Javascript must be enabled to continue!
Optimization Of Intrusion Detection Using Likely Point PSO And Enhanced LSTM-RNN Hybrid Technique In Communication Networks
View through CrossRef
“Intrusion detection system (IDS)” is a significant component of maintaining secure communication networks and all network managers have embraced it to their happiness. Several methods have been proposed on the early intrusion detection systems. Nevertheless, they possess issues that render them less efficient in dealing with new/different threats in the future. To make IDS more secure we propose the application of the “enhanced long-short term memory (ELSTM) approach with a recurrent neural network (RNN) (ELSTM-RNN)”. Intrusion detection systems have had several associated challenges which include gradient vanishing, generalization, and overfitting. In the proposed method, the issue of gradient clipping is addressed “through probably point particle swarm optimization (LPPSO) and enhanced LSTM classification. To test and validate the proposed method, we have used NSL-KDD dataset (KDD test PLUS and KDD TEST21)”. particle swarm optimization is a superior technique we used to select numerous helpful features. The selected attributes are utilized to classification with high performance using an enhanced LSTM model, which is adopted to rapidly classify attack data among the normal data. To retest the proposed system, “we applied it to the u.s.-NB15, CICIDS2017, CSE-CIC-IDS2018, and BOT_DATASET datasets suggested”. The findings indicate that the proposed system requires less time to train compared with current methods of various classes. “Finally, the performance of the proposed ELSTM-RNN architecture is examined with the help of several metrics such as accuracy, precision, recall, and error rate”. Our approach outperformed DNNs approaches.
we try out an ensemble way to improve performance, using a voting Classifier using voting classifier and stacking
classifier algorithms. This method achieves an amazing accuracy of 100%. This ensemble method combines several distinct models to make an intrusion detection system that is more stable and dependable. The results show that the suggested ELSTM-RNN architecture works well and might be improved even more by using ensemble methods. this is a huge step forward for IDS security and performance.
Title: Optimization Of Intrusion Detection Using Likely Point PSO And Enhanced LSTM-RNN Hybrid Technique In Communication Networks
Description:
“Intrusion detection system (IDS)” is a significant component of maintaining secure communication networks and all network managers have embraced it to their happiness.
Several methods have been proposed on the early intrusion detection systems.
Nevertheless, they possess issues that render them less efficient in dealing with new/different threats in the future.
To make IDS more secure we propose the application of the “enhanced long-short term memory (ELSTM) approach with a recurrent neural network (RNN) (ELSTM-RNN)”.
Intrusion detection systems have had several associated challenges which include gradient vanishing, generalization, and overfitting.
In the proposed method, the issue of gradient clipping is addressed “through probably point particle swarm optimization (LPPSO) and enhanced LSTM classification.
To test and validate the proposed method, we have used NSL-KDD dataset (KDD test PLUS and KDD TEST21)”.
particle swarm optimization is a superior technique we used to select numerous helpful features.
The selected attributes are utilized to classification with high performance using an enhanced LSTM model, which is adopted to rapidly classify attack data among the normal data.
To retest the proposed system, “we applied it to the u.
s.
-NB15, CICIDS2017, CSE-CIC-IDS2018, and BOT_DATASET datasets suggested”.
The findings indicate that the proposed system requires less time to train compared with current methods of various classes.
“Finally, the performance of the proposed ELSTM-RNN architecture is examined with the help of several metrics such as accuracy, precision, recall, and error rate”.
Our approach outperformed DNNs approaches.
we try out an ensemble way to improve performance, using a voting Classifier using voting classifier and stacking
classifier algorithms.
This method achieves an amazing accuracy of 100%.
This ensemble method combines several distinct models to make an intrusion detection system that is more stable and dependable.
The results show that the suggested ELSTM-RNN architecture works well and might be improved even more by using ensemble methods.
this is a huge step forward for IDS security and performance.
.
Related Results
Estimating PM10 Concentration from Drilling Operations in Open-Pit Mines Using an Assembly of SVR and PSO
Estimating PM10 Concentration from Drilling Operations in Open-Pit Mines Using an Assembly of SVR and PSO
Dust is one of the components causing heavy environmental pollution in open-pit mines, especially PM10. Some pathologies related to the lung, respiratory system, and occupational d...
Hybrid RNN-LSTM Networks for Enhanced Intrusion Detection in Vehicle CAN Systems
Hybrid RNN-LSTM Networks for Enhanced Intrusion Detection in Vehicle CAN Systems
Electric vehicles (EVs) use electric motors for propulsion, relying on electric energy stored in batteries or other energy storage devices. The standard communication protocol used...
Energy-efficient architectures for recurrent neural networks
Energy-efficient architectures for recurrent neural networks
Deep Learning algorithms have been remarkably successful in applications such as Automatic Speech Recognition and Machine Translation. Thus, these kinds of applications are ubiquit...
A Synchronous-Asynchronous Particle Swarm Optimisation Algorithm
A Synchronous-Asynchronous Particle Swarm Optimisation Algorithm
In the original particle swarm optimisation (PSO) algorithm, the particles’ velocities and positions are updated after the whole swarm performance is evaluated. This algorithm is a...
Optimasi Panjang Interval Fuzzy Time Series Chen Menggunakan Particle Swarm Optimization
Optimasi Panjang Interval Fuzzy Time Series Chen Menggunakan Particle Swarm Optimization
Abstract. Fuzzy Time Series (FTS) Chen is a forecasting method based on fuzzy logic relationships for time series data. However, the accuracy of this method heavily depends on the ...
Particle Swarm Optimisation for Edge Detection in Noisy Images
Particle Swarm Optimisation for Edge Detection in Noisy Images
<p>Detection of continuous and connected edges is very important in many applications, such as detecting oil slicks in remote sensing and detecting cancers in medical images....
Abstract 14986: A Randomized Trial of Statins to Reduce Vascular Endothelial Inflammation in Psoriasis
Abstract 14986: A Randomized Trial of Statins to Reduce Vascular Endothelial Inflammation in Psoriasis
Introduction:
Psoriasis (PsO) is a chronic skin disease associated with increased CV risk. Systemic and vascular endothelial inflammation in PsO is highly prevalent and...
Development and application of biological intelligence technology in computer
Development and application of biological intelligence technology in computer
To study the development and application of biological intelligence technology in computers and realize high-precision network anomaly detection, a distributed intrusion detection ...

