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Intelligent Technique Based on Enhanced Metaheuristic for Optimization Problem in Internet of Things and Wireless Sensor Network

机译:基于增强型成立型在互联网和无线传感器网络中优化问题的智能技术

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For the last decade, there has been an intensive research development in the area of wireless sensor networks (WSN). This is mainly due to their growing interest in several applications of the Internet of Things (IoT). Several issues are thus discussed such as node localization, a capability that is highly desirable for performance evaluation in monitoring applications. The localization aim is to look for precise geographical positions of sensors. Recently, swarm intelligence techniques are suggested to deal with localization challenge and localization is seen as an optimization problem. In this article, an Enhanced Fruit Fly Optimization Algorithm (EFFOA) is proposed to solve the localization. EFFOA has a strong capacity to calculate the position of the unknown nodes and converges iteratively to the best solution. Distributing and exploiting nodes is a chief challenge to testing the scalability performance. the EFFOA is simulated under variant studies and scenarios. in addition, a comparative experimental study proves that EFFOA outperforms some of the well-known optimization algorithms.
机译:在过去十年中,无线传感器网络(WSN)领域一直存在密集的研究开发。这主要是由于他们对东西互联网的若干应用感兴趣(IOT)。因此讨论了诸如节点本地化的几个问题,这是监视应用中的性能评估的能力非常可取的能力。本地化目标是寻找传感器的精确地理位置。最近,建议群体智能技术处理本地化挑战,本地化被视为优化问题。在本文中,提出了一种增强的果蝇优化算法(EffoA)来解决本地化。 Effoa具有强大的能力来计算未知节点的位置并迭代地收敛到最佳解决方案。分发和利用节点是测试可扩展性性能的主要挑战。在变异研究和情景下模拟了益乐会。此外,比较实验研究证明,Effoa优于一些众所周知的优化算法。

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