From a Genetic Fuzzy Rule-Based System to a Intelligent Sensor Network

J. Canada-Bago
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引用次数: 4

Abstract

Nowadays, intelligent systems, e.g. fuzzy systems, are being incorporated into sensor networks. In this way, this paper presents an intelligent sensor network which has been developed as a genetic fuzzy rule-based system. The objectives of the present work include: first, the design of the fuzzy rule-based sensor which incorporates a new inference engine specially designed for the intelligent sensor; and, second, the design of an evolutionary algorithm, which is adapted to the sensor and based on genetic algorithm, in order to evolve the knowledge of the system. The sensor network is composed of a computer and a set of sensors. Two possible implementations of the sensor are presented: the first one includes a fuzzy ruled-based sensor; the second implementation is based on a genetic fuzzy rule-based sensor. The sensor network can incorporate expert knowledge and evolve the knowledge bases. This intelligent sensor has been tested using a sensor which is based on an 8051 microcontroller, and an inference engine which has been designed for this sensor. The evolutionary algorithm has been tested using a simulated system. In conclusion, sensor networks can incorporate fuzzy rule-based system and evolutionary algorithms. The former group allows controlling a system by the knowledge base; the latter allows evolving knowledge bases in order to obtain new knowledge.
从遗传模糊规则系统到智能传感器网络
如今,智能系统,如模糊系统,正在被纳入传感器网络。因此,本文提出了一种基于遗传模糊规则的智能传感器网络系统。本文的工作目标包括:首先,设计了基于模糊规则的传感器,该传感器集成了专门为智能传感器设计的新型推理引擎;其次,设计了一种适应传感器的基于遗传算法的进化算法,以实现系统知识的进化。传感器网络由一台计算机和一组传感器组成。提出了传感器的两种可能实现:第一种包括基于模糊规则的传感器;第二种实现是基于遗传模糊规则的传感器。传感器网络可以吸收专家知识并对知识库进行演化。采用基于8051单片机的传感器和为该传感器设计的推理引擎对该智能传感器进行了测试。该进化算法已在模拟系统中进行了测试。总之,传感器网络可以结合模糊规则系统和进化算法。前者允许通过知识库控制系统;后者允许不断发展的知识库,以获得新的知识。
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