Enhancing Emergency Communication for Future Smart Cities with Random Forest Model
Chengkun Ye, Milena Radenkovic

TL;DR
This paper applies a random forest machine learning model to optimize node selection in delay tolerant networks, significantly improving emergency communication performance in smart city scenarios.
Contribution
It introduces a novel method using random forest to identify high-quality nodes for better routing in DTNs during emergencies.
Findings
Increased message delivery success rate
Reduced transmission latency
Validated approach in city centre simulations
Abstract
This study aims to optimise the "spray and wait" protocol in delay tolerant networks (DTNs) to improve the performance of information transmission in emergency situations, especially in car accident scenarios. Due to the intermittent connectivity and dynamic environment of DTNs, traditional routing protocols often do not work effectively. In this study, a machine learning method called random forest was used to identify "high-quality" nodes. "High-quality" nodes refer to those with high message delivery success rates and optimal paths. The high-quality node data was filtered according to the node report of successful transmission generated by the One simulator. The node contact report generated by another One simulator was used to calculate the data of the three feature vectors required for training the model. The feature vectors and the high-quality node data were then fed into the…
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Taxonomy
TopicsSmart Systems and Machine Learning
