Machine Learning Enhanced Blockchain Consensus with Transaction Prioritization for Smart Cities
S. Valli Sanghami, John J. Lee, and Qin Hu

TL;DR
This paper proposes a machine learning-based blockchain consensus protocol with transaction prioritization tailored for smart city applications, enhancing emergency response and data security.
Contribution
It introduces a novel blockchain consensus mechanism that uses ML for leader election and dynamic block creation, specifically designed for smart city needs.
Findings
Improved leader election efficiency through ML algorithms.
Enhanced transaction prioritization for emergency events.
Robustness demonstrated via security analysis and simulations.
Abstract
In the given technology-driven era, smart cities are the next frontier of technology, aiming at improving the quality of people's lives. Many research works focus on future smart cities with a holistic approach towards smart city development. In this paper, we introduce such future smart cities that leverage blockchain technology in areas like data security, energy and waste management, governance, transport, supply chain, including emergency events, and environmental monitoring. Blockchain, being a decentralized immutable ledger, has the potential to promote the development of smart cities by guaranteeing transparency, data security, interoperability, and privacy. Particularly, using blockchain in emergency events will provide interoperability between many parties involved in the response, will increase timeliness of services, and establish transparency. In that case, if a current…
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Taxonomy
TopicsBlockchain Technology Applications and Security · Traffic Prediction and Management Techniques · IoT and Edge/Fog Computing
