contribute to the overall lowering of the world's carbon footprint will require more time and rigorous scientific study.
-However, initial studies suggest that although COVID-19-related CO2 emission reductions are expected to slow the speed at which CO2 accumulates in the atmosphere, they will not reduce the overall atmospheric concentration of CO2.
+However, initial studies suggest that although COVID-19-related CO₂ emission reductions are expected to slow the speed at which CO₂ accumulates in the atmosphere, they will not reduce the overall atmospheric concentration of CO₂.
-CO2 emission reductions have been accompanied by comparable, or even greater, reductions in emissions of short-lived air pollutants, such as nitrogen dioxide (NO2). While fossil fuel combustion emits far more CO2 than NO2, much smaller relative changes are expected for atmospheric CO2 because it has a much longer atmospheric lifetime and there is much more CO2 in the atmosphere than NO2. Therefore, time-dependent, regional-scale changes in CO2 concentrations are expected to be no larger than 1 part per million (ppm), out of the normal 415 ppm CO2 background - a change of only 0.25%.
+CO₂ emission reductions have been accompanied by comparable, or even greater, reductions in emissions of short-lived air pollutants, such as nitrogen dioxide (NO2). While fossil fuel combustion emits far more CO₂ than NO2, much smaller relative changes are expected for atmospheric CO₂ because it has a much longer atmospheric lifetime and there is much more CO₂ in the atmosphere than NO2. Therefore, time-dependent, regional-scale changes in CO₂ concentrations are expected to be no larger than 1 part per million (ppm), out of the normal 415 ppm CO₂ background - a change of only 0.25%.
-To track atmospheric CO2 changes resulting from the lockdowns, observations collected by the NASA Orbiting Carbon Observatory-2 (OCO-2) satellite and Japan's Greenhouse gases Observing SATellite (GOSAT) during the first few months of 2020 were compared to results collected in previous years. The OCO-2 results were used to search for changes on regional scales over the globe. Targeted observations from GOSAT were used to track changes in large urban areas, such as Beijing, Tokyo, Mumbai, and New York. Both types of observations yielded key insights into the CO2 changes accompanying the economic disruptions caused by the COVID-19 pandemic.
+To track atmospheric CO₂ changes resulting from the lockdowns, observations collected by the NASA Orbiting Carbon Observatory-2 (OCO-2) satellite and Japan's Greenhouse gases Observing SATellite (GOSAT) during the first few months of 2020 were compared to results collected in previous years. The OCO-2 results were used to search for changes on regional scales over the globe. Targeted observations from GOSAT were used to track changes in large urban areas, such as Beijing, Tokyo, Mumbai, and New York. Both types of observations yielded key insights into the CO₂ changes accompanying the economic disruptions caused by the COVID-19 pandemic.
- ### Regional Scale Changes in CO2 across the Globe
+ ### Regional Scale Changes in CO₂ across the Globe
- To determine whether short-term reductions in CO2 emissions from coronavirus shutdowns are even detectable on a regional scale, scientists must create new methods of data analysis with enough sensitivity and precision to distinguish between normal seasonal changes in background CO2 levels and small perturbations caused by coronavirus shutdowns.
+ To determine whether short-term reductions in CO₂ emissions from coronavirus shutdowns are even detectable on a regional scale, scientists must create new methods of data analysis with enough sensitivity and precision to distinguish between normal seasonal changes in background CO₂ levels and small perturbations caused by coronavirus shutdowns.
- To do this, scientists compare the timing of model-derived global atmospheric CO2 concentration variations constrained by OCO-2 measurements with CO2 emission changes estimated from fossil fuel use statistics from the Global Carbon Project. These comparisons focus on months coinciding with peak COVID-19 isolation periods to see if the emission reductions were accompanied by detectable, regional-scale CO2 changes.
+ To do this, scientists compare the timing of model-derived global atmospheric CO₂ concentration variations constrained by OCO-2 measurements with CO₂ emission changes estimated from fossil fuel use statistics from the Global Carbon Project. These comparisons focus on months coinciding with peak COVID-19 isolation periods to see if the emission reductions were accompanied by detectable, regional-scale CO₂ changes.
