Josh Siegel
Assistant Professor @ Michigan State University
Home
Publications
Research
Teaching
Students
Contact
Download CV
“Engine Misfire Detection with Pervasive Mobile Audio”
Publications
Year
"2016"
Type(s)
Conference articles
Author(s)
"Siegel, Joshua
Source
In "Machine Learning and Knowledge Discovery in Databases", "2016"
BibTeX
BibTeX
BibTeX
@InProceedings{10.1007/978-3-319-46131-1_26, author="Siegel, Joshua editor="Berendt, Bettina title="Engine Misfire Detection with Pervasive Mobile Audio", booktitle="Machine Learning and Knowledge Discovery in Databases", year="2016", publisher="Springer International Publishing", address="Cham", pages="226--241", abstract="We address the problem of detecting whether an engine is misfiring by using machine learning techniques on transformed audio data collected from a smartphone. We recorded audio samples in an uncontrolled environment and extracted Fourier, Wavelet and Mel-frequency Cepstrum features from normal and abnormal engines. We then implemented Fisher Score and Relief Score based variable ranking to obtain an informative reduced feature set for training and testing classification algorithms. Using this feature set, we were able to obtain a model accuracy of over 99Â {%} using a linear SVM applied to outsample data. This application of machine learning to vehicle subsystem monitoring simplifies traditional engine diagnostics, aiding vehicle owners in the maintenance process and opening up new avenues for pervasive mobile sensing and automotive diagnostics.", isbn="978-3-319-46131-1"