2017 IEEE Congress on Evolutionary Computation (CEC) 2017
DOI: 10.1109/cec.2017.7969631
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A learning intelligent System for classification and characterization of localized faults in Smart Grids

Abstract: The worldwide power grid can be thought as a System of Systems deeply embedded in a time-varying, non-deterministic and stochastic environment. The availability of ubiquitous and pervasive technology about heterogeneous data gathering and information processing in the Smart Grids allows new methodologies to face the challenging task of fault detection and modeling. In this study, a fault recognition system for Medium Voltage feeders operational in the power grid in Rome, Italy, is presented. The recognition ta… Show more

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Cited by 9 publications
(5 citation statements)
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“…In the decision tree algorithm, based on the feature value decision is made on data instances, thus grid data can be classified as faulty or anomalous. Santisa et al [45] and [59] considered it as a one-class classification problem and proposed a combined method of dissimilarity measures learning by evolutionary learning and clustering techniques. Then they analyzed the results using a fuzzy set-based decision rule.…”
Section: ) Power Data Analyticsmentioning
confidence: 99%
See 1 more Smart Citation
“…In the decision tree algorithm, based on the feature value decision is made on data instances, thus grid data can be classified as faulty or anomalous. Santisa et al [45] and [59] considered it as a one-class classification problem and proposed a combined method of dissimilarity measures learning by evolutionary learning and clustering techniques. Then they analyzed the results using a fuzzy set-based decision rule.…”
Section: ) Power Data Analyticsmentioning
confidence: 99%
“…Power fault [45], [59], power quality event [31] detection Transmission fault [92] detection Power swing fault, islanding [76], [16] detection [92],…”
Section: Malbasa Proposed Activementioning
confidence: 99%
“…However, the approach was limited to collecting the security system information in a distribution system with DGs for fault recognition or failure detection. Likewise, De Santis et al [134] developed a method to detect faults in the grid activity of medium-voltage feeders in Rome, Italy. In addition, the encryption solution for an advanced metering network (AMI) of the SG has been suggested and introduced in [135] for a specific AMI encryption method.…”
Section: Challenges and Future Prospectsmentioning
confidence: 99%
“…Thanks to the development of ICT technology in power systems, a huge volume of data can be collected via AMI and communication infrastructures. Power system operating data, weather information and log data of relay protection devices are processed as the input of a one class classification system, which is a data-driven model of fault phenomena based on a hybridization of evolutionary learning and clustering techniques in (De Santis et al, 2015;De Santis et al, 2017). This fault recognition system is validated in the medium voltage power grid in Rome.…”
Section: Predictive Maintenance/condition Based Maintenancementioning
confidence: 99%