Skip to main content

6 posts tagged with "Cloud Services"

View All Tags

δHBV2.0: How NGIAB and Wukong HPC Streamlined Advanced Hydrologic Modeling

· 2 min read
Yalan Song
Research Assistant Professor
Leo Lonzarich
Graduate Researcher
Arpita Patel
DevOps Manager and Enterprise Architect
James Halgren
Assistant Director of Science

Image of graphical outputs from the δHBV2.0 model

Predicting water flow with precision across the vast U.S. landscape is a complex challenge. That's why Song et al. 2024 developed δHBV2.0, a cutting-edge hydrologic model. It’s built with high-resolution modeling of physics to deliver seamless, highly accurate streamflow simulations, even down to individual sub-basins. It's already proven to be a major improvement, performing better than older tools at about 4,000 measurement sites. We also provide a comprehensive 40-year water dataset for ~180,000 river reaches to support this.

Penn State research group pushed δHBV2.0 further, training it with even more detailed river data and integrating other trusted models, aiming to make it a key part of the NextGen national water modeling system (as a potential NWM3.0 successor). But here’s a common hurdle: making powerful scientific tools like this easy and reliable for everyone to use within a larger framework can be tough. Setup issues, runtime errors, and inconsistent results can frustrate users.

NGIAB stepped in to solve exactly this problem. Team has taken the complexity out of using the operations-ready models within NextGen by creating one unified, reliable package. Thanks to NGIAB, users don't have to worry about tricky setups or whether the model will run correctly. NGIAB ensures that our models are compatible everywhere and, most importantly, that they run exactly as designed, consistently and faithfully, every single time, no babysitting required. This means users get the full power of our advanced modeling, without the headaches.

Pennsylvania State University Researchers Leverage CIROH Cyberinfrastructure for Advanced Hydrological Modeling

· 3 min read
Arpita Patel
DevOps Manager and Enterprise Architect
Yalan Song
Research Assistant Professor
Tadd Bindas
Graduate Researcher

Pennsylvania State University (PSU) researchers have been leveraging CIROH Cyberinfrastructure to tackle complex hydrological modeling challenges. This post highlights their innovative approach using the Wukong computing platform in conjunction with Amazon S3 bucket storage to efficiently process and analyze large-scale environmental datasets. 🚀

Accessing National Water Model (NWM) Data via Google Cloud BigQuery API

· 3 min read
Arpita Patel
DevOps Manager and Enterprise Architect
gcp architectrure diagram Image Source: https://github.com/BYU-Hydroinformatics/api-nwm-gcp

Several important historical and ongoing National Water Model (NWM) datasets are now available on Google Cloud BigQuery, which makes them queryable through SQL using Google Cloud console. Some of these data sets are also accessible through an API (e.g. using Python). These datasets and their current status are as follows:

ProductCloud Console SQLCIROH APIHistoricalDaily Updates
Medium-range forecastsXXXX
Long-range forecastsXXXX
Analysis and AssimilationXXXX
Retrospective Data (NWM v3)XX
Return PeriodsXX

CIROH Cloud User Success Story

· 3 min read
Arpita Patel
DevOps Manager and Enterprise Architect

This month, we are excited to showcase two case studies that utilized our cyberinfrastructure tools and services. These case studies demonstrate how CIROH's cyberinfrastructure is being utilized to support hydrological research and operational advancements.

1. ngen-datastream and NGIAB

ngen-datastream image

NextGen Monthly News Update - January 2024

· 2 min read
Arpita Patel
DevOps Manager and Enterprise Architect

Welcome to the January edition of the CIROH DocuHub blog, where we share the latest updates and news about the Community NextGen project monthly. NextGen is a cutting-edge hydrologic modeling framework that aims to advance the science and practice of hydrology and water resources management. In this month's blog, we will highlight some of the recent achievements and developments of the Community NextGen team.