4.6 Article

Using deep neural networks to diagnose engine pre-ignition

Journal

PROCEEDINGS OF THE COMBUSTION INSTITUTE
Volume 38, Issue 4, Pages 5915-5922

Publisher

ELSEVIER SCIENCE INC
DOI: 10.1016/j.proci.2020.10.001

Keywords

Pre-ignition detection; Spark-ignited engines; Data-driven diagnostics

Funding

  1. King Abdullah University of Science and Technology (KAUST) Office of Sponsored Research [OSR-2019-CRG7-4077]

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The study introduces a data-driven approach using deep neural networks for diagnosing pre-ignition events, eliminating the need for expensive in-cylinder pressure sensors. Two deep learning models combining dimensionality reduction and direct time-series data processing were proposed for pre-ignition detection. Results showed better performance in detecting pre-ignition cycles with reduced input dimensions in the first model.
Engine downsizing and boosting have been recognized as effective strategies for improving engine efficiency. However, operating the engines at high load promotes abnormal combustion events, such as pre-ignition and potential superknock. Currently the most effective method for detecting pre-ignition is by using in-cylinder pressure sensors that have high precision and sensitivity, but also high cost. Due to rapid advances in automotive technology such as autonomous driving, computer-aided designs and future connectivity, we propose to use a complimentary data-driven strategy for diagnosing abnormal combustion events. To this end, a datadriven diagnostics approach for pre-ignition detection with deep neural networks is proposed. The success of convolutional neural networks (CNNs) in object detection and recurrent neural networks (RNNs) in sequence forecasting inspired us to develop these models for pre-ignition detection. For a cost-effective strategy, we use data from less expensive sensors, such as lambda and low-resolution exhaust back pressure (EBP), instead of high resolution in-cylinder pressure measurements. The first deep learning model is combined with a commonly used dimensionality reduction tool?Principal Component Analysis (PCA). The second model eliminates this step and directly processes time-series data. Results indicate that the first model with reduced input dimensions, and correspondingly smaller size of the network, shows better performance in detecting pre-ignition cycles with an F1 score of 79%. Overall, the proposed deep learning approach is a promising alternative for abnormal combustion diagnostics using data from low resolution sensors. ? 2020 The Combustion Institute. Published by Elsevier Inc. All rights reserved.

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