Analysis and Prediction of Alerts in Perimeter Intrusion Detection System.

Received: 06 Jan 2020, Revised: 09 Jan 2020, Accepted: 24 Feb 2020, Available online: 27 Mar 2020, Version of Record: 27 Mar 2020

Aggarwal, Rizul; Goswami, Anjali; Kumar, Jitender; Chullai, G. A.

Abstract


Perimeter surveillance systems play an important role in the safety and security of the armed forces. These systems tend to generate alerts in advent of anomalous situations, which require human intervention. The challenge is the generation of false alerts or alert flooding which makes these systems inefficient. In this paper, we focus on short-term as well as long-term prediction of alerts in the perimeter intrusion detection system. We have explored the dependent and independent aspects of the alert data generated over a period of time. Short-term prediction is realized by exploiting the independent aspect of data by narrowing it down to a time-series problem. Time-series analysis is performed by extracting the statistical information from the historical alert data. A dual-stage approach is employed for analyzing the time-series data and support vector regression is used as the regression technique. It is helpful to predict the number of alerts for the nth hour. Additionally, to understand the dependent aspect, we have investigated that the deployment environment has an impact on the alerts generated. Long-term predictions are made by extracting the features based on the deployment environment and training the dataset using different regression models. Also, we have compared the predicted and expected alerts to recognize anomalous behaviour. This will help in realizing the situations of alert flooding over the potential threat.
Subjects
FORECASTINGSTATISTICSTIME series analysisFALSE alarmsREGRESSION analysis



Description



   

Indexed in scopus

https://openurl.ebsco.com/EPDB%3Agcd%3A8%3A28280552/detailv2?sid=ebsco%3Aplink%3Aresult-item&id=ebsco%3Adoi%3A10.14429%2Fdsj.70.15545&bquery=Defence%20Science%20Journal&page=8&link_origin=www.google.com
      

Article metrics

10.31763/DSJ.v5i1.1674 Abstract views : | PDF views :

   

Cite

   

Full Text

Download

Conflict of interest


“Authors state no conflict of interest”


Funding Information


This research received no external funding or grants


Peer review:


Peer review under responsibility of Defence Science Journal


Ethics approval:


Not applicable.


Consent for publication:


Not applicable.


Acknowledgements:


None.