研究目的
To solve the data congestion problem in crowdsourced eHealth networks by proposing an RVNS-based Spray and Wait algorithm that dynamically modifies packet forwarding conditions based on real-time network environment detection.
研究成果
The proposed RSW algorithm effectively mitigates data congestion in crowdsourced eHealth networks by dynamically adjusting packet forwarding based on real-time network conditions, significantly improving delivery probability and reducing overhead ratio compared to traditional methods.
研究不足
The algorithm's performance may be influenced by the number of neighborhood reconstructions and counter records, which could affect the accuracy and real-time responsiveness of the congestion threshold.
1:Experimental Design and Method Selection:
The study introduces an RVNS-based Spray and Wait (RSW) algorithm to optimize data transmission in intermittently connected networks. The algorithm dynamically adjusts packet forwarding based on real-time network congestion thresholds.
2:Sample Selection and Data Sources:
The simulation uses movable nodes to represent portable sensors in a 100m*100m area, with data chosen from the Arrhythmia Data Set in UCI Machine Learning Depository.
3:List of Experimental Equipment and Materials:
The simulation environment is built with C++, simulating movement of nodes (portable sensors) with independent direction and speed, and communication range dmax.
4:Experimental Procedures and Operational Workflow:
Nodes exchange and store buffer statuses, evaluate current network environments, and use RVNS to calculate a real-time congestion threshold for data forwarding decisions.
5:Data Analysis Methods:
Performance is measured in terms of delivery probability, overhead ratio, and average latency, comparing RSW with SW and SF algorithms under varying conditions.
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