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Emission prediction and optimization of methanol/diesel dual-fuel engines based on ITransformer-BiGRU and NSGA-III

Mingzhang Pan, Cao Xinxin, Changcheng Fu, Shengyou Liao, Xiaorong Zhou, Wei Guan

2024Energy and AI13 citationsDOIOpen Access PDF

Abstract

• An emission prediction model based on ITransformer and BiGRU is proposed. • Evaluate the proposed emission prediction model using bench test data. • Optimize engine emissions by coupling ITransformer-BiGRU with NSGA-III. • Apply the IF algorithm to eliminate anomalies and improve system stability. To reduce engine pollutant emissions, an emission modeling and optimization scheme based on a hybrid artificial intelligence scheme is proposed in this study to reduce pollutant emissions of methanol/diesel dual-fuel engines under low load. Firstly, a data cleaning method based on isolated forest and correlation analysis is designed to improve the stability of the system. Secondly, a hybrid emission prediction model based on improved Transformer (ITransformer) and Bidirectional Gated Recurrent Unit (BiGRU) is built to obtain an accurate mathematical model between control parameters and emissions. Finally, based on the obtained mathematical model, the 3rd Non-dominated Sorting Genetic Algorithm (NGSA-III) is used to adjust and optimize the control parameters. Using engine bench test data to evaluate the proposed hybrid emission prediction model, the R 2 of CO, HC, and NO x prediction is 0.9969, 0.9973, and 0.9982, respectively, which is higher than the accuracy of the seven existing modeling methods. Compared with the unoptimized MESR46, the CO, HC, and NO x emissions of the optimized scheme are reduced by at least 45.17 %, 15.30 %, and 17.32 % respectively, which can significantly reduce the CO, HC, and NO x emissions, and comparison and analysis with the most advanced optimization technologies show a competitive optimization effect.

Topics & Concepts

Diesel fuelDual (grammatical number)MethanolAutomotive engineeringPulp and paper industryEnvironmental scienceChemistryWaste managementMaterials scienceProcess engineeringEngineeringOrganic chemistryLiteratureArtAdvanced Combustion Engine TechnologiesSpectroscopy and Chemometric AnalysesVehicle emissions and performance
Emission prediction and optimization of methanol/diesel dual-fuel engines based on ITransformer-BiGRU and NSGA-III | Litcius