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Data-Driven Stochastic Models and Policies for Energy Harvesting Sensor Communications

机译:能量收集传感器通信的数据驱动随机模型和策略

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Energy harvesting from the surroundings is a promising solution to perpetually power-up wireless sensor communications. This paper presents a data-driven approach of finding optimal transmission policies for a solar-powered sensor node that attempts to maximize net bit rates by adapting its transmission parameters, power levels and modulation types, to the changes of channel fading and battery recharge. We formulate this problem as a discounted Markov decision process (MDP) framework, whereby the energy harvesting process is stochastically quantized into several representative solar states with distinct energy arrivals and is totally driven by historical data records at a sensor node. With the observed solar irradiance at each time epoch, a mixed strategy is developed to compute the belief information of the underlying solar states for the choice of transmission parameters. In addition, a theoretical analysis is conducted for a simple on-off policy, in which a predetermined transmission parameter is utilized whenever a sensor node is active. We prove that such an optimal policy has a threshold structure with respect to battery states and evaluate the performance of an energy harvesting node by analyzing the expected net bit rate. The design framework is exemplified with real solar data records, and the results are useful in characterizing the interplay that occurs between energy harvesting and expenditure under various system configurations. Computer simulations show that the proposed policies significantly outperform other schemes with or without the knowledge of short-term energy harvesting and channel fading patterns.
机译:从周围收集能量是永久加电无线传感器通信的有希望的解决方案。本文提出了一种数据驱动的方法,该方法为太阳能传感器节点找到最佳传输策略,该节点试图通过使其传输参数,功率水平和调制类型适应信道衰落和电池充电的变化来最大化净比特率。我们将此问题公式化为折扣马尔可夫决策过程(MDP)框架,由此能量收集过程被随机量化为具有不同能量到达的几个代表性太阳状态,并且完全由传感器节点处的历史数据驱动。通过在每个时间段观察到的太阳辐照度,开发了一种混合策略来计算潜在太阳状态的置信度信息以选择传输参数。此外,针对简单的开关策略进行了理论分析,其中,只要传感器节点处于活动状态,就使用预定的传输参数。我们证明了这种最佳策略具有关于电池状态的阈值结构,并通过分析预期的净比特率来评估能量收集节点的性能。该设计框架以真实的太阳能数据记录为例,其结果对于表征在各种系统配置下能量收集和支出之间发生的相互作用非常有用。计算机仿真表明,无论是否具有短期能量收集和信道衰落模式的知识,所提出的策略都明显优于其他方案。

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