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Diesel Particulate Filter (DPF) For BMW X5 35d 3.0L 2009-2013

This product is suitable for BMW X5 35d 3.0L 2009-2013 models.
​Substrate Material:DPF
 
 
  • DPF

  • DPF

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Product Description


Product Information

Name

Diesel Particulate Filter

Trademark

Antian

Model NO.

BMW X5 35d

Origin

China

Engine

3.0L

Condition

New

Date

2009-2013

Tube material

Stainless Steel

Product fit

Finished Product

Substrate Material

DPF

Main Market

Europe and the United States, Eastern Europe, the Middle East, Southeast Asia, Russia


This catalytic converter with integrated exhaust manifold - a.k.a. manifold converter - is precision-engineered to match the original equipment on specific vehicle years, makes and models for a reliable replacement.


1.Direct replacement - this manifold converter is designed to match the fit and performance of the original equipment on specific vehicles

2.Durable construction -manufactured within strict tolerances for reliable longevity

3.Trustworthy value - backed by team of experienced engineers and quality control experts


technical aspects:

It is based on system simulation modelling techniques, where a complete exhaust line is represented in order to predict tail-pipe emissions under stoichiometric, lean and rich conditions, for engine control design purposes. Two different modelling approaches are applied and evaluated in this paper. First, a physics-based modelling approach where thermal and chemical aspects of the pollutant conversion phenomena are considered. In this study, the focus is on the chemical reaction’s selection and kinetic parameters calibration. Second, a machine learning approach based on neural networks to represent the pollutant conversion process and monolith thermal dynamics is employed. Our main contribution to this method is the selection of an optimal neural network architecture and application of a convenient training process.

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C0224T01

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