Genetic programming-based predictive model for the Cr removal effect of in-situ electrokinetic remediation in contaminated soil
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- @Article{YU:2023:jhazmat,
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author = "Qiu Yu and Yi Zheng and Pengpeng Zhang and
Linghao Zeng and Renhui Han and Yaoming Shi and Dongwei Li",
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title = "Genetic programming-based predictive model for the Cr
removal effect of in-situ electrokinetic remediation in
contaminated soil",
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journal = "Journal of Hazardous Materials",
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volume = "460",
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pages = "132430",
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year = "2023",
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ISSN = "0304-3894",
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DOI = "doi:10.1016/j.jhazmat.2023.132430",
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URL = "https://www.sciencedirect.com/science/article/pii/S0304389423017132",
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keywords = "genetic algorithms, genetic programming, Soil
pollution, Electrokinetic remediation, Predictive
model, Sensitivity analysis",
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abstract = "Soil electrokinetic remediation is an emerging and
efficient in-situ remediation technology for reducing
environmental risks. Promoting the dissolution and
migration of Cr in soil under the electric field is
crucial to decrease soil toxicity and ecological
influences. However, it is difficult to establish
strong relationships between soil treatment and impact
factors and to quantify their contributions. Machine
learning can help establish pollutant migration models,
but it is challenging to derive predictive formulas to
improve remediation efficiency, describe the predictive
model construction process, and reflect the importance
of the predictors for better regulation. Therefore,
this paper established a predictive model for the
electrokinetic remediation of Cr-contaminated soil
using genetic programming (GP) after determining the
characteristic parameters which influenced the
remediation effect, described the model's adaptive
optimization process through the algorithm's function,
and identified the sensitivity factors affecting the Cr
removal effect. Results showed that the Cr(VI) and
total Cr concentrations predicted by GP were in
satisfactory agreement with the experimental values,
92percent of the training data and 90percent of the
validation data achieved errors within 1percent, and
could fully reflect the target ions' content variation
in different soil layers. By substituting the above
prediction formulas into Sobol sensitivity analysis, it
was determined that conductivity, pH, current, and
moisture content dramatically affected the Cr content
variation in distinguished regions. For overall
contaminated area, the system current and soil pH were
the most sensitive factors for Cr(VI) and total Cr
contents. Remediation efforts throughout the
contaminated area should focus on the role of current
versus soil pH. GP and sensitivity analysis can provide
decision support and operational guidance for in-situ
soil electrokinetic treatment by establishing a
remediation effect prediction model, expediting the
development and innovation of electrokinetic
technology",
- }
Genetic Programming entries for
Qiu Yu
Yi Zheng
Pengpeng Zhang
Linghao Zeng
Renhui Han
Yaoming Shi
Dongwei Li
Citations