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<article xmlns:xsi="http://www.w3.org/2001/XMLSchema-instance" xmlns:mml="http://www.w3.org/1998/Math/MathML" xmlns:xlink="http://www.w3.org/1999/xlink" dtd-version="1.1" xml:lang="en">
  <front>
    <journal-meta>
      <journal-id>authorea</journal-id>
      <publisher>
        <publisher-name>Authorea</publisher-name>
      </publisher>
    </journal-meta>
    <article-meta>
      <article-id pub-id-type="doi">10.22541/essoar.169109573.33805102/v1</article-id>
      <title-group>
        <article-title>A deep adaptive cycle generative adversarial neural network for inverse
estimation of groundwater contaminated source and model parameter</article-title>
      </title-group>
      <contrib-group>
        <contrib contrib-type="author" corresp="yes">
          <contrib-id contrib-id-type="orcid">0009-0000-2178-5394</contrib-id>
          <name>
            <surname>Pan</surname>
            <given-names>Zidong</given-names>
          </name>
          <address>
            <institution>Jilin University</institution>
          </address>
        </contrib>
        <contrib contrib-type="author" corresp="no">
          <contrib-id contrib-id-type="orcid">0000-0002-7034-5675</contrib-id>
          <name>
            <surname>Lu</surname>
            <given-names>Wenxi</given-names>
          </name>
          <address>
            <institution>Jilin University</institution>
          </address>
        </contrib>
        <contrib contrib-type="author" corresp="no">
          <name>
            <surname>Xu</surname>
            <given-names>Yaning</given-names>
          </name>
          <address>
            <institution>Jilin University</institution>
          </address>
        </contrib>
        <contrib contrib-type="author" corresp="no">
          <name>
            <surname>Luo</surname>
            <given-names>Chengming</given-names>
          </name>
          <address>
            <institution>Jilin University</institution>
          </address>
        </contrib>
        <contrib contrib-type="author" corresp="no">
          <name>
            <surname>Bai</surname>
            <given-names>Yukun</given-names>
          </name>
          <address>
            <institution>Jilin University</institution>
          </address>
        </contrib>
      </contrib-group>
      <pub-date date-type="preprint" publication-format="electronic">
        <day>3</day>
        <month>8</month>
        <year>2023</year>
      </pub-date>
      <self-uri xlink:href="https://doi.org/10.22541/essoar.169109573.33805102/v1">This preprint is available at https://doi.org/10.22541/essoar.169109573.33805102/v1</self-uri>
      <abstract abstract-type="abstract">
        <p>In light of the challenges posed by groundwater contamination and the
urgent need for accurate and efficient groundwater contaminated source
estimation (GCSE), the present study proposes a novel approach for GCSE
using a deep adaptive cycle generative adversarial neural network
(DA-CGAN). Given the equifinality from different parameters (EFDP) often
associated with GCSE, we leveraged a bidirectional adversarial training
pattern involving a forward process and a recovery process to supervise
the inverse mapping relationship. Once trained, the forward process can
be utilized to provide estimation for GSCE. This bidirectional-training
strategy mitigates EFDP, thereby effectively enhancing the reliability
of GCSE. Moreover, the performance of DA-CGAN is closely related to the
quality of the training samples. To address this, we introduced a
significant enhancement through an adaptive sampling strategy. This
substantially improves the quality of training samples and consequently
increases the accuracy of the GCSE. Furthermore, the inherent
data-driven attribute of the deep cycle GAN considerably reduces
computational costs when conducting GCSE. The research unfolds in the
contexts of both hypothetical and real-world scenarios, with the goal of
providing an efficient, precise, and cost-effective solution for GCSE.
The results demonstrate that the DA-CGAN, an innovative model in the
hydrogeological domain, exhibits superior performance in both estimation
accuracy (Average Relative Error (ARE) of 4.91% and R of 0.998) and
computational efficiency (0.17 seconds per run). This is particularly
notable when compared with typical inverse methods such as the genetic
algorithm (GA) and the ensemble kalman filter (ENKF).</p>
      </abstract>
      <kwd-group kwd-group-type="author-created">
        <kwd>adaptive sampling</kwd>
        <kwd>bidirectional adversarial training</kwd>
        <kwd>cycle generative neural network</kwd>
        <kwd>deep learning</kwd>
        <kwd>environmental sciences</kwd>
        <kwd>groundwater contamination</kwd>
        <kwd>inverse estimation</kwd>
      </kwd-group>
    </article-meta>
  </front>
</article>
