Abstract—Symbolic Dynamic Filtering (SDF) has been re-cently reported in literature as a pattern recognition tool for early detection of anomalies (i.e., deviations from the nominal behavior) in complex dynamical systems. This paper presents a comparative evaluation of SDF relative to other classes of pattern recognition tools, such as Bayesian Filters and Artificial Neural Networks, from the perspectives of: (i) Anomaly detection capability, (ii) Decision making for failure mitigation and (iii) Computational efficiency. The evaluation is based on analysis of time series data generated from a nonlinear active electronic system
This paper introduces the DANTE project: Detection of Anomalies and Novelties in Time sEries with se...
This paper introduces the DANTE project: Detection of Anomalies and Novelties in Time sEries with se...
Thesis (Ph.D.)--Boston UniversityThis dissertation focuses on two types of problems, both of which a...
Gradual development of anomalies (i.e., deviations from the nominal condition) may alter the quasi-s...
Abstract—Symbolic dynamic filtering (SDF) has been re-ported in recent literature for early detectio...
Maturity of engineering and scientific theories in recent decades has facilitated cre-ation of advan...
Abstract Recent literature has reported the theory of symbolic dynamic filtering (SDF) of one-dimens...
Possibility theory can be used as a suitable frameworkto build a normal behavioral model for an anom...
International audienceIn this work we develop an approach for anomaly detection for large scale netw...
AbstractOne of the key issues in symbolic dynamic filtering (SDF) is how to obtain a lower bound on ...
University of Minnesota Ph.D. dissertation.June 2016. Major: Computer Science. Advisor: Arindam Ban...
Abstract — This paper presents estimation of multiple faults in aircraft gas-turbine engines, based ...
This paper introduces the DANTE project: Detection of Anomalies and Novelties in Time sEries with se...
Abstract—This paper examines the efficacy of a novel method for anomaly detection in mechanical syst...
This paper introduces the DANTE project: Detection of Anomalies and Novelties in Time sEries with se...
This paper introduces the DANTE project: Detection of Anomalies and Novelties in Time sEries with se...
This paper introduces the DANTE project: Detection of Anomalies and Novelties in Time sEries with se...
Thesis (Ph.D.)--Boston UniversityThis dissertation focuses on two types of problems, both of which a...
Gradual development of anomalies (i.e., deviations from the nominal condition) may alter the quasi-s...
Abstract—Symbolic dynamic filtering (SDF) has been re-ported in recent literature for early detectio...
Maturity of engineering and scientific theories in recent decades has facilitated cre-ation of advan...
Abstract Recent literature has reported the theory of symbolic dynamic filtering (SDF) of one-dimens...
Possibility theory can be used as a suitable frameworkto build a normal behavioral model for an anom...
International audienceIn this work we develop an approach for anomaly detection for large scale netw...
AbstractOne of the key issues in symbolic dynamic filtering (SDF) is how to obtain a lower bound on ...
University of Minnesota Ph.D. dissertation.June 2016. Major: Computer Science. Advisor: Arindam Ban...
Abstract — This paper presents estimation of multiple faults in aircraft gas-turbine engines, based ...
This paper introduces the DANTE project: Detection of Anomalies and Novelties in Time sEries with se...
Abstract—This paper examines the efficacy of a novel method for anomaly detection in mechanical syst...
This paper introduces the DANTE project: Detection of Anomalies and Novelties in Time sEries with se...
This paper introduces the DANTE project: Detection of Anomalies and Novelties in Time sEries with se...
This paper introduces the DANTE project: Detection of Anomalies and Novelties in Time sEries with se...
Thesis (Ph.D.)--Boston UniversityThis dissertation focuses on two types of problems, both of which a...