A Deep Transfer NOx Emission Inversion Model of Diesel Vehicles with Multisource External Influence
By installing on-board diagnostics (OBD) on tested vehicles, the after-treatment exhaust emissions can be monitored in real time to construct driving cycle-based emission models, which can provide data support for the construction of dynamic emission inventories of mobile source emission. However, i...
Saved in:
| Main Authors: | , , , , , |
|---|---|
| Format: | Article |
| Language: | English |
| Published: |
Wiley
2021-01-01
|
| Series: | Journal of Advanced Transportation |
| Online Access: | http://dx.doi.org/10.1155/2021/4892855 |
| Tags: |
Add Tag
No Tags, Be the first to tag this record!
|
| _version_ | 1850218946826862592 |
|---|---|
| author | Zhenyi Xu Ruibin Wang Yu Kang Yujun Zhang Xiushan Xia Renjun Wang |
| author_facet | Zhenyi Xu Ruibin Wang Yu Kang Yujun Zhang Xiushan Xia Renjun Wang |
| author_sort | Zhenyi Xu |
| collection | DOAJ |
| description | By installing on-board diagnostics (OBD) on tested vehicles, the after-treatment exhaust emissions can be monitored in real time to construct driving cycle-based emission models, which can provide data support for the construction of dynamic emission inventories of mobile source emission. However, in actual vehicle emission detection systems, due to the equipment installation costs and differences in vehicle driving conditions, engine operating conditions, and driving behavior patterns, it is impossible to ensure that the emission monitoring data of different vehicles always follow the same distribution. The traditional machine learning emission model usually assumes that the training set and test set of emission test data are derived from the same data distribution, and a unified emission model is used for estimation of different types of vehicles, ignoring the difference in monitoring data distribution. In this study, we attempt to build a diesel vehicle NOx emission prediction model based on the deep transfer learning framework with a few emission monitoring data. The proposed model firstly uses Spearman correlation analysis and Lasso feature selection to accomplish the selection of factors with high correlation with NOx emission from multiple sources of external factors. Then, the stacked sparse AutoEncoder is used to map different vehicle working condition emission data into the same feature space, and then, the distribution alignment of different vehicle working condition emission data features is achieved by minimizing maximum mean discrepancy (MMD) in the feature space. Finally, we validated the proposed method with the diesel vehicle OBD data that were collected by the Hefei Environmental Protection Bureau. The comprehensive experiment results show that our method can achieve the feature distribution alignment of emission data under different vehicle working conditions and improve the prediction performance of the NOx inversion model given a little amount of NOx emission monitoring data. |
| format | Article |
| id | doaj-art-7931f84b35f348d3a8bdb8890f453249 |
| institution | OA Journals |
| issn | 2042-3195 |
| language | English |
| publishDate | 2021-01-01 |
| publisher | Wiley |
| record_format | Article |
| series | Journal of Advanced Transportation |
| spelling | doaj-art-7931f84b35f348d3a8bdb8890f4532492025-08-20T02:07:32ZengWileyJournal of Advanced Transportation2042-31952021-01-01202110.1155/2021/4892855A Deep Transfer NOx Emission Inversion Model of Diesel Vehicles with Multisource External InfluenceZhenyi Xu0Ruibin Wang1Yu Kang2Yujun Zhang3Xiushan Xia4Renjun Wang5Institute of Artificial IntelligenceInstitute of Artificial IntelligenceInstitute of Artificial IntelligenceKey Laboratory of Environmental Optics & TechnologyInstitute of Advanced TechnologyInstitute of Artificial IntelligenceBy installing on-board diagnostics (OBD) on tested vehicles, the after-treatment exhaust emissions can be monitored in real time to construct driving cycle-based emission models, which can provide data support for the construction of dynamic emission inventories of mobile source emission. However, in actual vehicle emission detection systems, due to the equipment installation costs and differences in vehicle driving conditions, engine operating conditions, and driving behavior patterns, it is impossible to ensure that the emission monitoring data of different vehicles always follow the same distribution. The traditional machine learning emission model usually assumes that the training set and test set of emission test data are derived from the same data distribution, and a unified emission model is used for estimation of different types of vehicles, ignoring the difference in monitoring data distribution. In this study, we attempt to build a diesel vehicle NOx emission prediction model based on the deep transfer learning framework with a few emission monitoring data. The proposed model firstly uses Spearman correlation analysis and Lasso feature selection to accomplish the selection of factors with high correlation with NOx emission from multiple sources of external factors. Then, the stacked sparse AutoEncoder is used to map different vehicle working condition emission data into the same feature space, and then, the distribution alignment of different vehicle working condition emission data features is achieved by minimizing maximum mean discrepancy (MMD) in the feature space. Finally, we validated the proposed method with the diesel vehicle OBD data that were collected by the Hefei Environmental Protection Bureau. The comprehensive experiment results show that our method can achieve the feature distribution alignment of emission data under different vehicle working conditions and improve the prediction performance of the NOx inversion model given a little amount of NOx emission monitoring data.http://dx.doi.org/10.1155/2021/4892855 |
| spellingShingle | Zhenyi Xu Ruibin Wang Yu Kang Yujun Zhang Xiushan Xia Renjun Wang A Deep Transfer NOx Emission Inversion Model of Diesel Vehicles with Multisource External Influence Journal of Advanced Transportation |
| title | A Deep Transfer NOx Emission Inversion Model of Diesel Vehicles with Multisource External Influence |
| title_full | A Deep Transfer NOx Emission Inversion Model of Diesel Vehicles with Multisource External Influence |
| title_fullStr | A Deep Transfer NOx Emission Inversion Model of Diesel Vehicles with Multisource External Influence |
| title_full_unstemmed | A Deep Transfer NOx Emission Inversion Model of Diesel Vehicles with Multisource External Influence |
| title_short | A Deep Transfer NOx Emission Inversion Model of Diesel Vehicles with Multisource External Influence |
| title_sort | deep transfer nox emission inversion model of diesel vehicles with multisource external influence |
| url | http://dx.doi.org/10.1155/2021/4892855 |
| work_keys_str_mv | AT zhenyixu adeeptransfernoxemissioninversionmodelofdieselvehicleswithmultisourceexternalinfluence AT ruibinwang adeeptransfernoxemissioninversionmodelofdieselvehicleswithmultisourceexternalinfluence AT yukang adeeptransfernoxemissioninversionmodelofdieselvehicleswithmultisourceexternalinfluence AT yujunzhang adeeptransfernoxemissioninversionmodelofdieselvehicleswithmultisourceexternalinfluence AT xiushanxia adeeptransfernoxemissioninversionmodelofdieselvehicleswithmultisourceexternalinfluence AT renjunwang adeeptransfernoxemissioninversionmodelofdieselvehicleswithmultisourceexternalinfluence AT zhenyixu deeptransfernoxemissioninversionmodelofdieselvehicleswithmultisourceexternalinfluence AT ruibinwang deeptransfernoxemissioninversionmodelofdieselvehicleswithmultisourceexternalinfluence AT yukang deeptransfernoxemissioninversionmodelofdieselvehicleswithmultisourceexternalinfluence AT yujunzhang deeptransfernoxemissioninversionmodelofdieselvehicleswithmultisourceexternalinfluence AT xiushanxia deeptransfernoxemissioninversionmodelofdieselvehicleswithmultisourceexternalinfluence AT renjunwang deeptransfernoxemissioninversionmodelofdieselvehicleswithmultisourceexternalinfluence |