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Self-Adaptation with Imperfect Monitoring in Solar Energy Harvesting Systems

机译:太阳能收集系统中具有不完善监视的自适应

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Ubiquitous and perpetual nature of cyber-physical systems (CPSs) have made them mostly battery-operated in many applications. The batteries need recharge via environmental energy sources. Solar energy harvesting is a conventional source for CPSs, whereas it is not perfectly predictable due to environmental changes. Thus, the system needs to adaptively control its consumption with respect to the energy harvesting. In this paper, we propose a model-driven approach for analyzing self-adaptive solar energy harvesting systems; it uses a feedback control loop to monitor and analyze the behavior of the system and the environment, and decides which adaptation action must be triggered against the changes. We elaborate a data-driven method to come up with the prediction of the incoming changes, especially those from the environment. The method takes the energy harvesting data for prediction purposes, and models the environment as a Markov chain. We empower the proposed system against the runtime monitoring faults as well. In this regard, the system is able to verify an incomplete model, i.e. when some data is missed. To this aim, we propose a pattern-matching system that simulates the current behavior of the system using random walk, and matches it with the history to estimate the omitted data. The results show an accuracy of at least 96% when decisions are made by imperfect monitoring.
机译:网络物理系统(CPS)的普遍性和永久性使它们在许多应用中大多由电池供电。电池需要通过环境能源进行充电。太阳能收集是CPS的常规来源,但是由于环境变化,它并不是完全可预测的。因此,系统需要针对能量收集来自适应地控制其消耗。在本文中,我们提出了一种模型驱动的方法来分析自适应太阳能收集系统;它使用反馈控制回路来监视和分析系统和环境的行为,并确定必须针对更改触发哪些适应措施。我们精心设计了一种数据驱动的方法,以预测即将到来的变化,尤其是来自环境的变化。该方法将能量收集数据用于预测目的,并将环境建模为马尔可夫链。我们还授权所提出的系统不受运行时监视故障的影响。在这方面,系统能够验证不完整的模型,即,当缺少某些数据时。为此,我们提出了一种模式匹配系统,该系统使用随机游走模拟系统的当前行为,并将其与历史记录进行匹配,以估计遗漏的数据。当通过不完善的监控做出决策时,结果表明至少有96%的准确性。

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