- The maps below show these comparisons for the peak periods of the lockdowns in China (early February), southern Europe (early April) and the eastern U.S. (late April). The results show small (about 0.5 parts per million, or 0.125%) reductions in CO2 over each region at times that are well aligned with the largest CO2 emissions reductions in those regions reported by the Global Carbon Project. The CO2 map for late April (panel c) also appears to show a rebound in CO2 levels over East Asia and northern Pacific Ocean in late April, as China began to emerge from its coronavirus lockdowns. Many features are not likely to be associated with the lockdowns. The enhanced CO2 values in the southern hemisphere are probably due in part to the large wildfires over Australia in late December 2019, while the enhanced values in central Asia in April include contributions from wildfires in Siberia.
+ The maps below show these comparisons for the peak periods of the lockdowns in China (early February), southern Europe (early April) and the eastern U.S. (late April). The results show small (about 0.5 parts per million, or 0.125%) reductions in CO₂ over each region at times that are well aligned with the largest CO₂ emissions reductions in those regions reported by the Global Carbon Project. The CO₂ map for late April (panel c) also appears to show a rebound in CO₂ levels over East Asia and northern Pacific Ocean in late April, as China began to emerge from its coronavirus lockdowns. Many features are not likely to be associated with the lockdowns. The enhanced CO₂ values in the southern hemisphere are probably due in part to the large wildfires over Australia in late December 2019, while the enhanced values in central Asia in April include contributions from wildfires in Siberia.
@@ -121,13 +121,13 @@ To track atmospheric CO2 changes resulting from the lockdowns, observations coll
@@ -136,27 +136,27 @@ To track atmospheric CO2 changes resulting from the lockdowns, observations coll
- ### CO2 Changes over Large Urban Areas
+ ### CO₂ Changes over Large Urban Areas
- Scientists use GOSAT data to determine changes in atmospheric CO2 over large urban areas, which experienced the largest changes in economic activity associated with the onset of the COVID-19 pandemic. While OCO-2 is optimized for detecting the subtle, regional-scale changes in CO2, GOSAT has advantages for tracking changes in CO2 emissions over large cities.
+ Scientists use GOSAT data to determine changes in atmospheric CO₂ over large urban areas, which experienced the largest changes in economic activity associated with the onset of the COVID-19 pandemic. While OCO-2 is optimized for detecting the subtle, regional-scale changes in CO₂, GOSAT has advantages for tracking changes in CO₂ emissions over large cities.
- GOSAT observations were analyzed to reveal CO2 concentration enhancements, such as fossil fuel emissions that contribute to higher levels of CO2 lower down in atmosphere over cities, relative to the CO2 concentrations at higher altitudes, which are less affected by city emissions. The figure below shows the CO2 concentration enhancements over Beijing, China, derived from GOSAT observations collected in January through April of each year from 2017 to 2020. The results from earlier years illustrate the amount of month-to-month variability in the observed CO2 enhancements that is typical during this season. However, while the CO2 concentration enhancements vary substantially from month-to-month, they are generally much lower in 2020 than in earlier years.
+ GOSAT observations were analyzed to reveal CO₂ concentration enhancements, such as fossil fuel emissions that contribute to higher levels of CO₂ lower down in atmosphere over cities, relative to the CO₂ concentrations at higher altitudes, which are less affected by city emissions. The figure below shows the CO₂ concentration enhancements over Beijing, China, derived from GOSAT observations collected in January through April of each year from 2017 to 2020. The results from earlier years illustrate the amount of month-to-month variability in the observed CO₂ enhancements that is typical during this season. However, while the CO₂ concentration enhancements vary substantially from month-to-month, they are generally much lower in 2020 than in earlier years.
- Further inspection of the Beijing results reveals that all months in 2020 have smaller CO2 enhancements relative to prior years. While this behavior is consistent with reported COVID-19-related reductions in fossil fuel emissions from Beijing, it is important to remember that these results include variations in CO2 concentrations not only from COVID-19 shutdowns, but also from other processes such as photosynthesis and respiration by plants and transport by passing weather systems.
+ Further inspection of the Beijing results reveals that all months in 2020 have smaller CO₂ enhancements relative to prior years. While this behavior is consistent with reported COVID-19-related reductions in fossil fuel emissions from Beijing, it is important to remember that these results include variations in CO₂ concentrations not only from COVID-19 shutdowns, but also from other processes such as photosynthesis and respiration by plants and transport by passing weather systems.
