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Fix broken links in a few data & story mdx files #388

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2 changes: 1 addition & 1 deletion datasets/global-reanalysis-da.data.mdx
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Expand Up @@ -368,7 +368,7 @@ The output variables available on VEDA include evapotranspiration (ET), gross pr
<Block>
<Prose>
## Explore the Data
The global reanalysis is a large dataset with nearly two decades of daily output. Here we show a comparison of two dates for a single variable. We encourage users to <Link to='/datasets/global-reanalysis-da/explore'>Explore the Data></Link> to look at different dates and to compare variables.
The global reanalysis is a large dataset with nearly two decades of daily output. Here we show a comparison of two dates for a single variable. We encourage users to <Link to='/data-catalog/global-reanalysis-da/explore'>Explore the Data</Link> to look at different dates and to compare variables.

An example of how trends calculated from the global reanalysis model output can be used to understand changes in TWS, GPP, and ET, can be seen in the <Link to='/stories/tws-trends'>corresponding data story</Link>.
</Prose>
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2 changes: 1 addition & 1 deletion datasets/lis.da.trend.data.mdx
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Expand Up @@ -90,7 +90,7 @@ layers:

* [EIS Freshwater](https://freshwater.eis.smce.nasa.gov/)
* [Land Information System](https://lis.gsfc.nasa.gov/)
* [Global Reanalysis Dataset page](https://www.earthdata.nasa.gov/dashboard/eis/datasets)
* [Global Reanalysis Dataset page](https://www.earthdata.nasa.gov/dashboard/data-catalog)
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🔧 : Oops, if this is supposed to be eis datasets, then it might be https://www.earthdata.nasa.gov/dashboard/data-catalog?taxonomy=%7B%22Topics%22%3A%22eis%22%7D instead? @j08lue can you confirm?

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And yes, it is correct to replace this with a taxonomy filter. 💯

</Prose>
</Block>

4 changes: 2 additions & 2 deletions stories/projected-changes-WUS-snow.stories.mdx
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Expand Up @@ -21,7 +21,7 @@ taxonomy:
## Introduction
🚧 This Discovery presents work in progress and not peer-reviewed results! 🚧

Over half of the annual runoff in the Western United States originates from seasonal snowpack. However, seasonal snowpack is threatened by future changes to climate. The impacts of climate change on snowpack are particularly important in mountainous regions, which behave like “water towers”, storing water in the winter, and releasing water through snowmelt in the spring and summer. In this discovery, we combine [NASA-downscaled climate projections](https://www.nasa.gov/nex/gddp) and [NASA land surface modeling tools](https://lis.gsfc.nasa.gov/) to investigate how climate change could impact snow water resources (datasets available [here](https://www.earthdata.nasa.gov/dashboard/eis/datasets)). We look at five mountainous domains in the Western U.S., and infer how changes to snow water resources could change the availability of wildlife habitat. This research was performed in collaboration with the Cooperative Institute for Research in Environmental Sciences, with feedback from the US Fish and Wildlife Service.
Over half of the annual runoff in the Western United States originates from seasonal snowpack. However, seasonal snowpack is threatened by future changes to climate. The impacts of climate change on snowpack are particularly important in mountainous regions, which behave like “water towers”, storing water in the winter, and releasing water through snowmelt in the spring and summer. In this discovery, we combine [NASA-downscaled climate projections](https://www.nasa.gov/nex/gddp) and [NASA land surface modeling tools](https://lis.gsfc.nasa.gov/) to investigate how climate change could impact snow water resources (datasets available [here](https://www.earthdata.nasa.gov/dashboard/data-catalog)). We look at five mountainous domains in the Western U.S., and infer how changes to snow water resources could change the availability of wildlife habitat. This research was performed in collaboration with the Cooperative Institute for Research in Environmental Sciences, with feedback from the US Fish and Wildlife Service.

Join the discussion and provide comments on this Discovery at https://github.com/orgs/Earth-Information-System/discussions.

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<Block type='wide'>
<Prose>
The data presented in this discovery includes model results generated using [NASA-downscaled climate projections](https://www.nasa.gov/nex/gddp) and [NASA modeling tools](https://lis.gsfc.nasa.gov/). Additional model outputs can be accessed in the VEDA datasets pages, ensemble-median [snow projections](https://www.earthdata.nasa.gov/dashboard/eis/datasets/snow-projections-median) and [projected percent-changes to snow water equivalent](https://www.earthdata.nasa.gov/dashboard/eis/datasets/snow-projections-diff). The data presented is preliminary, and not yet peer-reviewed. Users are encouraged to contact the project authors for inquiries about this data.
The data presented in this discovery includes model results generated using [NASA-downscaled climate projections](https://www.nasa.gov/nex/gddp) and [NASA modeling tools](https://lis.gsfc.nasa.gov/). Additional model outputs can be accessed in the VEDA datasets pages, ensemble-median [snow projections](https://www.earthdata.nasa.gov/dashboard/data-catalog/snow-projections-median) and [projected percent-changes to snow water equivalent](https://www.earthdata.nasa.gov/dashboard/data-catalog/snow-projections-diff). The data presented is preliminary, and not yet peer-reviewed. Users are encouraged to contact the project authors for inquiries about this data.
</Prose>
</Block>
4 changes: 2 additions & 2 deletions stories/tws-trends.stories.mdx
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Expand Up @@ -22,7 +22,7 @@ taxonomy:

