AIRPoC: An AI-Enhanced Blockchain Consensus Framework for Autonomous Regulatory Compliance
Abstract
1. Introduction
- Novel Consensus Architecture: This is the first two-phase consensus mechanism that integrates regulatory compliance without compromising decentralization;
- Transaction-Centric Legal Framework: A paradigmatic shift is created that redefines legal actors as transaction issuers and smart contract deployers;
- AI-Enhanced Adaptive Compliance: Autonomous agents adapt to evolving regulations through AI-powered semantic web technologies;
- Empirical Validation: An 88.9% compliance accuracy with competitive performance across 116,200 transactions is achieved.
2. Related Work
2.1. Third-Party Regulatory Platforms
2.2. Smart-Contract-Based Enforcement Systems
Transaction → Mempool → Smart Contract Execution → Regulatory Check → Failure → Rollback |
2.3. Provenance Tracking and Monitoring Systems
2.4. Intelligent Compliance Enforcement Mechanisms
2.5. Research Gaps and Limitations
3. System Model
System Overview and Two-Phase Architecture
4. Proposed Method
4.1. Phase I: Regulatory Compliance Verification
Listing 1. GDPR Article 9 RDF triple conversion. |
<HealthData> rdfs:type <SpecialCategoryData> . <HealthData> gdpr:requiresExplicitConsent “true” . |
Listing 2. Dynamic transaction metadata extracted from blockchain. |
# Standard extraction from blockchain (OGDPR vocabulary): <Transaction001> gdpr:containsData <HealthData> . <Transaction001> gdpr:destinationCountry “US” . <Transaction001> gdpr:isEncrypted “false” . <Transaction001> gdpr:hasTransferMechanism <StandardContractualClauses> . # Our AI-powered inference (Novel contribution): <Transaction001> gdpr:processingPurpose “MedicalResearch” . <Transaction001> aiInference:riskLevel “High” . <SmartContract001> gdpr:hasLegalBasis <LegitimateInterest> . |
4.2. Phase II: Standard PoS Validation
5. Experimental Results
5.1. Implementation Architecture
5.2. Performance Evaluation and Results
5.3. Experimental Limitations and Constraints
6. Discussion and Future Directions
6.1. Technical Architecture Comparison with Existing Intelligent Compliance Systems
6.2. Analysis of Limitations: Architecture Design and Experimental Validation
6.3. Future Research Directions
7. Conclusions
Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
AIRPoC | Artificial Intelligence-enhanced Regulatory Proof-of-Compliance |
AI | Artificial Intelligence |
AML | Anti-Money Laundering |
AWS | Amazon Web Services |
CCPA | California Consumer Privacy Act |
CPRA | California Privacy Rights Act |
EDPB | European Data Protection Board |
GDPR | General Data Protection Regulation |
KB | Knowledge Base |
LLM | Large Language Model |
ML | Machine Learning |
NLP | Natural Language Processing |
OWL | Web Ontology Language |
PoS | Proof-of-Stake |
RDF | Resource Description Framework |
SPARQL | SPARQL Protocol and RDF Query Language |
TPS | Transactions Per Second |
Appendix A. The Algorithms of AI Legal Agents
Algorithm A1: KB Builder: AI-Powered GDPR RDF Ontology Construction |
Require: Regulatory Sources , AI Platform API , Ontology Template Ensure: GDPR RDF Ontology , Confidence Scores
|
Algorithm A2: Integrated Metadata Extraction and Query Generation |
Require: Transaction T, AI Models , Legal Knowledge Graph Ensure: Query Set , Enhanced Metadata M, Confidence Scores C
|
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Metric | AIRPoC | Basic PoS | Difference | Stability (CV) |
---|---|---|---|---|
