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Optimizing the Performance of Rule-Based Fuzzy Routing Algorithms in Wireless Sensor Networks

机译:无线传感器网络中基于规则的模糊路由算法的性能优化

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Effective data routing is one of the crucial themes for energy-efficient communication in wireless sensor networks (WSN). In the WSN research domain, fuzzy approaches are in most cases superior to well-defined methodologies, especially where boundaries between clusters are unclear. For this reason, a significant number of studies have recently proposed fuzzy-based solutions for the problems encountered in WSNs. Rule-based fuzzy systems are part of these widespread fuzzy-based solutions that often involve some field experts for identification and derivation of fuzzy rules as well as fuzzy membership functions; thus, a considerable amount of time is devoted to the realization of the final system. Nevertheless, it is almost impossible or not feasible to realize a fuzzy system with an optimality property. In this study, we utilize the modified clonal selection algorithm (CLONALG-M) to improve the performance of rule-based fuzzy routing algorithms. Although previous studies have been devoted to fuzzy optimization in general, to the best of our knowledge, improving the efficiency of rule-based fuzzy routing algorithms has not yet been considered. For this reason, CLONALG-M is applied to determine the approximate form of the output membership functions that improve the overall performance of fuzzy routing algorithms, whose rule base and shapes of membership functions are initially known. Experimental analysis and evaluations of the approach used in this study are performed on selected fuzzy rule-based routing algorithms and the obtained results verify that our approach performs and scales well to improve fuzzy routing performance.
机译:有效的数据路由是无线传感器网络(WSN)中节能通信的关键主题之一。在WSN研究领域中,模糊方法在大多数情况下优于定义明确的方法,尤其是在集群之间的边界不清楚的情况下。因此,最近有大量研究针对WSN中遇到的问题提出了基于模糊的解决方案。基于规则的模糊系统是这些广泛的基于模糊的解决方案的一部分,这些解决方案通常涉及一些现场专家来识别和推导模糊规则以及模糊隶属函数。因此,相当多的时间用于最终系统的实现。然而,要实现具有最优特性的模糊系统几乎是不可能或不可行的。在这项研究中,我们利用改进的克隆选择算法(CLONALG-M)来提高基于规则的模糊路由算法的性能。尽管以前的研究一般都致力于模糊优化,但据我们所知,尚未考虑提高基于规则的模糊路由算法的效率。因此,CLONALG-M用于确定输出隶属函数的近似形式,从而改善模糊路由算法的整体性能,该算法的规则库和隶属函数的形状最初为已知。对本研究中使用的方法的实验分析和评估是在选定的基于模糊规则的路由算法上进行的,所获得的结果证明了我们的方法能够很好地执行和扩展,以改善模糊路由性能。

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