Telecommunication Department, University of Jaen, Alfonso X El Sabio 28, 23700 Linares, Jaen, Spain.
Sensors (Basel). 2010;10(6):6044-62. doi: 10.3390/s100606044. Epub 2010 Jun 17.
This work presents a new approach for collaboration among sensors in Wireless Sensor Networks. These networks are composed of a large number of sensor nodes with constrained resources: limited computational capability, memory, power sources, etc. Nowadays, there is a growing interest in the integration of Soft Computing technologies into Wireless Sensor Networks. However, little attention has been paid to integrating Fuzzy Rule-Based Systems into collaborative Wireless Sensor Networks. The objective of this work is to design a collaborative knowledge-based network, in which each sensor executes an adapted Fuzzy Rule-Based System, which presents significant advantages such as: experts can define interpretable knowledge with uncertainty and imprecision, collaborative knowledge can be separated from control or modeling knowledge and the collaborative approach may support neighbor sensor failures and communication errors. As a real-world application of this approach, we demonstrate a collaborative modeling system for pests, in which an alarm about the development of olive tree fly is inferred. The results show that knowledge-based sensors are suitable for a wide range of applications and that the behavior of a knowledge-based sensor may be modified by inferences and knowledge of neighbor sensors in order to obtain a more accurate and reliable output.
这项工作提出了一种在无线传感器网络中传感器之间协作的新方法。这些网络由大量传感器节点组成,这些节点资源有限:计算能力、内存、电源等有限。如今,人们对将软计算技术集成到无线传感器网络中越来越感兴趣。然而,将模糊规则系统集成到协作无线传感器网络中却很少受到关注。这项工作的目的是设计一个基于知识的协作网络,其中每个传感器执行一个自适应的模糊规则系统,该系统具有显著的优势,例如:专家可以用不确定性和不精确性来定义可解释的知识,协作知识可以与控制或建模知识分离,协作方法可以支持邻传感器故障和通信错误。作为这种方法的一个实际应用,我们展示了一个用于害虫的协作建模系统,其中推断出关于橄榄树蝇发展的警报。结果表明,基于知识的传感器适用于广泛的应用,并且基于知识的传感器的行为可以通过推理和邻居传感器的知识进行修改,以获得更准确和可靠的输出。