- Similar results were derived for the other cities. Shanghai shows reduced CO2 enhancements from February through April 2020. For New York, CO2 values were higher in January 2020, close to normal for February, and lower in March, as lockdowns were imposed. There is no data for New York in April due to cloud cover. In New Delhi, Mumbai and Dhaka, the story is somewhat more mixed. The CO2 enhancements are smaller or almost the same in February, reflecting the large role of natural processes, such as year-to-year differences in CO2 uptake and release by forests and crops. In March 2020, CO2 enhancements are higher than in earlier years in New Delhi, and lower in Mumbai and Dhaka. The CO2 enhancements decrease across all three cities in April, as lockdowns are implemented. However, these changes are very difficult to attribute to the pandemic because of the large-scale natural CO2 changes seen across India during this season.
+ Similar results were derived for the other cities. Shanghai shows reduced CO₂ enhancements from February through April 2020. For New York, CO₂ values were higher in January 2020, close to normal for February, and lower in March, as lockdowns were imposed. There is no data for New York in April due to cloud cover. In New Delhi, Mumbai and Dhaka, the story is somewhat more mixed. The CO₂ enhancements are smaller or almost the same in February, reflecting the large role of natural processes, such as year-to-year differences in CO₂ uptake and release by forests and crops. In March 2020, CO₂ enhancements are higher than in earlier years in New Delhi, and lower in Mumbai and Dhaka. The CO₂ enhancements decrease across all three cities in April, as lockdowns are implemented. However, these changes are very difficult to attribute to the pandemic because of the large-scale natural CO₂ changes seen across India during this season.
diff --git a/stories/locfeature.HYPER/carousel_content.json b/stories/locfeature.HYPER/carousel_content.json
index 15b553091..0819cfd1c 100644
--- a/stories/locfeature.HYPER/carousel_content.json
+++ b/stories/locfeature.HYPER/carousel_content.json
@@ -37,7 +37,7 @@
"caption":"This 3-D view of our atmosphere shows the rise of carbon dioxide levels from 2020 to 2021. The world’s vegetation and oceans absorb about half of human carbon dioxide emissions. However data stretching as far back as the 1950s, taken from sensors on the ground, show a steady upward march in carbon dioxide concentrations."
},{
"src":"https://www.youtube.com/embed/d-bFeE4YZ6s",
- "title":"Net Ecosystem CO2 Exchange",
+ "title":"Net Ecosystem CO₂ Exchange",
"caption":"In colors of green and purple, this map shows ecosystems emitting and absorbing carbon dioxide from 2003 to 2017. Green shows plants absorbing the carbon dioxide, with more absorption during the spring and summer growing seasons. Purples shows plants releasing much of this carbon dioxide back to the atmosphere during the fall and winter. "
},{
"src":"https://www.youtube.com/embed/35QjTwIG-eg",
diff --git a/stories/theme.AG_.introduction_agriculture/carousel_content.json b/stories/theme.AG_.introduction_agriculture/carousel_content.json
index ea9efa216..904950454 100644
--- a/stories/theme.AG_.introduction_agriculture/carousel_content.json
+++ b/stories/theme.AG_.introduction_agriculture/carousel_content.json
@@ -19,5 +19,9 @@
"src":"https://www.youtube.com/embed/SPHtB88ra6c",
"title":"Relative Wetness Root Zone Versus Groundwater Comparison",
"caption":"These maps combine satellite and ground-based measurements to model the relative amount of water stored at two different depths: plant root level and underground. The brown regions represent dry conditions. The blue regions represent wet areas. The maps do not attempt to represent human consumption of water; but rather, they show changes in water storage related to weather, climate, and seasonal patterns. NASA researchers developed these maps with data incorporated data from the joint NASA-German Gravity Recovery and Climate Experiment (GRACE) and GRACE Follow-On (GRACE-FO) missions in partnership with the National Drought Mitigation Center."
