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An Optimal Approach for Low-Power Migraine Prediction Models in the State-of-the-Art Wireless Monitoring Devices

机译:最先进的无线监控设备中低功率偏振预测模型的最佳方法

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Wearable monitoring devices for ubiquitous health care are becoming a reality that has to deal with limited battery autonomy. Several researchers focus their efforts in reducing the energy consumption of these motes: from efficient micro-architectures, to on-node data processing techniques. In this paper we focus in the optimization of the energy consumption of monitoring devices for the prediction of symptomatic events in chronic diseases in real time. To do this, we have developed an optimization methodology that incorporates information of several sources of energy consumption: the running code for prediction, and the sensors for data acquisition. As a result of our methodology, we are able to improve the energy consumption of the computing process up to 90% with a minimal impact on accuracy. The proposed optimization methodology can be applied to any prediction modeling scheme to introduce the concept of energy efficiency. In this work we test the framework using Grammatical Evolutionary algorithms in the prediction of chronic migraines.
机译:用于普遍存在的医疗保健的可穿戴监控设备正在成为一个要处理有限的电池自主权的现实。几位研究人员们致力于降低这些丝绸的能耗:从高效的微架构到节点数据处理技术。在本文中,我们专注于优化实时慢性疾病中对症状事件预测的监测设备的能耗。为此,我们开发了一种优化方法,该方法包括多个能源源的信息:预测的运行代码,以及数据采集的传感器。由于我们的方法,我们能够将计算过程的能耗提高到90%,对准确性的影响最小。所提出的优化方法可以应用于任何预测建模方案,以引入能量效率的概念。在这项工作中,我们使用语法进化算法测试慢性偏头痛预测的框架。

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