Freshwater is what makes Earth habitable, sustaining ecosystems and human civilization. The global water cycle supplies water and regulates weather patterns. The cycling of water links the changes on land with the ocean and atmosphere. Understanding the variability and availability of freshwater is challenging because of multiple earth processes that continually interact with each other, including those that govern precipitation, ground soil moisture retention, snow accumulation and melt, evapotranspiration and vegetation dynamics. Such processes become even more complex under human water resources management.

The EIS team integrates the Noah-MP land surface model within [NASA’s LIS framework](https://lis.gsfc.nasa.gov/) and Earth observations by assimilating soil moisture from the Climate Change Initiative Program released by European Space Agency ([ESA CCI](https://esa-soilmoisture-cci.org/)), leaf area index from Moderate Resolution Imaging Spectroradiometer ([MODIS](https://lpdaac.usgs.gov/products/mcd15a2hv006/)), and terrestrial water storage anomalies from Gravity Recovery and Climate Experiment and the follow-on satellites ([GRACE/GRACE-FO](https://earth.gsfc.nasa.gov/geo/data/grace-mascons)). Using this data assimilation approach, the team provides a daily global water cycle reanalysis product for 2003-2021 at a 10 km spatial resolution. This allows us to better quantify surface variables and groundwater, human management influence, and hydrological extremes. These resulting reanalysis datasets are publicly available and interactable via this NASA VEDA platform, including key water, energy, and carbon fluxes such as terrestrial water storage (TWS) and gross primary production (GPP). For more information, please visit the corresponding [VEDA dataset page](https://www.earthdata.nasa.gov/dashboard/eis/datasets).
The EIS team integrates the Noah-MP land surface model within [NASA’s LIS framework](https://lis.gsfc.nasa.gov/) and Earth observations by assimilating soil moisture from the Climate Change Initiative Program released by European Space Agency ([ESA CCI](https://esa-soilmoisture-cci.org/)), leaf area index from Moderate Resolution Imaging Spectroradiometer ([MODIS](https://lpdaac.usgs.gov/products/mcd15a2hv006/)), and terrestrial water storage anomalies from Gravity Recovery and Climate Experiment and the follow-on satellites ([GRACE/GRACE-FO](https://earth.gsfc.nasa.gov/geo/data/grace-mascons)). Using this data assimilation approach, the team provides a daily global water cycle reanalysis product for 2003-2021 at a 10 km spatial resolution. This allows us to better quantify surface variables and groundwater, human management influence, and hydrological extremes. These resulting reanalysis datasets are publicly available and interactable via this NASA VEDA platform, including key water, energy, and carbon fluxes such as terrestrial water storage (TWS) and gross primary production (GPP). For more information, please visit the corresponding [VEDA dataset page](https://www.earthdata.nasa.gov/dashboard/data-catalog).

Join the discussion and provide comments on this Discovery at https://github.com/orgs/Earth-Information-System/discussions.

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<Block>
<Prose>
## Comparing the trends in water and carbon cycles
We applied a seasonal and trend decomposition algorithm to get the trend estimates for terrestrial water storage and gross primary production. The method can better help to deal with [nonstationarities](https://github.com/Earth-Information-System/sea-level-and-coastal-risk/blob/main/AMS_2023_Wanshu_Nie_for_VEDA_Discovery.pdf) and seasonal shifts and provide a more robust estimate of trends. These trend data sets are also provided in the [VEDA dataset page](https://www.earthdata.nasa.gov/dashboard/eis/datasets).
We applied a seasonal and trend decomposition algorithm to get the trend estimates for terrestrial water storage and gross primary production. The method can better help to deal with [nonstationarities](https://github.com/Earth-Information-System/sea-level-and-coastal-risk/blob/main/AMS_2023_Wanshu_Nie_for_VEDA_Discovery.pdf) and seasonal shifts and provide a more robust estimate of trends. These trend data sets are also provided in the [VEDA dataset page](https://www.earthdata.nasa.gov/dashboard/data-catalog).

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same here, is it supposed to be this https://www.earthdata.nasa.gov/dashboard/data-catalog?taxonomy=%7B%22Topics%22%3A%22eis%22%7D for eis datasets?

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⚠️ Our results of the GPP trends for some areas are contradictory to the greening trends reported by [Chen et al. 2019](https://doi.org/10.1038/s41893-019-0220-7), which may stem from uncertainties and discrepancies of data sources and the limitation of the model physics. This requires a more in-depth assessment. ⚠️

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