Checking for non-preferred file/folder path names (may take a long time depending on the number of files/folders) ...
This resource contains some files/folders that have non-preferred characters in their name. Show non-conforming files/folders.
This resource contains content types with files that need to be updated to match with metadata changes. Show content type files that need updating.
Filling missing stormwater infrastructure attributes data for hydrologic-hydraulic (SWMM) model development
Authors: |
|
|
---|---|---|
Owners: |
|
This resource does not have an owner who is an active HydroShare user. Contact CUAHSI (help@cuahsi.org) for information on this resource. |
Type: | Resource | |
Storage: | The size of this resource is 9.7 KB | |
Created: | Oct 31, 2023 at 4:43 p.m. | |
Last updated: | Dec 20, 2023 at 2:14 p.m. (Metadata update) | |
Published date: | Dec 20, 2023 at 2:14 p.m. | |
DOI: | 10.4211/hs.eaf9a871fd254a759a4f381be4f0a325 | |
Citation: | See how to cite this resource |
Sharing Status: | Published |
---|---|
Views: | 389 |
Downloads: | 22 |
+1 Votes: | Be the first one to this. |
Comments: | No comments (yet) |
Abstract
Effective hydrologic-hydraulic model development such as U.S. Environmental Protection Agency’s Storm Water Management Model (SWMM) depends on the data availability and data completeness of as-built stormwater infrastructure data. The infrastructure data gaps affect accurate process representation in model causing output uncertainty, error and bias, which further affect model construction, parameterization and its reliable use. However, complete stormwater infrastructure data are often not available due to data sharing restrictions or data gaps occurring from errors of omission (i.e., infrastructure components not being recorded) and error of commission (i.e., assignment of incorrect data). This algorithm, created in R, fills the missing stormwater infrastructure attribute-values data in accordance with the available design standards and modeling practice. It can be adopted to fill missing stormwater infrastructure attributes data for any size of SWMM model. This algorithm can also be implemented to randomly sample, using Monte Carlo sampling approach, the effects of missing attribute-values for different parameters of conduits and junctions such as diameter, roughness and depth.
For details about this work readers are referred to:
1). Shrestha, A., Mascaro, G., & Garcia, M. (2022). Effects of stormwater infrastructure data completeness and model resolution on urban flood modeling. Journal of Hydrology, 607, 127498. https://doi.org/10.1016/j.jhydrol.2022.127498
2). Shrestha, A. (2022). Advances in Urban Flood Management: Addressing Data Uncertainty, Data Gaps and Adaptation Planning (Doctoral dissertation, Arizona State University). https://search.proquest.com/openview/b79c1eb133e93ea0a07b6147fe7feff6/1?pq-origsite=gscholar&cbl=18750&diss=y
For GitHub link to this repository, readers are referred to:
1). https://github.com/ashish-shrs/filling_missing_data_for_swmm/tree/main
Subject Keywords
Content
How to Cite
This resource is shared under the Creative Commons Attribution-NoCommercial-ShareAlike CC BY-NC-SA.
http://creativecommons.org/licenses/by-nc-sa/4.0/
Comments
There are currently no comments
New Comment