+ },{
+ "src":"https://www.youtube.com/embed/6z58cOh_1TA",
+ "title":"Increasingly Dangerous Climate for Agricultural Workers",
+ "caption":"A warming climate will create challenges for agricultural workers as well as the crops which they grow. This visualization shows the increased number of days per year that are expected to have a NOAA Heat Index greater than 103 degrees Fahrenheit, a threshold that NOAA labels \u2018dangerous\u2019 given that people struggle to regulate their body temperatures at this level of heat and humidity. These results are from an ensemble of 22 global climate models from the Sixth Coupled Model Intercomparison Project (CMIP6) bias-adjusted by the NASA Earth Exchange (NEX GDDP). Two projections are visualized, one for a moderate emissions climate scenerio (SSP2-4.5) and one for a high emmissions climate scenerio (SSP5-8.5).\nVisualizations by: Mark SubbaRao, Scientific consulting by: Alex C. Ruane\nFor more information or to download this public domain video, go to https://svs.gsfc.nasa.gov/4972"
}
-]
+]
\ No newline at end of file
diff --git a/stories/theme.AG_.introduction_agriculture/elnino_crops.jpg b/stories/theme.AG_.introduction_agriculture/elnino_crops.jpg
new file mode 100644
index 000000000..67bfc20b4
Binary files /dev/null and b/stories/theme.AG_.introduction_agriculture/elnino_crops.jpg differ
diff --git a/stories/theme.AG_.mdx b/stories/theme.AG_.mdx
index 1814881af..9269cc29b 100644
--- a/stories/theme.AG_.mdx
+++ b/stories/theme.AG_.mdx
@@ -30,12 +30,24 @@ import contentArray from './theme.AG_.introduction_agriculture/carousel_content.
- ## Info
- Producing food has always been challenging, and in the 21st century, human-caused climate change is already affecting food security through increasing temperatures, increased frequency of extreme events, and changing precipitation patterns.
+ ## Info
+ Producing food has always been challenging, and in the 21st century, human-caused climate change is already affecting food security through increasing temperatures, increased frequency of extreme events and changing precipitation patterns.
- Earth data has increasingly become part of the food farming process.
- Observations from satellites, aircraft, ground sensors, and surveys, combined with high-end computer modeling are used by scientists working with federal agencies who collaborate with farmers, ranchers, fishermen, and decision-makers to share their understanding of the relationship between the Earth system and the environments that provide food across the globe.
+ Earth data have increasingly become part of the food farming process.
+ Observations from satellites, aircraft, ground sensors and surveys, combined with high-end computer modeling are used by scientists working with Federal agencies who collaborate with farmers, ranchers, fishermen and decision-makers to share their understanding of the relationship between the Earth system and the environments that provide food across the globe.
+
@@ -51,16 +63,6 @@ import contentArray from './theme.AG_.introduction_agriculture/carousel_content.
-
-
- ## Agriculture
- Producing food has always been challenging, and in the 21st century, human-caused climate change is already affecting food security through increasing temperatures, increased frequency of extreme events and changing precipitation patterns.
-
- Earth data have increasingly become part of the food farming process.
- Observations from satellites, aircraft, ground sensors and surveys, combined with high-end computer modeling are used by scientists working with Federal agencies who collaborate with farmers, ranchers, fishermen and decision-makers to share their understanding of the relationship between the Earth system and the environments that provide food across the globe.
-
-
-
-
-
- ## Air Quality
- Air pollution is a global hazard, so it takes a combination of airborne, ground and satellite-based tools to better understand the origins and movement of pollutants, as well as the impacts on air quality.
- The causes of air pollution vary from human activities, such as coal-fired power plants, to natural events, like wildfires and dust storms.
-
- Ground-based measurements are also used to assess air quality and the concentrations of different types of atmospheric pollution. Satellite data help fill the gaps between ground-based monitors, so there is global coverage over all neighborhoods.
-
- Satellite-acquired data have many health and air-quality applications, including:
- * Monitoring the movement of wildfire smoke and dust plumes.
- * Tracking the path of ash from volcanic eruptions.
- * Identifying concentrations of nitrogen dioxide, sulfur dioxide and other pollutants near cities, suburbs and major transportation systems.
- * Understanding how concentrations of these pollutants are changing over time.
