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Discrete Gene Regulatory Networks (dGRNs): A Novel Approach to Configuring Sensor Networks

机译:离散基因调控网络(dGRN):一种配置传感器网络的新颖方法

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The operation of a sensor network is determined by a large number of parameters, such as the radio duty cycle, the frequency of neighbor discovery beacons, and the rate of sampling sensors. Writing adaptive algorithms to tune these parameters in dynamic network conditions is a challenging task that requires expert knowledge, and many design-test-rewrite cycles. This paper proposes a novel nature-inspired paradigm, termed discrete Gene Regulatory Network (dGRN), for configuring sensor networks. The idea is that nodes should regulate their parameters based on their local state and state communicated from neighbor nodes, in a similar manner that cells regulate their behavior based on local levels of protein concentrations, and proteins diffused from neighbor cells. The proposed dGRN paradigm has two major strengths: 1) it is general-purpose, and can be applied to a variety of parameter tuning problems; and 2) it generates parameter tuning code automatically removing the need for a human expert. We demonstrate the feasibility of the dGRN approach in a scenario where nodes must tune their sampling rates to track a moving target with a certain accuracy. The automatically generated code exhibits properties similar to the ones that one would expect from expert-designed code, such as aggressive sampling when the target moves fast and the sensing range is low, and relaxed sampling otherwise. Moreover, the automatically generated code causes nodes to communicate with each other to coordinate their tuning tasks, as one would expect from expert-designed code. The resulting dGRN code is evaluated both in a simulation environment, and in a real environment with eight T-Mote Sky nodes tracking a light-emitting target.
机译:传感器网络的运行取决于大量参数,例如无线电占空比,邻居发现信标的频率以及采样传感器的速率。编写自适应算法以在动态网络条件下调整这些参数是一项艰巨的任务,需要专家知识和许多设计-测试-重写周期。本文提出了一种新颖的,受自然启发的范例,称为离散基因调控网络(dGRN),用于配置传感器网络。想法是,节点应根据其本地状态和从邻居节点传达的状态来调节其参数,其方式类似于细胞根据蛋白质浓度和从邻居细胞中扩散出来的蛋白质的局部水平来调节其行为。提出的dGRN范例具有两个主要优点:1)它是通用的,可以应用于各种参数调整问题; 2)它会自动生成参数调整代码,从而消除了对专家的需求。在节点必须调整其采样率以一定精度跟踪运动目标的情况下,我们证明了dGRN方法的可行性。 自动生成的代码具有与专家设计的代码所期望的属性相似的属性,例如目标快速移动且感应范围较小时的主动采样,否则为宽松采样。而且,自动生成的代码使节点相互通信以协调其调整任务,正如人们对专家设计的代码所期望的那样。生成的dGRN代码在仿真环境中以及在八个跟踪T-Mote Sky节点跟踪发光目标的实际环境中都进行评估。

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