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Enterprise AI Analysis: A Lightweight Sequential AI Framework for Real Time Intrusion Detection in Dynamic Vehicular Networks

Enterprise AI Analysis

A Lightweight Sequential AI Framework for Real Time Intrusion Detection in Dynamic Vehicular Networks

This paper proposes a novel Sequential AI-Powered Lightweight Intrusion Detection System (Seq-AIIDS) for real-time intrusion detection in dynamic vehicular networks (VANETs). The system enhances accuracy with minimal time consumption by using data acquisition, scrubbing, feature selection via Rosenthal correlation, and a liquid neural network with multipoint spiral search optimization for classification. Experimental results demonstrate superior performance in accuracy (98%), precision (96.57%), recall (98%), F1-score (97%), specificity (98.4%), and lower computational latency (29ms) compared to existing deep learning models.

Quantifiable Impact

Key performance indicators from the research highlight the significant advantages for enterprise integration.

0 Accuracy Achieved
0 Precision Rate
0 Recall Rate
0 Reduced Latency

Deep Analysis & Enterprise Applications

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Data Scrubbing Efficiency

The Seq-AIIDS efficiently cleans datasets by handling missing values with multivariate linear regression and removing outliers using the deviate statistical test. This significantly reduces data size and improves model performance.

41KB Data Reduction (from 1137KB to 1096KB)

Intrusion Detection Flow

The system follows a sequential process from data acquisition to optimized classification.

Enterprise Process Flow

Data Acquisition
Data Scrubbing
Feature Selection (Rosenthal Correlation)
Liquid Neural Network Classification
Multipoint Spiral Search Optimization
Real-time Intrusion Detection

Performance Benchmarking

Seq-AIIDS consistently outperforms traditional deep learning models across key metrics.

Metric Seq-AIIDS LSTM [1] CNN [2] GNN [3] CNN-GRU [11]
Accuracy (%) 98.13 91.33 92.74 94.7 96.98
Precision (%) 96.57 85.47 87.57 90.66 95.33
Recall (%) 98.07 89.37 89.37 92.47 94.73
F1 score (%) 97.31 86.35 88.46 91.55 94.99
Specificity (%) 98.41 91.91 93.63 95.25 97.31
Computational Latency (ms) 29.06 37.98 34.55 32.03 30.12

VANET Security Enhancement

The core application of Seq-AIIDS is to fortify Vehicular Ad-Hoc Networks (VANETs) against real-time intrusions, crucial for Intelligent Transportation Systems (ITS).

The Challenge

VANETs face significant security threats due to their dynamic and open nature, leading to issues like blackhole, Sybil, and DoS attacks. Traditional IDS struggle with real-time detection, high node mobility, and dynamic topology changes.

The Solution

Seq-AIIDS leverages a sequential AI-driven framework with a Liquid Neural Network, optimized by a multipoint spiral search algorithm. It employs Rosenthal correlation for efficient feature selection and robust data scrubbing, ensuring accurate and low-latency detection of malicious activities.

The Outcome

Improved real-time intrusion detection accuracy by up to 13% over previous models, with a 24% reduction in computational latency. This leads to enhanced road safety, traffic efficiency, and overall reliability of VANET communication, providing a more secure foundation for ITS.

Calculate Your Potential ROI

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Your AI Implementation Roadmap

A typical phased approach to integrate advanced AI solutions into your enterprise operations.

Phase 1: Discovery & Strategy (2-4 Weeks)

In-depth analysis of current systems, identifying key opportunities for AI integration, and developing a tailored strategy with clear objectives and success metrics.

Phase 2: Pilot & Proof-of-Concept (4-8 Weeks)

Developing and testing a small-scale AI pilot to validate the proposed solution, gather initial performance data, and refine the approach based on real-world feedback.

Phase 3: Development & Integration (8-16 Weeks)

Full-scale development of the AI solution, seamless integration with existing enterprise infrastructure, and rigorous testing to ensure robustness and scalability.

Phase 4: Deployment & Optimization (Ongoing)

Go-live of the AI system, continuous monitoring of performance, iterative optimization based on operational data, and ongoing support to ensure sustained value and evolution.

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