-
-
-
### DID YOU KNOW?
- The ozone hole is primarily caused by human-produced chemicals like chlorofluorocarbons (CFCs), which were banned by an international treaty in 1989 to protect our natural sunscreen. Modern global warming is driven by greenhouse gases like carbon dioxide (CO2) and is primarily linked to the burning of fossil fuels.
+ The ozone hole is primarily caused by human-produced chemicals like chlorofluorocarbons (CFCs), which were banned by an international treaty in 1989 to protect our natural sunscreen. Modern global warming is driven by greenhouse gases like carbon dioxide (CO₂) and is primarily linked to the burning of fossil fuels.
-
-
\ No newline at end of file
+---
\ No newline at end of file
diff --git a/stories/theme.BIO.introduction_biodiversity/carousel_content.json b/stories/theme.BIO.introduction_biodiversity/carousel_content.json
new file mode 100644
index 000000000..a7d6dcaf5
--- /dev/null
+++ b/stories/theme.BIO.introduction_biodiversity/carousel_content.json
@@ -0,0 +1,19 @@
+[
+ {
+ "src":"https://www.youtube.com/embed/WPOTTd27yyg",
+ "title":"Ecological insights from three decades of animal movement tracking across a changing Arctic",
+ "caption":"The Arctic Animal Movement Archive (AAMA) is a new and growing collection of studies describing movements of animals in and near the Arctic. The AAMA includes millions of locations of thousands of animals over more than three decades, recorded by hundreds of scientists and institutions. By compiling these data, the AAMA supports public data discovery, preserves fundamental baseline data for the future, and facilitates efficient, collaborative data analysis. We have used the AAMA to document climatic influences on the migration phenology of golden eagles, geographic differences in the adaptive response of caribou reproductive phenology to climate change, species-specific changes in terrestrial mammal movement rates in response to increasing temperature, and the utility of animal-borne sensors as proxies for ambient air temperature. The AAMA is a living archive that can be used to uncover other such changes, investigate their causes and consequences, and recognize larger ecosystem changes taking place in the Arctic.\n\nThis visualization shows multiple years of AAMA data as if all of the data were from the same year. Several different groupings of animals are shown: marine mammals, raptors, seabirds, shorebirds, terrestrial mammals, and waterbirds. Snow and sea ice are also shown for context as they correlate to animal movements.\n\nVisualizers: Greg Shirah (lead), Lori Perkins\n\nFor more information or to download this public domain video, go to https://svs.gsfc.nasa.gov/4877"
+ },{
+ "src":"https://www.youtube.com/embed/Ok2iQlTw5DQ",
+ "title":"GEDI Forest Height - Global View",
+ "caption":"The Global Ecosystem Dynamics Investigation (GEDI) produces high resolution laser ranging observations of the 3D structure of the Earth. GEDI's precise measurements of forest canopy height, canopy vertical structure, and surface elevation greatly advance our ability to characterize important carbon and water cycling processes, biodiversity, and habitat.\n\nGEDI's data on surface structure are also of immense value for weather forecasting, forest management, glacier and snowpack monitoring, and the generation of more accurate digital elevation models. GEDI provides the missing piece - 3D structure - in NASA's observational assets which enables us to better understand how the Earth behaves as a system, and guides the actions we can take to sustain critical resources.\n\nThe GEDI instrument is a geodetic-class, light detection and ranging (lidar) laser system comprised of 3 lasers that produce 8 parallel tracks of observations. Each laser fires 242 times per second and illuminates a 25 m spot (a footprint) on the surface over which 3D structure is measured. Each footprint is separated by 60 m along track, with an across-track distance of about 600 m between each of the 8 tracks. GEDI expected to produce about 10 billion cloud-free observations during its nominal 24-month mission length.\n\nTo learn more, visit the GEDI webpage: https://gedi.umd.edu/\n\nThis visualization depicts a global view of forest height data collected by the GEDI instrument aboard the International Space Station. Brown and dark green represent shorter vegetation. Bright green and white represent taller vegetation. This visualization uses data collected between April 2018 and April 2019. Height is exaggerated to depict variation at this scale.\n\nVisualizers: Kel Elkins (lead), Horace Mitchell\n\nFor more information or to download this public domain video, go to https://svs.gsfc.nasa.gov/4950"
