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Enterprise AI Analysis: Sustainable cyber-physical VANETs with AI-driven anomaly detection and energy-efficient multi-criteria routing using machine learning algorithms

AI ANALYSIS REPORT

Sustainable cyber-physical VANETs with AI-driven anomaly detection and energy-efficient multi-criteria routing using machine learning algorithms

This research introduces the AD-MLA framework for VANETs, integrating Random Forest with multi-criteria routing to achieve high accuracy (95.33%), low false positives (15.22%), and optimal computational efficiency (94.25%). It addresses scalability, latency, and energy challenges in real-time security for intelligent transportation systems. The framework ensures sustainability and adaptability for future cyber threats.

Key AI Impact Metrics

The AD-MLA framework delivers significant improvements across critical performance indicators, ensuring robust and efficient operation in dynamic VANET environments.

0 Detection Accuracy
0 Recall Rate
0 False Positive Rate
0 Computational Efficiency
0 Resource Usage Efficiency

Deep Analysis & Enterprise Applications

Select a topic to dive deeper, then explore the specific findings from the research, rebuilt as interactive, enterprise-focused modules.

The AD-MLA framework employs a Random Forest model to accurately detect abnormal activities, addressing high false-positive rates and computational demands. It uses intelligent feature selection, data clustering, and an energy-efficient routing strategy.

95.33% Achieved Detection Accuracy

Anomaly Detection Process

Network Traffic Monitoring
Packet Decoding
Feature Extraction & Preprocessing
Random Forest Classification
Anomaly Detection
Alert Generation

The routing strategy integrates node energy, signal strength, hop count, and link stability to optimize data transmission in dynamic urban VANET environments, ensuring safety-critical applications.

Routing Algorithm Comparison

Criteria AD-MLA (Proposed) Traditional VANET Routing
Energy Efficiency
  • Optimized based on residual energy
  • Less optimized, can deplete nodes
Link Stability
  • Prioritizes stable links
  • Can be volatile in dynamic environments
Real-time Performance
  • High, due to lightweight ML
  • Variable, often higher latency
Adaptability
  • Adaptive to dynamic VANETs
  • Less adaptive to rapid changes

The framework contributes to intelligent, clean transportation systems by enhancing VANET security, real-time adaptation, and operational efficiency, promoting eco-friendly transport.

Impact on Smart Cities

In a simulated smart city environment, AD-MLA reduced traffic congestion by 15% and energy consumption by 10% in connected vehicles over a 6-month period, demonstrating its practical benefits for sustainable urban infrastructure. The proactive anomaly detection led to a 20% decrease in cyber-incident response times.

Calculate Your Potential AI ROI

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Estimated Annual Savings $0
Hours Reclaimed Annually 0

Implementation Roadmap

A structured approach to integrating the AD-MLA framework into your enterprise, ensuring a smooth transition and maximum impact.

Phase 1: Initial Setup & Data Ingestion

Configure environment, integrate data sources (vehicular sensors, RSU logs), establish baseline metrics.

Phase 2: Model Training & Validation

Train Random Forest models on historical and simulated VANET data, validate performance against benchmarks.

Phase 3: Real-time Deployment & Monitoring

Deploy AD-MLA on edge devices (Jetson Nano/TX2), monitor performance, and collect feedback.

Phase 4: Optimization & Scalability

Refine feature selection, improve routing algorithms, and scale deployment for wider coverage.

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