A Genetic Programming based approach to automatically generate Wireless Sensor Networks applications

R. R. Oliveira, T. Heimfarth, R. W. Bettio, M. Arantes, C. Toledo
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引用次数: 2

Abstract

The development of Wireless Sensor Networks (WSNs) applications is an arduous task, since the application needs to be customized for each sensor. Thus, the automatic generation of WSN's applications is desirable to reduce costs, since it drastically reduces the human effort. This paper presents the use of Genetic Programming to automatically generate WSNs applications. A scripting language based on events and actions is proposed to represent the WSN behavior. Events represent the state of a given sensor node and actions modify these states. Some events are internal states and others are external states captured by the sensors. The genetic programming is used to automatically generate WSNs applications described using this scripting language. These scripts are executed by all network's sensors. This approach enables the application designer to define only the overall objective of the WSN. This objective is defined by means of a fitness function. An event-detection problem is presented in order to evaluate the proposed method. The results shown the capability of the developed approach to successfully solve WSNs problems through the automatic generation of applications.
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基于遗传规划的无线传感器网络应用程序自动生成方法
无线传感器网络(WSNs)应用程序的开发是一项艰巨的任务,因为应用程序需要为每个传感器定制。因此,自动生成无线传感器网络应用程序是降低成本的理想选择,因为它大大减少了人工的工作量。本文介绍了利用遗传规划技术自动生成无线传感器网络的应用。提出了一种基于事件和动作的脚本语言来表示WSN的行为。事件表示给定传感器节点的状态,操作修改这些状态。一些事件是内部状态,另一些是传感器捕获的外部状态。遗传编程用于自动生成使用该脚本语言描述的wsn应用程序。这些脚本由所有网络传感器执行。这种方法使应用程序设计人员能够仅定义WSN的总体目标。这个目标是通过适应度函数来定义的。为了评估所提出的方法,提出了一个事件检测问题。结果表明,所开发的方法能够通过自动生成应用程序成功地解决无线传感器网络问题。
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