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A self-organizing radial basis network for estimating riverine fish diversity

► A hybrid ANN model is proposed to relate flow conditions to fish community diversity. ► The proposed SORBN model can be used to quantify how flow influences river ecosystems. ► Interactions among flow and ecosystem can be obtained based on 4-year moving average. ► Flow regime is identified to have...

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Published in:Journal of hydrology (Amsterdam) 2013-01, Vol.476, p.280-289
Main Authors: Chang, Fi-John, Tsai, Wen-Ping, Chen, Hung-kwai, Yam, Rita Sau-Wai, Herricks, Edwin E.
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Language:English
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cited_by cdi_FETCH-LOGICAL-a428t-534bfec880b0a256df98d4c6400596e3bdb9675cd9d9884e39aff1e2ddfdc74d3
cites cdi_FETCH-LOGICAL-a428t-534bfec880b0a256df98d4c6400596e3bdb9675cd9d9884e39aff1e2ddfdc74d3
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container_issue
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container_title Journal of hydrology (Amsterdam)
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creator Chang, Fi-John
Tsai, Wen-Ping
Chen, Hung-kwai
Yam, Rita Sau-Wai
Herricks, Edwin E.
description ► A hybrid ANN model is proposed to relate flow conditions to fish community diversity. ► The proposed SORBN model can be used to quantify how flow influences river ecosystems. ► Interactions among flow and ecosystem can be obtained based on 4-year moving average. ► Flow regime is identified to have an effect on fish community diversity by SORBN. ► SORBN is an efficient and effective approach to reasonably estimating fish diversity. In aquatic ecosystems, particularly rivers, hydrology plays a key role in structuring and maintaining habitats and flow regimes that influence ecological sustainability. Flow regime assessment in Taiwan has been facilitated recently by the Taiwan Eco-hydrologic Indicator System (TEIS). In this study, the self-organizing feature map (SOM) and radial basis function (RBF) neural network are combined to produce a self-organizing radial basis network (SORBN) that takes the advantages of both methods for strengthening the power of presentation and reliability of estimation. The SORBN is proposed to estimate the diversity of fish communities based on the TEIS and historic fish community composition at 36 locations in Taiwan. The discharge data are available for a minimum of 20years. Data analysis applying a moving average method to the TEIS statistics is used to reflect the effects of antecedent flow conditions on fish diversity. Results indicate the hybrid SORBN not only effectively categorizes stream flow data but also reasonably identifies relationships between flow regime and fish community diversity. Results are encouraging so that it is possible to better relate flow and ecosystem conditions, and the proposed method can be used to quantify how flow influences river ecosystems.
doi_str_mv 10.1016/j.jhydrol.2012.10.038
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identifier ISSN: 0022-1694
ispartof Journal of hydrology (Amsterdam), 2013-01, Vol.476, p.280-289
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subjects Animal and plant ecology
Animal, plant and microbial ecology
Biological and medical sciences
Communities
Earth sciences
Earth, ocean, space
Ecosystems
Estimating
Exact sciences and technology
Fish
Fish communities
Fresh water ecosystems
Freshwater
Fundamental and applied biological sciences. Psychology
Hydrology
Hydrology. Hydrogeology
Moving average
Networks
Neural networks
River ecosystems
Rivers
Self-organizing radial basis network (SORBN)
Synecology
Taiwan Eco-hydrologic Indicator System (TEIS)
title A self-organizing radial basis network for estimating riverine fish diversity
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