分布式信号处理应用建模

W. Kurschl, Stefan Mitsch, J. Schönböck
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引用次数: 8

摘要

一般来说,无线传感器网络,特别是身体传感器网络,可以在普及的医疗保健、运动训练和其他领域实现复杂的应用,在这些领域,相互连接的节点可以协同工作。他们的主要目标是通过特征提取和分类算法从原始传感器数据中获得上下文。身体传感器网络不仅包括单一类型或系列的传感器,还需要不同的硬件平台,例如,测量加速度或血压的传感器,或与用户通信的微型移动设备。如何有效地处理这些异构平台和编程语言的问题就出现了。本文提出了一个基于TinyOS和nesC的分布式信号处理框架。该框架构成了模型驱动软件开发方法的基础。通过提高抽象级别,正式模型将框架的实现细节隐藏在平台特定模型中。平台独立模型进一步将建模提升到独立于平台的功能和非功能需求。因此,我们促进了领域专家和软件工程师之间的合作,并促进了应用程序跨不同平台的可重用性。
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Modeling Distributed Signal Processing Applications
Wireless Sensor Networks in general and Body Sensor Networks in particular enable sophisticated applications in pervasive healthcare, sports training and other domains,where interconnected nodes work together. Their main goal is to derive context from raw sensor data with feature extraction and classification algorithms. Body sensor networks not only comprise a single sensor type or family but demand different hardware platforms, e.g., sensors to measure acceleration or blood-pressure, or tiny mobile devices to communicate with the user. The problem arises how to efficiently deal with these heterogeneous platforms and programming languages. This paper presents a distributed signal processing framework based on TinyOS and nesC. The framework forms the basis for a Model-Driven Software Development approach. By raising the level of abstraction formal models hide implementation specifics of the framework in a Platform Specific Model. A Platform Independent Model further lifts modeling to functional and non-functional requirements independent from platforms. Thereby we promote cooperation between domain experts and software engineers and facilitate reusability of applications across different platforms.
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