Defining, Analyzing, and Clustering Drive Cycles for Engine Applications Through Feature Engineering
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Publicerad
Författare
Typ
Examensarbete för masterexamen
Master's Thesis
Master's Thesis
Modellbyggare
Tidskriftstitel
ISSN
Volymtitel
Utgivare
Sammanfattning
An ordered sequence of measurements, or time series, is the raw representation from
which many analytics and data-driven decisions are made in the automotive industry.
Volvo Penta is a company determined to become more data-driven to stay
ahead of the competition. In this endeavor, signals from various manufactured engines
in the field are logged as time series data. Through analysis of this data lies
the information from which to obtain the repeated behavioral pattern of an engine
in use, otherwise known as drive cycles. This thesis aims to segment time series
data from an engine placed in a log stacker into drive cycles and engineer, extract,
and select relevant features descriptive of engine usage from these. From the cycles
with accompanying features, clustering techniques will be applied to group the
drive cycles into behaviorally distinct categories. Drive cycles were defined by segmenting
consecutive engine signals whenever the gap between recorded signal values
exceeded ten minutes. Filtering was then applied to remove uninformative and outlier
cycles. From the remaining cycles, features were derived, which, after selection,
yielded eight temporal and statistical features that formed the basis for clustering.
Using these features, the clustering algorithms k-means, agglomerative, and meanshift
were employed, resulting in clusters that depicted two main engine behaviors.
These were high- and low-load behaviors. The exception was the resulting clusters
produced by mean-shift, which exhibited a single dominant behavior and a few deviating
cycles. A consensus partition integrated all three methods and agreed with the
solution provided by k-means. This thesis demonstrates that feature-based, unsupervised
clustering can group drive cycles segmented from engine field test data into
behaviorally distinct categories. These findings further the goals of Volvo Penta’s
mission to become more data-driven and demonstrate the potential of clustering as
a first step in areas such as engine simulation and predictive maintenance.
Beskrivning
Ämne/nyckelord
agglomerative, consensus clustering, drive cycle, feature engineering, kmeans, mean-shift, segmentation, time series, unsupervised clustering, Volvo Penta. v
