River quality management: Integrating uncertainty, failure probability, and assimilation capacity
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gp-bibliography.bib Revision:1.8414
- @Article{DarmianDehghani:2024:ecoinf,
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author = "Mohsen {Dehghani Darmian} and Britta Schmalz",
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title = "River quality management: Integrating uncertainty,
failure probability, and assimilation capacity",
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journal = "Ecological Informatics",
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year = "2024",
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volume = "83",
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pages = "102829",
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keywords = "genetic algorithms, genetic programming, River quality
management, Failure probability, Advection-dispersion
equation, Reliability simulation, Assimilation
capacity, Risk assessment",
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ISSN = "1574-9541",
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URL = "
https://www.sciencedirect.com/science/article/pii/S1574954124003716",
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DOI = "
doi:10.1016/j.ecoinf.2024.102829",
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abstract = "Managing river water quality is challenging due to
uncertainties in hydraulic and hydrologic parameters.
This study integrates the symmetric exponential
function (SEF) approach for solving the
advection-dispersion equation with the Monte Carlo
method in MATLAB. This combination allows us to explore
the river's assimilation capacity and the failure
probability (Pf) of maintaining desired water quality
standards. Here, Pf represents the likelihood of
pollutant concentrations exceeding acceptable limits
under varying river conditions. A key contribution of
this study is the introduction of a novel equation,
developed using the Genetic Programming (GP) soft
computing tool, to calculate assimilation capacity
considering the failure probability of water quality
provision. This equation provides a valuable tool for
risk assessment in water resource management by
quantifying pollutant assimilation dynamics. Its
robustness is validated through high Coefficient of
Determination (R2) and Overall Index (OI) values near
1, along with low Root Mean Square Error (RMSE) and
Mean Absolute Error (MAE). The study identifies
critical river characteristics, such as flow velocity
and pollutant load, significantly influencing the
reliability index (beta). By outlining how adjustments
in these parameters can achieve a target reliability
index (beta=4.526), our study offers a practical
approach to safeguarding river ecosystems. For example,
increasing flow velocity by 76 percent can shift the
river from a safe state (Pf=3times10-5) to a hazardous
state (Pf=1), while a 44 percent decrease in velocity
allows for 57 percent more pollutant assimilation.
These findings highlight the importance of flow control
as a cost-effective strategy for mitigating high
pollutant concentrations and ensuring sustainable water
quality management. By integrating numerical approaches
with reliability sampling methods and soft computing
techniques, this study enhances understanding of river
system dynamics and supports informed decision-making
for protecting water resources",
- }
Genetic Programming entries for
Mohsen Dehghani Darmian
Britta Schmalz
Citations