Industrial IoT to Predictive Analytics:
A Reverse Engineering Approach from Shipping.
Lokukaluge Prasad Perera
SINTEF Ocean, Trondheim, Norway.
3rd Norwegian Big Data Symposium (NOBIDS) 2017,
1
Industrial Digitalization in Shipping
" Poor data quality costs…
the US economy around US$ 3.1 trillions per year"*
"1 in 3 Business Leaders don't trust…
the information they use to make decisions "*
"27% of the respondents in a survey…
were unsure of how much of their data sets are inaccurate"*
*IBM, The four V's of Big Data, URL:http://www.ibmbigdatahub.com/infographic/four-vs-big-data, 2017.
Ship Engine Data
• The vessel is a bulk carrier with ship length: 225
(m) and beam: 32.29 (m)
• Two parameters: engine speed and power
• Combined kernel density estimation (multivariate
KDE) with the respective univariate KDEs
• Engine data are clustered around three Gaussian type
distributions
• Three engine modes of this vessel
• Ship performance and navigation data sets are
often clustered in a high dimensional space
• Those clusters relate to vessel navigation and
ship system operational conditions
• That introduce the discreteness (i.e. digital-
ness) into the proposed models
Digital Models
• Three data clusters with the respective mean vectors
• Three-dimensional vector space with the right-hand coordinate system
• Each data cluster consists of local navigation and operational information of the vessel and ship systems
• The structure of each data cluster is denoted by several vectors: singular vectors (i.e. associated
with the respective singular values)
4
Data Structure
Advanced Data Analytics
• Descriptive analytics identifies various data anomalies
• Diagnostic analytics recovers/removes such data anomalies
• Predictive analytics forecasts vessel and ship system behavior
• Visual analytics visualizes the same information
• The information creates Advanced Knowledge and that will lead to Industrial Intelligence.
• Both advanced knowledge and industrial intelligence support Decision Analytics.
• Decision analytics consists of appropriate Key Performance Indicators (i.e. KPIs)
Data Anomaly Detection and Recovery Procedure
• Digital models interact with the descriptive and diagnostic analytics to improve the data quality
• Data anomaly filter 1: missing data points and preliminary data anomalies (i.e. Min-Max values) detected
• Data anomaly filter 2: Additional data anomalies (i.e. the outliers of digital models) detected
• Data anomalies send to separate groups where the data anomalies against known and unknown sensor and
DAQ faults and system abnormalities compared
• Data sets from anomaly group 1 and 2 transfer through the data recovery filter and digital models
• A considerable amount of data anomalies can be recovered by this step
Predictive Analytics
• Digital models connect with several observers and that create the respective predictive analytics.
• Each model represents a local linear model of vessel navigation and ship system operation behavior.
• A global nonlinear model that represents the vessel and ship system behavior.
• The outputs of the predictive analytics are predicted vessel and ship system behavior.
• That behavior is converted to vessel navigation and ship system operation information by visual analytics.
• The information creates advanced knowledge and facilitates towards industrial intelligence
• Advanced knowledge develops appropriate decision analytics
Conclusions
• A novel mathematical framework to support industrial digitization of shipping is
presented: a data flow path, i.e. from Industrial IoT to Predictive Analytics.
• The proposed data analytics can…
• self-learn (i.e. the data structure can learn itself)
• self-clean (i.e. data anomalies can be detected, isolated and recovered by considering the outliers of the
data structure),
• self-compress and expend (i.e. the respective parameters in the data sets can be reduced and expanded by
considering the same data structure)
• self-visualize (i.e. the respective data structures can be used for both vessel and ship system performance
observations)
• Since this framework is developed from ship performance and navigation data sets,
this process can also be a reverse engineering approach of the vessel and ship
systems.
• That introduces Intelligent Analytics to the shipping industry and also provides
important solutions to the big data challenges under Industrial Digitalization.

