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Mixed Observability Markov Decision Processes for Overall Network Performance Optimization in Wireless Sensor Networks

机译:无线传感器网络中整体网络性能优化的混合可观马尔可夫决策过程

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Optimizing overall performance of Wireless Sensor Networks (WSNs) is important due to the limited resources available to nodes. Several aspects of this optimization problem have been studied (e.g. improving Medium Access Control (MAC) protocols, routing, energy management) mostly separately, although there is a strong inter-connection between them. In this paper an Artificial Intelligence (AI) based framework is presented to address this problem. Mixed-Observability Markov Decision Processes (MOMDPs) are used to effectively model multiple aspects of WSNs in stochastic environments including MAC in data link layer, routing in network layer, data aggregation, power management, etc. MOMDPs distinguish between full and partial observability, hence they are more efficient than other similar AI methods. The proposed framework provides global optimization of user-defined performance metrics, e.g. minimization of time delay, energy consumption and data inaccuracy. Near-optimal joint network policies are obtained via offline approximation of optimal MOMDP solutions and they are distributed among the individual nodes. Resulting node-policies place effectively no additional computational overhead on nodes in runtime. Experiments evaluate the framework by demonstrating near-optimal solutions for a small-scale WSN in detail in case of given tradeoff criteria. The proposed approach produces better joint network behavior in 5 out of 6 cases compared to other two standard methods in simulation by increasing overall network performance by more than 20% in average.
机译:由于节点可用的资源有限,因此优化无线传感器网络(WSN)的整体性能非常重要。尽管已经在最优化问题的几个方面之间建立了紧密的联系,但它们大多是分开研究的(例如,改进媒体访问控制(MAC)协议,路由,能源管理)。在本文中,提出了一种基于人工智能(AI)的框架来解决此问题。混合可观察性马尔可夫决策过程(MOMDP)用于在随机环境中有效建模WSN的多个方面,包括数据链路层中的MAC,网络层中的路由,数据聚合,电源管理等。MOMDP区分完全可观察性和部分可观察性,因此它们比其他类似的AI方法更有效。所提出的框架提供了用户定义的性能指标的全局优化,例如最大限度地减少时间延迟,能耗和数据不准确性。通过最佳MOMDP解决方案的离线近似来获得近乎最佳的联合网络策略,并将它们分布在各个节点之间。所得的节点策略在运行时不会对节点造成任何额外的计算开销。实验通过在给定折衷标准的情况下详细演示了小型WSN的接近最佳解决方案来评估该框架。与其他两个标准方法相比,该方法在仿真中有6个案例中有5个产生了更好的联合网络行为,从而使整体网络性能平均提高了20%以上。

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