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Hydrate decomposition
- Citation Author(s):
- Submitted by:
- tianlong li
- Last updated:
- Fri, 11/08/2024 - 01:15
- DOI:
- 10.21227/3n8q-4619
- License:
- Categories:
- Keywords:
Abstract
During gas hydrate extraction, insufficient heating or depressurization can lead to incomplete hydrate decomposition, resulting
in lower-than-expected actual gas production. In this paper, a method for assessing the degree of hydrate decomposition based on an electronic nose
system is proposed. First, the electronic nose system was developed to
collect the information of gas produced by gas hydrate decomposition
under different humidity conditions. Then, a Convolutional Neural
Network combined with Domain Adaptive Compensation feature
extractor (CNN-DAC) was used to extract moisture-insensitive features, which can improve the humidity generalization ability of the assessment model. Finally, a CNN-DAC-RF model by combining CNN-DAC with
random forest (RF) was proposed, which can accurately assess the hydrate decomposition degree level. The experimental results show that the accuracy of the model reached 98.67%. In the comparison experiments with other feature extraction methods, the classification accuracy of
CNN-DAC-RF was improved by 1.32% in the source domain (high humidity data), and by 42.49% in the target domain (low
humidity data). In summary, the combination of CNN-DAC-RF and electronic nose provides a reliable technical means for the assessment of the degree of hydrate decomposition during hydrate mining.
During gas hydrate extraction, insufficient heating or depressurization can lead to incomplete hydrate decomposition, resulting
in lower-than-expected actual gas production. In this paper, a method for assessing the degree of hydrate decomposition based on an electronic nose
system is proposed. First, the electronic nose system was developed to
collect the information of gas produced by gas hydrate decomposition
under different humidity conditions. Then, a Convolutional Neural
Network combined with Domain Adaptive Compensation feature
extractor (CNN-DAC) was used to extract moisture-insensitive features, which can improve the humidity generalization ability of the assessment model. Finally, a CNN-DAC-RF model by combining CNN-DAC with
random forest (RF) was proposed, which can accurately assess the hydrate decomposition degree level. The experimental results show that the accuracy of the model reached 98.67%. In the comparison experiments with other feature extraction methods, the classification accuracy of
CNN-DAC-RF was improved by 1.32% in the source domain (high humidity data), and by 42.49% in the target domain (low
humidity data). In summary, the combination of CNN-DAC-RF and electronic nose provides a reliable technical means for the assessment of the degree of hydrate decomposition during hydrate mining.