Avg. Proc. Time (ms) | 5.40 ± 0.33 | 5.16 ± 0.37 | +0.24 (+4.5%) | 6.7% vs. 7.1% |
Median Proc. Time (ms) | 5.28 ± 0.29 | 5.04 ± 0.33 | +0.24 (+4.8%) | - |
P95 Proc. Time (ms) | 7.92 ± 0.43 | 7.57 ± 0.49 | +0.35 (+4.6%) | - |
P99 Proc. Time (ms) | 9.68 ± 0.59 | 9.24 ± 0.63 | +0.44 (+4.8%) | - |
Avg. Throughput (TPS) | 9502 ± 1098 | 11,192 ± 1153 | −1690 (−15.1%) | 11.6% vs. 10.3% |
Max. Throughput (TPS) | 17,123 ± 1767 | 19,287 ± 1845 | −2164 (−11.2%) | - |
Sample | System | Avg (ms) | Std Dev | CV (%) | 95% CI | TPS |
---|---|---|---|---|---|---|
1000 | AIRPoC | 4.94 ± 0.26 | 0.258 | 5.2 | [4.85, 5.03] | 8576 |
Basic PoS | 4.65 ± 0.33 | 0.331 | 7.1 | [4.53, 4.77] | 11,073 | |
5000 | AIRPoC | 5.27 ± 0.36 | 0.356 | 6.8 | [5.14, 5.40] | 9381 |
Basic PoS | 5.11 ± 0.32 | 0.319 | 6.2 | [4.99, 5.23] | 11,204 | |
10,000 | AIRPoC | 5.64 ± 0.45 | 0.447 | 7.9 | [5.47, 5.81] | 9638 |
Basic PoS | 5.36 ± 0.43 | 0.427 | 8.0 | [5.20, 5.52] | 11,385 | |
20,000 | AIRPoC | 5.73 ± 0.40 | 0.395 | 6.9 | [5.58, 5.88] | 10,412 |
Basic PoS | 5.54 ± 0.40 | 0.394 | 7.1 | [5.39, 5.69] | 11,107 |
Scenario | Sample Size | Accuracy (%) | Avg Time (ms) | TPS |
---|---|---|---|---|
GDPR-Compliant | 5000 | 90.4 | 0.86 | 1082 |
GDPR Violation | 5000 | 100.0 | 0.86 | 1081 |
AML-Compliant | 5000 | 86.7 | 0.87 | 1063 |
AML Violation | 5000 | 100.0 | 0.87 | 1073 |
Mixed Compliance | 5000 | 67.2 | 0.89 | 1044 |
Overall Average | 25,000 | 88.9 | 0.87 | 1069 |
Users | System | Total Tx | Avg Time (ms) | P95 Time (ms) | TPS |
---|---|---|---|---|---|
1 | AIRPoC | 100 | 6.12 | 9.03 | 16.3 |
Basic PoS | 100 | 5.73 | 8.45 | 17.4 | |
5 | AIRPoC | 500 | 6.25 | 9.08 | 80.1 |
Basic PoS | 500 | 6.31 | 9.12 | 78.9 | |
10 | AIRPoC | 1000 | 6.34 | 9.67 | 158.7 |
Basic PoS | 1000 | 5.98 | 8.93 | 167.2 | |
25 | AIRPoC | 2500 | 6.38 | 10.12 | 393.2 |
Basic PoS | 2500 | 6.51 | 10.04 | 384.1 | |
50 | AIRPoC | 5000 | 6.45 | 11.01 | 782.6 |
Basic PoS | 5000 | 6.62 | 11.43 | 758.3 |
Aspect | AIRPoC | Zafar (2025) [28] | Merlec (2021) [39] | Yao (2021) [40] | Tao (2024) [41] |
---|---|---|---|---|---|
Validation Location | Pre-consensus layer | Legal framework analysis | Smart contract layer | Application layer | Smart contract layer |
Extraction Method | Transaction-level + AI-driven | Legal interpretation | Rule-based extraction | Agent-based collection | BIM metadata parsing |
Validation Method | AI legal agents with semantic RDF | Expert interpretation | Hard-coded GDPR rules | Domain ontology reasoning | ISO 19650 KG + SWRL |
Privacy Protection | Data categorization | Legal guidance | Off-chain IPFS | Local storage | Domain anonymization |
Performance Impact | 4.5% overhead vs. PoS | Theoretical analysis | Application overhead | Framework overhead | ∼48% overhead |
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Han, S. AIRPoC: An AI-Enhanced Blockchain Consensus Framework for Autonomous Regulatory Compliance. Electronics 2025, 14, 4058. https://doi.org/10.3390/electronics14204058
Han S. AIRPoC: An AI-Enhanced Blockchain Consensus Framework for Autonomous Regulatory Compliance. Electronics. 2025; 14(20):4058. https://doi.org/10.3390/electronics14204058
Chicago/Turabian StyleHan, Sejin. 2025. "AIRPoC: An AI-Enhanced Blockchain Consensus Framework for Autonomous Regulatory Compliance" Electronics 14, no. 20: 4058. https://doi.org/10.3390/electronics14204058
APA StyleHan, S. (2025). AIRPoC: An AI-Enhanced Blockchain Consensus Framework for Autonomous Regulatory Compliance. Electronics, 14(20), 4058. https://doi.org/10.3390/electronics14204058