2023
DOI: 10.4271/2023-01-1614
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Analysis of Real-World Preignition Data Using Neural Networks

Brian Kaul,
Bryan Maldonado,
Alexander Michlberger
et al.

Abstract: <div class="section abstract"><div class="htmlview paragraph"><span class="xref"><sup>1</sup></span>Increasing adoption of downsized, boosted, spark-ignition engines has improved vehicle fuel economy, and continued improvement is desirable to reduce carbon emissions in the near-term. However, this strategy is limited by damaging preignition events which can cause hardware failure. Research to date has shed light on various contributing factors related to fuel and lubricant p… Show more

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“…2,3 Hardware acceleration, sensing technology, and adaptive methods have enabled energy optimization at a variety of operating conditions for different powertrain architectures, ranging from hybrid powertrains 4 to advanced combustion engines. 57 This study focuses on the latter, applying data-driven adaptive optimal control strategies to improve the efficiency of internal combustion engines.…”
Section: Introductionmentioning
confidence: 99%
“…2,3 Hardware acceleration, sensing technology, and adaptive methods have enabled energy optimization at a variety of operating conditions for different powertrain architectures, ranging from hybrid powertrains 4 to advanced combustion engines. 57 This study focuses on the latter, applying data-driven adaptive optimal control strategies to improve the efficiency of internal combustion engines.…”
Section: Introductionmentioning
confidence: 99%