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Machine Learning Approach to Control Thermal Strategies and Mitigate Sensor Failure Penalty on Emissions Daimler Truck Innovation Center India Pvt. Limited

SAE Technical Papers (1906-current) Available online

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Format:
Book
Conference/Event
Author/Creator:
Kumar, Amit, author.
Contributor:
Hegde, Karthik
Kumar, Raman
Manojdharan, Arjungopal
V H, Yashwanth
Conference Name:
11th SAEINDIA International Mobility Conference (SIIMC 2024) (2024-12-11 : New Delhi, India)
Language:
English
Physical Description:
1 online resource cm
Place of Publication:
Warrendale, PA SAE International 2024
Summary:
As vehicle emission standards are becoming stringent worldwide because of the looming climate crisis, it is important to control the pollutants that vehicles emit. To achieve the stringent emission target, it has become a priority to enhance the capability of Emission Control System (ECS) which consist of Diesel Oxidation Catalyst (DOC), Diesel Particulate Filter (DPF) and Selective Catalytic Reduction (SCR) sub-systems. One of the bottlenecks is the limited operating temperature range of the after-treatment system. In modern emission control systems, the temperature characteristics should always be optimized to have the best efficiency involving chemical conversions. To achieve this optimal operating temperature, different thermal control strategies are followed in the Engine and emission control unit. Temperature sensor values are one of the primary inputs for thermal management strategies.In the event of temperature sensor malfunction, the ECS performance is affected due to incorrect temperature input, resulting in higher emissions leading to performance limitations. To mitigate this issue, it is important to predict the exhaust gas temperature precisely. In this paper, studies are carried out to show Machine Learning (ML) based digital sensors can be instrumental in maintaining ECS functionality and performance.This paper focuses on developing Machine Learning (ML) Model to replicate the sensor prediction based on dependent parameters. A Multi-Layer Perceptron (MLP) neural network is explored and implemented to predict the SCR inlet temperature. The predicted temperature is used to control various thermal strategies to improve the SCR performance. The selected model is trained and tested with actual vehicle data for real time correlation. The model's performance is improved through evaluation metrices such as R2-Score, Mean Squared Error, and Mean Absolute Error. These metrices provide a thorough evaluation of the algorithm's performance compared to the actual observed values. The high R2 Score indicates strong predictive capability, while the low errors demonstrate the model's reliability
Notes:
Vendor supplied data
Publisher Number:
2024-28-0170
Access Restriction:
Restricted for use by site license

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