Neural Virtual Sensors for Adaptive Magnetic Localization of Autonomous Dataloggers

Dennis Groben, K. Thongpull, A. C. Kammara, A. König
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引用次数: 3

Abstract

The surging advance in micro - and nanotechnologies allied with neural learning systems allows the realization of miniaturized yet extremely powerful multisensor systems and networks for wide application fields, for example, in measurement, instrumentation, automation, and smart environments. Time and location context is particularly relevant to sensor swarms applied for distributed measurement in industrial environment, such as, for example, fermentation tanks. Common RF solutions face limits here, which can be overcome by magnetic systems. Previously, we have developed the electronic system for an integrated data logger swarm with magnetic localization and sensor node timebase synchronization. The focus of this work is on an approach to improving both localization accuracy and flexibility by the application of artificial neural networks applied as virtual sensors and classifiers in a hybrid dedicated learning system. Including also data from an industrial brewery environment, the best investigated neural virtual sensor approach has achieved an advance in localization accuracy of a factor of 4 compared to state-of-the-art numerical methods and, thus, results in the order of less than 5 cm meeting industrial expectations on a feasible solution for the presented integrated localization system solution.
自主数据采集器自适应磁定位的神经虚拟传感器
与神经学习系统相结合的微纳米技术的突飞猛进,使小型化但功能极其强大的多传感器系统和网络得以实现,可用于广泛的应用领域,例如测量、仪器仪表、自动化和智能环境。时间和位置上下文与用于工业环境中分布式测量的传感器群特别相关,例如,发酵罐。常见的射频解决方案在这里面临限制,这可以通过磁性系统来克服。在此之前,我们已经开发了一个集成数据记录器群的电子系统,具有磁定位和传感器节点时基同步。这项工作的重点是通过在混合专用学习系统中应用人工神经网络作为虚拟传感器和分类器来提高定位精度和灵活性的方法。包括来自工业啤酒厂环境的数据,与最先进的数值方法相比,最好的研究神经虚拟传感器方法在定位精度方面取得了4倍的进步,因此,在小于5厘米的数量级上满足了工业对所提出的集成定位系统解决方案的可行解决方案的期望。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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