LGMLDec 12, 2016

Identification of release sources in advection-diffusion system by machine learning combined with Green function inverse method

arXiv:1612.03948v321 citations
Originality Incremental advance
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This addresses a challenge in environmental or engineering fields where multiple unknown sources contaminate or affect transport systems, offering a novel approach but with incremental improvements by combining existing techniques.

The paper tackles the problem of identifying an unknown number of release sources in advection-diffusion systems, where classical methods struggle due to mixed data records, and presents a hybrid method (HNMF) that successfully identifies source characteristics like number, locations, and properties from synthetic data.

The identification of sources of advection-diffusion transport is based usually on solving complex ill-posed inverse models against the available state- variable data records. However, if there are several sources with different locations and strengths, the data records represent mixtures rather than the separate influences of the original sources. Importantly, the number of these original release sources is typically unknown, which hinders reliability of the classical inverse-model analyses. To address this challenge, we present here a novel hybrid method for identification of the unknown number of release sources. Our hybrid method, called HNMF, couples unsupervised learning based on Nonnegative Matrix Factorization (NMF) and inverse-analysis Green functions method. HNMF synergistically performs decomposition of the recorded mixtures, finds the number of the unknown sources and uses the Green function of advection-diffusion equation to identify their characteristics. In the paper, we introduce the method and demonstrate that it is capable of identifying the advection velocity and dispersivity of the medium as well as the unknown number, locations, and properties of various sets of synthetic release sources with different space and time dependencies, based only on the recorded data. HNMF can be applied directly to any problem controlled by a partial-differential parabolic equation where mixtures of an unknown number of sources are measured at multiple locations.

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