+ },{
+ "src":"https://www.youtube.com/embed/ImEdEQtuDkI",
+ "title":"USFS/GEDI Old Growth Forest Visualizations",
+ "caption":"The U.S. Forest Service has studied mature and old-growth forests \u2013 broadly characterized as forests at an advanced stage of development \u2013 in hundreds of thousands of plots across the country. To define, identify, and create the first formal accounting of these national resources, the team assessed decades of field-gathered Forest Inventory and Analysis (FIA) data covering a wide variety of forest types and ecological zones across the country.\n \nComplementing the Forest Service\u2019s analysis, NASA-funded scientists are drawing on a space-based instrument called GEDI (Global Ecosystem Dynamics Investigation) to provide a broad and detailed picture of these forests. From its perch on the International Space Station, GEDI\u2019s laser imager (lidar) is able to peer through dense canopies to observe nearly all of Earth\u2019s temperate and tropical forests. By recording the way the laser pulses are reflected by the ground and by plant material (stems, branches, and leaves) at different heights, GEDI makes detailed measurements of the three-dimensional structure of the planet\u2019s surface. It can even estimate the weight and stature of individual trees.\n \nThe Forest Service plans to work alongside NASA to gather aerial and satellite imagery and map mature and old-growth forests at finer scales. Such data can also help the Forest Service create a long-term monitoring system. Meanwhile, a team of interagency experts will analyze and assess threats and risks to these areas.\nVisualizations by: Kel Elkins\nFor more information or to download this public domain video, go to https://svs.gsfc.nasa.gov/5095"
+ },{
+ "src":"https://www.youtube.com/embed/HA0LQQi_E28",
+ "title":"Atmospheric Carbon Dioxide Tagged by Source",
+ "caption":"Carbon dioxide (CO₂) is the most prevalent greenhouse gas driving global climate change. However, its increase in the atmosphere would be even more rapid without land and ocean carbon sinks, which collectively absorb about half of human emissions every year. Advanced computer modeling techniques in NASA's Global Modeling and Assimilation Office allow us to disentangle the influences of sources and sinks and to better understand where carbon is coming from and going to.\n\nVisualizations by: Andrew J Christensen, Mark SubbaRao, Scientific consulting by: Lesley Ott\nFor more information or to download this public domain video, go to https://svs.gsfc.nasa.gov/5110"
+ }
+]
\ No newline at end of file
diff --git a/stories/theme.BIO.mdx b/stories/theme.BIO.mdx
index fe92ca49b..95c1a81ca 100644
--- a/stories/theme.BIO.mdx
+++ b/stories/theme.BIO.mdx
@@ -27,6 +27,9 @@ taxonomy:
import CardGallery from "./components/card_gallery";
import { biodiversityStoryIds } from "../overrides/common/story-data";
+import Carousel from "../overrides/common/embedded-video-carousel";
+import contentArray from './theme.BIO.introduction_biodiversity/carousel_content.json';
+
## Info
@@ -41,4 +44,23 @@ import { biodiversityStoryIds } from "../overrides/common/story-data";
+
+
+
+
+
+
+
+
\ No newline at end of file
diff --git a/stories/theme.DIS.introduction_disasters/carousel_content.json b/stories/theme.DIS.introduction_disasters/carousel_content.json
index c8500c1c8..cc9da862c 100644
--- a/stories/theme.DIS.introduction_disasters/carousel_content.json
+++ b/stories/theme.DIS.introduction_disasters/carousel_content.json
@@ -6,10 +6,18 @@
},{
"src":"https://www.youtube.com/embed/9QMLSKmL4FU",
"title":"Arctic Sea Ice Spiral",
- "caption":"This data spiral shows the reach of Arctic sea ice from October 1978 to September 2022. This view highlights the loss of Arctic sea ice over the years. To the right are the winter months when the sea ice maximum extent begins outside the yellow line marking 15 million km2 (around 6 million mi2). It then slowly shifts inward, indicating a smaller area of winter sea ice in recent years. On the left, the Arctic sea ice minimum in September shows drastic decreases in size from year to year, at a rate of about 13% per decade."
