Communication Distance and Bayesian Inference in Non‐Perennial Streams

Author:

Aho Ken1ORCID,Derryberry Dewayne2,Godsey Sarah E.3ORCID,Ramos Rob4ORCID,Warix Sara R.35ORCID,Zipper Samuel6ORCID

Affiliation:

1. Department of Biological Sciences Idaho State University Pocatello ID USA

2. Department of Mathematics and Statistics Idaho State University Pocatello ID USA

3. Department of Geosciences Idaho State University Pocatello ID USA

4. Biological Survey & Center for Ecological Research University of Kansas Lawrence KS USA

5. Now at Hydrologic Science and Engineering Colorado School of Mines Golden CO USA

6. Kansas Geological Survey The University of Kansas Lawrence KS USA

Abstract

AbstractNon‐perennial streams are receiving increased attention from researchers, however, suitable methods for measuring their hydrologic connectivity remain scarce. To address this deficiency, we developed Bayesian statistical approaches for measuring both average active stream length, and a new metric called average communication distance. Average communication distance is a theoretical increased effective distance that stream‐borne materials must travel, given non‐continuous streamflow. Because it is the product of the inverse probability of surface water presence and stream length, the average communication distance of a non‐perennial stream segment will be greater than its actual physical length. As an application we considered Murphy Creek, a simple non‐perennial stream network in southwestern Idaho, USA. We used surface water presence/absence data obtained in 2019, and priors for the probability of surface water, based on predictions from an existing regional United States Geological Survey model. Average communication distance posterior distributions revealed locations where effective stream lengths increased dramatically due to flow rarity. We also found strong seasonal (spring, summer, fall) differences in network‐level posterior distributions of both average stream length and average communication distance. Our work demonstrates the unique perspectives concerning network drying provided by communication distance, and demonstrates the general usefulness of Bayesian approaches in the analysis of non‐perennial streams.

Funder

National Science Foundation

Publisher

American Geophysical Union (AGU)

Subject

Water Science and Technology

Reference63 articles.

1. Aho K. A.(2023).Introduction to the streamDAG package (ver. 1.5).https://doi.org/10.5281/zenodo.8415081

2. Non-perennial stream networks as directed acyclic graphs: The R-package streamDAG

3. Aho K. A. Ramos R. Legg A. Hale R. L. Kraft M. &Bond C. T.(2023).streamDAG: Analytical methods for stream DAGs. R package version 1.5. Retrieved fromhttps://CRAN.R-project.org/package=streamDAG

4. Revisiting Hydrologic Sampling Strategies for an Accurate Assessment of Hydrologic Connectivity in Humid Temperate Systems

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