• Title of article

    Knock Detection in Spark Ignition Engines Base on Complementary Ensemble Empirical Mode Decomposition-Hilbert Transform

  • Author/Authors

    Bi, Fengrong State Key Laboratory of Engines- Tianjin University, China , Ma,Teng State Key Laboratory of Engines- Tianjin University, China , Zhang, Jian State Key Laboratory of Engines - Tianjin University, China , Li,Lin State Key Laboratory of Engines - Tianjin University, China , Shi, Chunfang State Key Laboratory of Engines - Tianjin University, China

  • Pages
    18
  • From page
    1
  • To page
    18
  • Abstract
    In spark ignition engines, knock onset limits the maximum spark advance. An inaccurate identification of this limit penalises the fuel conversion efficiency. Thus knock feature extraction is the key of closed-loop control of ignition in spark ignition engine. This paper reports an investigation of knock detection in spark ignition (SI) engines using CEEMD-Hilbert transform based on the engine cylinder pressure signals and engine cylinder block vibration signals. Complementary Ensemble Empirical Mode Decomposition (CEEMD) was used to decompose the signal and detect knock characteristic. Hilbert transform was used to analyze the frequency information of knock characteristic. The result shows that, for both of cylinder pressure signals and vibration signals, the CEEMD algorithm could extract the knock characteristic, and the Hilbert transform result shows that the energy of knock impact areas has the phenomenon of frequency concentration in both cylinder pressure signal and cylinder block vibration signal. At last, the knock window is then determined, based on which a new knock intensity evaluation factor is propose, and it can accurately distinguish between heavy knock, light knock, and normal combustion three states.
  • Keywords
    Knock Detection , Spark Ignition Engines , Complementary Ensemble Empirical , Mode Decomposition-Hilbert Transform
  • Journal title
    Shock and Vibration
  • Serial Year
    2016
  • Record number

    2616567