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Industrial IoT to Predictive Analytics: A Reverse Engineering Approach from Shipping

  • 1. Industrial IoT to Predictive Analytics: A Reverse Engineering Approach from Shipping. Lokukaluge Prasad Perera SINTEF Ocean, Trondheim, Norway. 3rd Norwegian Big Data Symposium (NOBIDS) 2017, 1
  • 2. Industrial Digitalization in Shipping " Poor data quality costs… the US economy around US$ 3.1 trillions per year"* "1 in 3 Business Leaders don't trust… the information they use to make decisions "* "27% of the respondents in a survey… were unsure of how much of their data sets are inaccurate"* *IBM, The four V's of Big Data, URL:http://www.ibmbigdatahub.com/infographic/four-vs-big-data, 2017.
  • 3. Ship Engine Data • The vessel is a bulk carrier with ship length: 225 (m) and beam: 32.29 (m) • Two parameters: engine speed and power • Combined kernel density estimation (multivariate KDE) with the respective univariate KDEs • Engine data are clustered around three Gaussian type distributions • Three engine modes of this vessel • Ship performance and navigation data sets are often clustered in a high dimensional space • Those clusters relate to vessel navigation and ship system operational conditions • That introduce the discreteness (i.e. digital- ness) into the proposed models
  • 4. Digital Models • Three data clusters with the respective mean vectors • Three-dimensional vector space with the right-hand coordinate system • Each data cluster consists of local navigation and operational information of the vessel and ship systems • The structure of each data cluster is denoted by several vectors: singular vectors (i.e. associated with the respective singular values) 4 Data Structure
  • 5. Advanced Data Analytics • Descriptive analytics identifies various data anomalies • Diagnostic analytics recovers/removes such data anomalies • Predictive analytics forecasts vessel and ship system behavior • Visual analytics visualizes the same information • The information creates Advanced Knowledge and that will lead to Industrial Intelligence. • Both advanced knowledge and industrial intelligence support Decision Analytics. • Decision analytics consists of appropriate Key Performance Indicators (i.e. KPIs)
  • 6. Data Anomaly Detection and Recovery Procedure • Digital models interact with the descriptive and diagnostic analytics to improve the data quality • Data anomaly filter 1: missing data points and preliminary data anomalies (i.e. Min-Max values) detected • Data anomaly filter 2: Additional data anomalies (i.e. the outliers of digital models) detected • Data anomalies send to separate groups where the data anomalies against known and unknown sensor and DAQ faults and system abnormalities compared • Data sets from anomaly group 1 and 2 transfer through the data recovery filter and digital models • A considerable amount of data anomalies can be recovered by this step
  • 7. Predictive Analytics • Digital models connect with several observers and that create the respective predictive analytics. • Each model represents a local linear model of vessel navigation and ship system operation behavior. • A global nonlinear model that represents the vessel and ship system behavior. • The outputs of the predictive analytics are predicted vessel and ship system behavior. • That behavior is converted to vessel navigation and ship system operation information by visual analytics. • The information creates advanced knowledge and facilitates towards industrial intelligence • Advanced knowledge develops appropriate decision analytics
  • 8. Conclusions • A novel mathematical framework to support industrial digitization of shipping is presented: a data flow path, i.e. from Industrial IoT to Predictive Analytics. • The proposed data analytics can… • self-learn (i.e. the data structure can learn itself) • self-clean (i.e. data anomalies can be detected, isolated and recovered by considering the outliers of the data structure), • self-compress and expend (i.e. the respective parameters in the data sets can be reduced and expanded by considering the same data structure) • self-visualize (i.e. the respective data structures can be used for both vessel and ship system performance observations) • Since this framework is developed from ship performance and navigation data sets, this process can also be a reverse engineering approach of the vessel and ship systems. • That introduces Intelligent Analytics to the shipping industry and also provides important solutions to the big data challenges under Industrial Digitalization.