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A Methodology for the Systematic Evaluation of ANN Classifiers for BSN Applications

机译:用于BSN应用的ANN分类器系统评估的方法

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While many BSN applications require that sensor nodes be able to operate for extended periods of time, they also often require the wireless transmission of copious amounts of sensor data to a data aggregator or base station, where the raw data is processed into application-relevant information. The energy requirements of such streaming can be prohibitive, given the competing considerations of form factor and battery life requirements. Making intelligent decisions on the node about which data to store or transmit, and which to ignore, is a promising method of reducing energy consumption. Artificial neural network (ANN) classifiers are among several competitive techniques for such data selection. However, no systematic metrics exist for determining if an ANN classifier is suited for a particular resource constrained computing environment of a typical BSN node. An especially difficult task is assessing, at the design stage, which classifier architectures are feasible on a given resource-constrained node, what computational resources are required to execute a given classifier, and what classification performance might be achieved by a particular classifier on a given set of resources. This paper describes techniques for quantifying and predicting the performance of ANN classifiers on wearable sensor nodes using scalable synthetic test data. Additionally, the paper shows a comparison of synthetic data with gait data collected using an inertial BSN node, and classification results of the gait data using a cerebellar model arithmetic computer (CMAC) architecture show excellent agreement with theoretical predictions.
机译:虽然许多BSN应用程序要求传感器节点能够长时间运行,但它们通常还需要将大量传感器数据无线传输到数据聚合器或基站,然后将原始数据处理为与应用程序相关的信息。考虑到形式因素和电池寿命要求的竞争考虑,这种流式传输的能量要求可能是过高的。在节点上就存储或传输哪些数据以及忽略哪些数据做出明智的决策,是降低能耗的一种有前途的方法。人工神经网络(ANN)分类器是用于此类数据选择的几种竞争技术之一。但是,不存在用于确定ANN分类器是否适合典型BSN节点的特定资源受限计算环境的系统指标。一个特别困难的任务是在设计阶段评估在给定资源受限节点上哪种分类器体系结构是可行的,执行给定分类器需要哪些计算资源,以及特定分类器在给定资源上可以实现哪些分类性能。资源集。本文介绍了使用可扩展的合成测试数据量化和预测可穿戴传感器节点上ANN分类器性能的技术。此外,本文显示了合成数据与使用惯性BSN节点收集的步态数据的比较,并且使用小脑模型算术计算机(CMAC)架构的步态数据的分类结果与理论预测具有极好的一致性。

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