Visible to the public Risk management with hard-soft data fusion in maritime domain awareness

TitleRisk management with hard-soft data fusion in maritime domain awareness
Publication TypeConference Paper
Year of Publication2014
AuthorsFalcon, R., Abielmona, R., Billings, S., Plachkov, A., Abbass, H.
Conference NameComputational Intelligence for Security and Defense Applications (CISDA), 2014 Seventh IEEE Symposium on
Date PublishedDec
Keywordsautomatic identification system, data mining, Douglas sea scale, dynamic systems, feature extraction, Feeds, hard data sources, hard-soft data fusion, Hidden Markov models, marine engineering, marine safety, Marine vehicles, Maritime Domain Awareness, maritime vessels, MDA scenarios, Measurement, response evaluation, risk features, risk management, risk management framework, risk-aware metric, RMF, semistructured textual data sources processing, sensor fusion, situational awareness, situational frameworks, soft data sources, worldwide maritime incidents
Abstract

Enhanced situational awareness is integral to risk management and response evaluation. Dynamic systems that incorporate both hard and soft data sources allow for comprehensive situational frameworks which can supplement physical models with conceptual notions of risk. The processing of widely available semi-structured textual data sources can produce soft information that is readily consumable by such a framework. In this paper, we augment the situational awareness capabilities of a recently proposed risk management framework (RMF) with the incorporation of soft data. We illustrate the beneficial role of the hard-soft data fusion in the characterization and evaluation of potential vessels in distress within Maritime Domain Awareness (MDA) scenarios. Risk features pertaining to maritime vessels are defined a priori and then quantified in real time using both hard (e.g., Automatic Identification System, Douglas Sea Scale) as well as soft (e.g., historical records of worldwide maritime incidents) data sources. A risk-aware metric to quantify the effectiveness of the hard-soft fusion process is also proposed. Though illustrated with MDA scenarios, the proposed hard-soft fusion methodology within the RMF can be readily applied to other domains.

URLhttp://ieeexplore.ieee.org/document/7035641/
DOI10.1109/CISDA.2014.7035641
Citation Key7035641