This content is not included in
your SAE MOBILUS subscription, or you are not logged in.
Chaos Theory Approach as Advanced Technique for GDI Spray Analysis
Technical Paper
2017-01-0839
ISSN: 0148-7191, e-ISSN: 2688-3627
This content contains downloadable datasets
Annotation ability available
Sector:
Language:
English
Abstract
The paper reports an innovative method of analysis based on an advanced statistical techniques applied to images captured by a high-speed camera that allows highlighting phenomena and anomalies hardly detectable by conventional optical diagnostic techniques. The images, previously elaborated by neural network tools in order for clearly identifying the contours, have been analyzed in their time evolution as pseudo-chaotic variables that may have internal periodic components. In addition to the Fourier analysis, tools as Lyapunov and Hurst exponents and average Kω permitted to detect the chaos level of the signals. The use of this technique has permitted to distinguish periodic oscillations from chaotic variations and to detect those parameters that actually determine the spray behavior.
Authors
Topic
Citation
Allocca, L., Montanaro, A., Amoresano, A., Langella, G. et al., "Chaos Theory Approach as Advanced Technique for GDI Spray Analysis," SAE Technical Paper 2017-01-0839, 2017, https://doi.org/10.4271/2017-01-0839.Data Sets - Support Documents
Title | Description | Download |
---|---|---|
Unnamed Dataset 1 | ||
Unnamed Dataset 2 |
Also In
References
- de Albuquerque V.H.C. , de Alexandria A.R. , Cortez Paulo Ce´ sar , and Tavares Joa~o Manuel R.S. Evaluation of Multilayer Perceptron and Self-organizing Map Neural Network Topologies Applied on Microstructure Segmentation from Metallographic Images NDT&E International 42 2009 644 651
- Funahashi , K. On the Approximate Realization of Continuous Mappings by Neural Networks J. Neural. Netw. 2 1989 183 192
- Hornik , K. , Stinchcombe , M. , and White , M. Multilayer Feed forward Networks are Universal Approximators Neural. Netw. 2 1989 359 366
- Soteris , A. , and Kalogirou Artificial Intelligence for the Modeling and Control of Combustion Processes: a Review Progress in Energy and Combustion Science 29 2003 515 566
- Kangas , J. , and Kohonen T. Developments and Applications of the Self-organizing Map and Related Algorithms Mathematics and Computers in Simulation 41 1996 3 12
- Dragomir , O. E. , Dragomir , F. , and Radulescu , M. Matlab Application of Kohonen Self-Organizing Map to Classify Consumers’ Load Profiles 2nd International Conference on Information Technology and Quantitative Management, ITQM 2014 Procedia Computer Science 31 2014 474 479
- Kohonen , T. , Schroeder , M.R. , and Huang , T.S. Self-Organizing Maps 3rd Springer-Verlag New York, Inc Secaucus, NJ, USA 2001
- del Coso , C. , Fustes , D. , Dafonte , C. , Nóvoa F.J. et al. Mixing Numerical and Categorical Data in a Self-Organizing Map by means of Frequency Neurons Applied Soft Computing 36 2015 246 254
- Chacon-Murguia , M.I. , and Ramirez-Alonso , G. Visual, Fuzzy-neural Self-adapting Background Modeling with Automatic Motion Analysis for Dynamic Object Detection Applied Soft Computing 36 2015 570 577
- Ha , J.Y. , Hanazato , T. , Chang , K.H , Jeong , K.S et al. Assessment of the Lake Biomanipulation Mediated by Piscivorous Rainbow Trout and Herbivorous Daphnids using a Self-organizing Map: A Case Study in Lake Shirakaba Japan, Ecological Informatics 29 2015 182 191
- Chaplot , S. , Patnaik , L.M. , and Jagannatha , N.R Classification of Magnetic Resonance Brain Images using Wavelets as Input to Support Vector Machine and Neural Network Biomedical Signal Processing and Control 1 2006 86 92
