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SARL: A reinforcement learning based QoS-aware IoT service discovery model

机译:SARL:基于QoS感知物联网服务发现模型的加强学习

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The IoT environment includes the enormous amount of atomic services with dynamic QoS compared with traditional web services. In such an environment, in the service composition process, discovering a requested service meeting the required QoS is a di cult task. In this work, to address this issue, we propose a peer-to-peer-based service discovery model, which looks for the information about services meeting the requested QoS and functionality on an overlay constructed with users of services versus service nodes, with probably constrained resources. However, employing a plain discovery algorithm on the overlay network such as flooding, or k-random walk could cause high message overhead or delay. This necessitates an intelligent and adaptive discovery algorithm, which adapts itself based on users’ previous queries and the results. To fill this gap, the proposed service discovery approach is equipped with a reinforcement learning-based algorithm, named SARL. The reinforcement learning-based algorithm enables SARL to significantly reduce delay and message overhead in the service discovery process by ranking neighboring nodes based on users’ service request preferences and the service query results. The proposed model is implemented on the OMNet simulation platform. The simulation results demonstrate that SARL remarkably outperforms the existing approaches in terms of message overhead, reliability, timeliness, and energy usage efficiency.
机译:与传统Web服务相比,物联网环境包括具有动态QoS的巨大原子服务。在这样的环境中,在服务组合过程中,发现满足所需的QoS的请求的服务是DI Cult任务。在这项工作中,为了解决这个问题,我们提出了一个基于点对点的服务发现模型,它查找有关与服务用户用户的用户构造的覆盖层的服务会满足所请求的QoS和功能的服务,可能是受限资源。然而,在诸如洪水之类的覆盖网络上采用普通发现算法或K-随机步行可能导致高消息开销或延迟。这需要智能和自适应发现算法,其基于用户之前的查询和结果适应自己。为了填补这一差距,建议的服务发现方法配备了基于加强学习的算法,名为SARL。基于加强学习的算法使SARL能够通过基于用户的服务请求偏好和服务查询结果来在服务发现过程中显着降低服务发现过程中的延迟和消息开销。所提出的模型是在OMNET仿真平台上实现的。模拟结果表明,SARL在消息开销,可靠性,及时性和能源使用效率方面非常优于现有的方法。

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