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MRL-SCSO: Multi-agent Reinforcement Learning-Based Self-Configuration and Self-Optimization Protocol for Unattended Wireless Sensor Networks

机译:MRL-SCSO:用于无人值守无线传感器网络的基于多功能加强学习的自我配置和自优化协议

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摘要

Resource-constrained nodes in unattended wireless sensor network (UWSN) operate in a hostile environment with less human intervention. Achieving the optimal quality of service (QoS) in terms of packet delivery ratio, delay, energy, and throughput is crucial. In this paper, we propose a topology control and data dissemination protocol that uses multi-agent reinforcement learning (MRL) and energy-aware convex-hull algorithm, for effective self-configuration and self-optimization (SCSO) in UWSN, called MRL-SCSO. MRL-SCSO maintains a reliable topology in which the effective active neighbor nodes are selected using MRL. The network boundary is determined using convex-hull algorithm to maintain the connectivity and coverage of the network. The boundary nodes transmit data under high traffic load conditions. The performance of MRL-SCSO is evaluated for various nodes count and under different load conditions by using the Contiki's Cooja simulator. The results showed that MRL-SCSO stabilizes the performance and improves QoS.
机译:无人值守无线传感器网络中的资源约束节点(UWSN)在敌对环境中运行,具有较少人的干预。在分组传递比率,延迟,能量和吞吐量方面实现服务的最佳服务质量(QoS)至关重要。在本文中,我们提出了一种拓扑控制和数据传播协议,该协议使用多功能增强学习(MRL)和能量感知凸船算法,用于UWSN中的有效自我配置和自我优化(SCSO),称为MRL- SCSO。 MRL-SCSO维护可靠的拓扑,其中使用MRL选择有效的活动邻居节点。使用凸船体算法确定网络边界以维持网络的连接和覆盖范围。边界节点在高流量负载条件下发送数据。通过使用Contiki的Cooja模拟器,对各种节点计数和不同负载条件下的MRL-SCSO的性能进行评估。结果表明,MRL-SCSO稳定了性能并改善了QoS。

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