- Subbiah , S. , Rosbach , S. , Von-Hoersten , H. , and Turrin , S. An Intuitive Diagnostic Model for Gas Analyzers based on Self Organizing Maps IFAC-PapersOnLine 48-21 2015 814 819
- Amoresano , A. , Langella , G. , Niola , V. , and Quaremba , G. Advanced Image Analysis of Two-Phase Flow inside a Centrifugal Pump Advances in Mechanical Engineering 2014 2014
- Amoresano , A. , Langella , G. , Niola , V. , and Quaremba , G. 2013 A statistical method to identify the main parameters characterizing a pressure swirl spray International Review Of Mechanical Engineering 1970-8734 981 987 7
- Amoresano , A. , Langella , G. , Niola , V. , and Quaremba , G. Advanced Images Analysis of Two Phase Flow Inside a Centrifugal Pump Advances in Mechanical Engineering 2014 11 http://dx.doi.org/10.1155/2014/958320
- Allouis , C. , Amoresano , A. , Langella , G. , Niola , V. et al. Characterization of gas turbine burner instabilities by wavelet analysis of infrared images Experimental Thermal and Fluid Science 2015 10.1016/j.expthermflusci.2015.09.028
- Quaremba , G. , Allocca , L. , Amoresano , A. , Niola , V. et al. Fuzzy Logic Approach to GDI Spray Characterization SAE Technical Paper 2016-01-0874 2016 10.4271/2016-01-0874
- www.sandia.gov/ecn
- Malaguti , S. , Fontanesi , S. , Cantore , G. , Allocca , L. et al. Modelling of Primary Breakup of a Gasoline Direct Engine Multi-Hole Spray Atomization and Sprays 23 10 861 888
- Montanaro , A. and Allocca , L. Flash Boiling Evidences of a Multi-Hole GDI Spray under Engine Conditions by Mie-Scattering Measurements SAE Technical Paper 2015-01-1945 2015 10.4271/2015-01-1945
- Allocca , L. , Montanaro , A. , Di Gioia , R. , and Bonandrini , G. Spray Characterization of a Single-Hole Gasoline Injector under Flash Boiling Conditions SAE Technical Paper 2014-32-0041 2014 10.4271/2014-32-0041
- Gottwald , G.A. , and Melbourne , I. A new test for chaos in deterministic systems Proc. R. Soc. London, A 460 2004 603 611
- Gottwald , G.A. , and Melbourne , I. Testing for chaos in deterministic systems with noise Physica D 212 2005 100 110
- Alan , V. , Ronald , W. , and John R. Discrete-Time Signal Processing Upper Saddle River, NJ Prentice-Hall 1999
- Parker , T. , and Chua , L.O. Practical numerical algorithms of dynamical systems Springer 1989
- Baker , G.L. , and Gollub , J.P. Chaotic Dynamics an Introduction Cambridge University Press 1990
- Giannakapoulos , K. , Deliyannis , T. , and Hadjidemetrion , J. Means for Detecting Chaos and Hyperchaos in Nonlinear Elecytronic Circuits DSP 2 951 954 2002
- Yuan , L. , Yang , Q. , and Zeng C. Chaos detection and parameter identification in fractional-order chaotic systems with delay Nonlinear Dynamics 73 1-2 439 448 2013
- Zaslavskii , G.M. , Sagdeev , R.Z. , Usikov. D.A. , Chernikov , A.A. et al. Chaos and Quasi-Regular Patterns Cambridge University Press Cambridge 1992
- Brahona , M. , and Poon , C.S. Detection of nonlinear dynamics in short, noisy time series Nature 381 215 217 1996
- Cazelles , B. , and Ferriere R.H. How predictable is chaos? Nature 355 25 26 1992
- Eckmann , J.P. , Kamphorst , S.O. , Ruelle , D. , and Ciliberto , S. Liapunov exponents from time series Phys. Rev. A34 4971 4979 1986
- Melbourne , I. , and Nicol , M. Statistical properties of endomorphisms and compact group extensions Un. of Surrey UK 2003
- Sano , M. , and Sawada , Y. Measurement of the Lyapunov spectrum from chaotic time series Phys. Re. Lett. 55 1082 1085 1985