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Institution

North Eastern Regional Institute of Science and Technology

EducationItanagar, India
About: North Eastern Regional Institute of Science and Technology is a education organization based out in Itanagar, India. It is known for research contribution in the topics: Population & Raman spectroscopy. The organization has 813 authors who have published 1429 publications receiving 16122 citations.


Papers
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Journal ArticleDOI
TL;DR: In this article, a tentative mechanism for the decomposition in air is proposed and the kinetic parameters, mainly E * of the dehydration and decomposition steps in TG, were calculated using four non-mechanistic equations.

10 citations

Journal ArticleDOI
TL;DR: In this paper, a comparative review of Jatropha Curcas-based insulating oil has been presented based on the experimental results from the previous studies, perspective on the current status and future development needs are discussed.

10 citations

Journal ArticleDOI
01 Oct 2020-Optik
TL;DR: In this article, the influence of EBW parameters on a popular aerospace alloy (i.e., Inconel 825) was investigated using two different approaches viz., statistical approach based response surface methodology (RSM) and soft computing based artificial neural network (ANN).

10 citations

Journal ArticleDOI
TL;DR: This paper investigates the use of machine learning techniques, viz., SVM, Neural Network, Naive Bayes and Ensemble classifiers for detection of SSDF attacks in a CRN where the sensing reports are binary (i.e., either 1 or 0).
Abstract: One primary function in a cognitive radio network (CRN) is spectrum sensing. In an infrastructure-based CRN, instead of individual nodes independently sensing the presence of the incumbent signal and taking decisions thereon, a fusion center (FC) aggregates the sensing reports from the individual nodes and makes the final decision. Such collaborative spectrum sensing (CSS) is known to result in better sensing accuracy. On the other hand, CSS is vulnerable to Spectrum Sensing Data Falsification (SSDF) attack (a.k.a. Byzantine attack) wherein a node maliciously falsifies the sensing report prior to sending it to the FC, with the intention of disrupting the spectrum sensing process. This paper investigates the use of machine learning techniques, viz., SVM, Neural Network, Naive Bayes and Ensemble classifiers for detection of SSDF attacks in a CRN where the sensing reports are binary (i.e., either 1 or 0). The learning techniques are studied under two experimental scenarios: (a) when the training and test data are drawn from the same data-set, and (b) when separate data-sets are used for training and testing. Under the first scenario, of all the techniques, NN and Ensemble are the most robust showing consistently very good performance across varying presence of attackers in the system. Moreover performance comparison with an existing non-machine learning technique shows that the learning techniques are generally more robust than the existing algorithm under high presence of attackers. Under the second scenario, in a limited environment, Ensemble is the most robust method showing good overall performance.

10 citations


Authors

Showing all 824 results

NameH-indexPapersCitations
Rajendra Singh5240210732
Pramod Pandey4629210218
S. A. Hashmi401044453
Debashish Pal39908211
Santosh Kumar Sarkar351254177
Narendra Singh Raghuwanshi311364298
Suresh Kumar294073580
Mohammed Latif Khan27922495
Ashish Pandey27632311
A. K. Singh2510784880
Pradeep Kumar241122520
N. K. Goel23462115
Ayyanadar Arunachalam23731566
R. S. Tripathi22311552
S. Ravi201381338
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Performance
Metrics
No. of papers from the Institution in previous years
YearPapers
202310
202220
2021181
2020206
2019150
2018137