能量采集身体传感器网络的马尔可夫建模

Joan Ventura, K. Chowdhury
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引用次数: 57

摘要

可穿戴和植入式医疗传感器的新模式使患者和人体受试者能够进行持续和不显眼的监测,使他们能够继续正常活动,同时确保在发现健康紧急情况时立即作出反应。能量收集已被提议作为一种可行的方案来为这些传感器供电,因为定期回收电池更换可能是不可行的。目前的能量收集技术允许利用几种物理和自然存在的资源,如太阳能、风能、振动、射频清除等。然而,缺乏理论模型,可以预测未来的消耗和剩余可用能量的传感器节点配备多个板,可以同时在不同类型的源上工作。在本文中,我们提出了maker,一种基于马尔可夫模型的方法来捕获这些传感器的能量状态。MAKERS允许详细预测节点由于缺乏能量而无法检测到事件的概率,这是身体传感器传感器的关键设计考虑因素。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Markov modeling of energy harvesting Body Sensor Networks
The emerging paradigm of wearable and implantable medical sensors has enabled continuous and unobtrusive monitoring for patients and human subjects, allowing them to continue their normal activities, and yet be assured of immediate response in case of a detected health emergency. Energy harvesting has been proposed as a viable scheme for powering such sensors as periodic retrievals for battery replacements may not be feasible. The current state of the art in energy harvesting allows tapping into several physical and naturally existing sources, such as solar, wind, vibration, RF scavenging, among others. However, there is a lack of theoretical models that can predict future consumption and residual availability of energy in a sensor node equipped with multiple boards that can simultaneously operate on different types of sources. In this paper, we propose MAKERS, a Markov model based method to capture the energy states of such sensors. MAKERS allows detailed prediction of the probability of a node failing to detect an event owing to lack of energy, which is a key design consideration for body sensor sensors.
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