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首页> 外文期刊>The Computer journal >The Automatic Evolution of Distributed Controllers to Configure Sensor Network Operation
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The Automatic Evolution of Distributed Controllers to Configure Sensor Network Operation

机译:分布式控制器的自动演进以配置传感器网络操作

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摘要

Tuning the parameters that control the operation of a wireless sensor network, such as sampling rate, is not a simple task. This is partly due to the distributed nature of the problem, but is also a result of the time-varying dynamics that a network experiences. Inspired by the way in which cells alter their behaviour in response to diffused protein concentrations, an abstract representation, termed a discrete gene regulatory network (dGRN), is introduced. Each node runs an identical dGRN controller which controls node activity and interaction. The controllers are authored automatically using an evolutionary algorithm. The communication that occurs between nodes is neither specified nor designed, but emerges naturally. As a particular example, we illustrate that our approach can generate effective strategies for nodes to cooperatively track a moving target. The obtained strategies vary according to the user's accuracy requirements and the speed of the target, and are similar to those which would be expected from a network engineer. We also present results from our proof-of-concept dGRN implementation on T-Mote Sky nodes. Our approach takes high-level user application requirements and from these, automatically generates distributed parameter tuning algorithms. The dGRN framework thus greatly reduces the amount of effort involved in adjusting a sensor network's operation.
机译:调整控制无线传感器网络操作的参数(例如采样率)并非易事。这部分是由于问题的分布式性质所致,也是网络经历的时变动态的结果。受细胞响应扩散的蛋白质浓度改变其行为的方式的启发,引入了一种称为离散基因调控网络(dGRN)的抽象表示。每个节点运行一个相同的dGRN控制器,该控制器控制节点的活动和交互。控制器是使用进化算法自动编写的。既不指定也不设计节点之间发生的通信,而是自然而然地出现。作为一个特定的例子,我们说明了我们的方法可以为节点协同跟踪运动目标生成有效的策略。所获得的策略根据用户的精度要求和目标速度而变化,并且与网络工程师所期望的策略相似。我们还介绍了在T-Mote Sky节点上实现的概念验证dGRN的结果。我们的方法采用了高级用户应用程序需求,并根据这些需求自动生成分布式参数调整算法。因此,dGRN框架极大地减少了调整传感器网络操作所需的工作量。

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