利用改进的狮子算法增强无线传感器网络中的网络编码:旨在最大化网络吞吐量和寿命

Prashant R. Dike, T. S. Vishwanath, Vandana Rohakale
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引用次数: 0

摘要

由于通信通常是功耗的首要问题,有一些方法,如拓扑控制和网络编码(NC),以减少传感器收发器的活动。如果同时使用这些方法,那么总体性能确实会如预期的那样提高。在无线传感器网络(WSN)中,线性NC已被证明可以提高网络吞吐量和降低延迟。然而,现有的NC感知路由的NC条件在某些情况下可能会出现假编码效应的问题,并且通常会忽略节点能量,这严重影响了能效性能。本文的目的是提出一种新的无线传感器网络的数控调度方法,以最大限度地提高网络的吞吐量和最小化网络的能耗。设计/方法/方法采用改进的元启发式算法——改进的基于突变的狮子算法(IM-LA)来解决无线传感器网络中的数控加工调度问题。实现改进的优化的主要目的是从源节点到目的节点的传输过程中,最大限度地提高吞吐量和最小化网络的能耗。利用拓扑结构和时隙等参数进行优化,得到相应的目标函数。在求解当前优化问题时,考虑了分时约束、数据流约束和域约束等约束。实验结果表明,与传统模型相比,该模型能提高网络的性能。结果当固定20个节点进行多目标函数的收敛性分析时,在第400次迭代时,所提出的IM-LA算法分别比灰狼算法(GWO)、萤火虫算法(FF)和粒子群算法(PSO)的收敛性提高10.34、13.91和50%,与LA算法相同。因此,本文提出的IM-LA在最小化成本函数方面的性能优于其他传统方法,因此,成功地完成了基于多目标函数的WSN节点优化调度,即使用NC最小化能耗和最大化吞吐量。独创性/价值本文采用最新的优化算法IM-LA,用于解决WSN中的网络编码调度问题。这是首次在WSN中利用IM-LA进行优化网络编码的工作。
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Enhancement of network coding in wireless sensor network using improved lion algorithm: intention toward maximizing network throughput and lifetime
PurposeSince communication usually accounts as the foremost problem for power consumption, there are some approaches, such as topology control and network coding (NC), for diminishing the activity of sensors’ transceivers. If such approaches are employed simultaneously, then the overall performance does raise as expected. In a wireless sensor network (WSN), the linear NC has been shown to enhance the performance of network throughput and reduce delay. However, the NC condition of existing NC-aware routings may experience the issue of false-coding effect in some scenarios and usually neglect node energy, which highly affects the energy efficiency performance. The purpose of this paper is to propose a new NC scheduling in a WSN with the intention of maximizing the throughput and minimizing the energy consumption of the network.Design/methodology/approachThe improved meta-heuristic algorithm called the improved mutation-based lion algorithm (IM-LA) is used to solve the problem of NC scheduling in a WSN. The main intention of implementing improved optimization is to maximize the throughput and minimize the energy consumption of the network during the transmission from the source to the destination node. The parameters like topology and time slots are taken for optimizing in order to obtain the concerned objective function. While solving the current optimization problem, it has considered a few constraints like timeshare constraint, data-flow constraint and domain constraint. Thus, the network performance is proved to be enhanced by the proposed model when compared to the conventional model.FindingsWhen 20 nodes are fixed for the convergence analysis, performed in terms of multi-objective function, it is noted that during the 400th iteration, the proposed IM-LA was 10.34, 13.91 and 50% better than gray wolf algorithm (GWO), firefly algorithm (FF) and particle swarm optimization (PSO), respectively, and same as LA. Therefore, it is concluded that the proposed IM-LA performs extremely better than other conventional methods in minimizing the cost function, and hence, the optimal scheduling of nodes in a WSN in terms of the multi-objective function, i.e. minimizing energy consumption and maximizing throughput using NC has been successfully done.Originality/valueThis paper adopts the latest optimization algorithm called IM-LA, which is used to solve the problem of network coding scheduling in a WSN. This is the first work that utilizes IM-LA for optimal network coding in a WSN.
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