Research output: Contribution to journal › Article › peer-review
Hybrid Deep Learning and Sensitivity Operator-Based Algorithm for Identification of Localized Emission Sources. / Penenko, Alexey; Emelyanov, Mikhail; Rusin, Evgeny et al.
In: Mathematics, Vol. 12, No. 1, 78, 01.2024.Research output: Contribution to journal › Article › peer-review
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TY - JOUR
T1 - Hybrid Deep Learning and Sensitivity Operator-Based Algorithm for Identification of Localized Emission Sources
AU - Penenko, Alexey
AU - Emelyanov, Mikhail
AU - Rusin, Evgeny
AU - Tsybenova, Erjena
AU - Shablyko, Vasily
N1 - The work was supported by grant 075-15-2020-787 in the form of a subsidy for a Major Scientific Project from the Ministry of Science and Higher Education of Russia (project “Fundamentals, methods and technologies for digital monitoring and forecasting of the environmental situation on the Baikal Natural Territory”).
PY - 2024/1
Y1 - 2024/1
N2 - Hybrid approaches combining machine learning with traditional inverse problem solution methods represent a promising direction for the further development of inverse modeling algorithms. The paper proposes an approach to emission source identification from measurement data for advection–diffusion–reaction models. The approach combines general-type source identification and post-processing refinement: first, emission source identification by measurement data is carried out by a sensitivity operator-based algorithm, and then refinement is done by incorporating a priori information about unknown sources. A general-type distributed emission source identified at the first stage is transformed into a localized source consisting of multiple point-wise sources. The second, refinement stage consists of two steps: point-wise source localization and emission rate estimation. Emission source localization is carried out using deep learning with convolutional neural networks. Training samples are generated using a sensitivity operator obtained at the source identification stage. The algorithm was tested in regional remote sensing emission source identification scenarios for the Lake Baikal region and was able to refine the emission source reconstruction results. Hence, the aggregates used in traditional inverse problem solution algorithms can be successfully applied within machine learning frameworks to produce hybrid algorithms.
AB - Hybrid approaches combining machine learning with traditional inverse problem solution methods represent a promising direction for the further development of inverse modeling algorithms. The paper proposes an approach to emission source identification from measurement data for advection–diffusion–reaction models. The approach combines general-type source identification and post-processing refinement: first, emission source identification by measurement data is carried out by a sensitivity operator-based algorithm, and then refinement is done by incorporating a priori information about unknown sources. A general-type distributed emission source identified at the first stage is transformed into a localized source consisting of multiple point-wise sources. The second, refinement stage consists of two steps: point-wise source localization and emission rate estimation. Emission source localization is carried out using deep learning with convolutional neural networks. Training samples are generated using a sensitivity operator obtained at the source identification stage. The algorithm was tested in regional remote sensing emission source identification scenarios for the Lake Baikal region and was able to refine the emission source reconstruction results. Hence, the aggregates used in traditional inverse problem solution algorithms can be successfully applied within machine learning frameworks to produce hybrid algorithms.
KW - air quality
KW - deep learning
KW - emission sources
KW - inverse modeling
KW - localized sources
KW - neural network
KW - post-processing
KW - remote sensing
KW - sensitivity operator
KW - source identification
UR - https://www.scopus.com/record/display.uri?eid=2-s2.0-85182218913&origin=inward&txGid=b2f5d48056c8ad9e695ad62de3ade46b
UR - https://www.mendeley.com/catalogue/9276d994-cd69-3a66-b3ba-bc8b326af83b/
U2 - 10.3390/math12010078
DO - 10.3390/math12010078
M3 - Article
VL - 12
JO - Mathematics
JF - Mathematics
SN - 2227-7390
IS - 1
M1 - 78
ER -
ID: 60333685