+ "caption":"This data spiral shows the reach of Arctic sea ice from October 1978 to September 2022. This view highlights the loss of Arctic sea ice over the years. To the right are the winter months when the sea ice maximum extent begins outside the yellow line marking 15 million km² (around 6 million mi²). It then slowly shifts inward, indicating a smaller area of winter sea ice in recent years. On the left, the Arctic sea ice minimum in September shows drastic decreases in size from year to year, at a rate of about 13% per decade."
},{
"src":"https://www.youtube.com/embed/TvPjAe4j6qQ",
"title":"Ocean Flows",
- "caption":"This rainbow of colors show the water temperature on the oceans’ surface. The temperature variations correspond to the flow of currents on the surface. Blue is 32 degrees Fahrenheit, green is 50 -70 F, yellow is about 80 F, red is 90 F. This visualization came from computer models by a joint MIT/NASA-JPL project Estimating the Circulation and Climate of the Ocean, Phase II."
+ "caption":"This rainbow of colors show the water temperature on the oceans’ surface. The temperature variations correspond to the flow of currents on the surface. Blue is 32 degrees Fahrenheit, green is 50-70°F, yellow is about 80°F, red is 90°F. This visualization came from computer models by a joint MIT/NASA-JPL project Estimating the Circulation and Climate of the Ocean, Phase II."
+ },{
+ "src":"https://www.youtube.com/embed/B7n62jOJJqI",
+ "title":"Atlantic Hurricane Wind Speed Plots",
+ "caption":"These simple visualizations are plots of time vs. wind speed for each tropical storm/hurricane of Atlantic Hurricane seasons from 1950 to the present. Horizontal lines indicate wind speed category thresholds. A line plot for each storm shows the storm's name and a marker at the peak wind speed. \n\nMost named storms during the Atlantic hurricane season happen between June and November. However, occasionally, storms develop outside of those ranges.\n\nFour versions of the plots are inluded:\n 1. May to December showig only the current year\n 2. May to December showing the current year and strong storms from previous years (ghosted out)\n 3. January to December showig only the current year\n 4. January to December showing the current year and strong storms from previous years (ghosted out)\n \nThe plot for the current year automatically updates every 2 hours during hurricane season.\nVisualizations by: Greg Shirah\nFor more information or to download this public domain video, go to https://svs.gsfc.nasa.gov/5072"
+ },{
+ "src":"https://www.youtube.com/embed/6-71kC1LT-w",
+ "title":"Predicting Landslides",
+ "caption":"If a slope's underlying foundation is unstable, heavy rainfall could be all it takes to trigger a landslide. In fact, rainfall is the most common catalyst for landslides. An open sourced computer model developed at NASA's Goddard Space Flight Center uses precipitation data to identify areas all over the globe that are potential landslide hazards. The model first looks at areas that have recently experienced heavy rainfall using data from the Global Precipitation Measurement (GPM) mission. When the rainfall estimates are unusually high, the model checks other known conditions of the area that may encourage landslides, such as recent road construction, steep hills, and other factors. A \"nowcast\" map then combines the rainfall data and these other factors to mark areas that might have landslides. Scientists have used these models to conduct studies on long term landslide patterns and landslide warning signs. Watch the video to learn more.\nVisualizations by: Helen-Nicole Kostis, Scientific consulting by: Dalia B Kirschbaum, Thomas A. Stanley, Produced by: Joy Ng, Ryan Fitzgibbons, Written by: Kasha Patel\nFor more information or to download this public domain video, go to https://svs.gsfc.nasa.gov/13126"
}
-]
\ No newline at end of file
+]
diff --git a/stories/theme.DIS.mdx b/stories/theme.DIS.mdx
index ae369f1e0..6fedeef1b 100644
--- a/stories/theme.DIS.mdx
+++ b/stories/theme.DIS.mdx
@@ -52,14 +52,6 @@ import contentArray from './theme.DIS.introduction_disasters/carousel_content.js
-
-
- ## Disasters
- Hurricanes, tropical cyclones, blizzards, landslides, floods and droughts -- when they arrive in communities they can turn into a disaster. As climate change is spurring more extreme weather events, disasters are becoming more costly and damaging. Earth data and rapid information sharing between agencies are more important than ever.
- Before, during and after disasters strike, Federal agencies coordinate with decision-makers and local governments, providing actionable data to recover from disaster impacts and build resilient communities.
-
-
-