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A Machine Learning-Based Intelligence Approach for Multiple-Input/Multiple-Output Routing in Wireless Sensor Networks

机译:一种基于机器学习的无线传感器网络多输入/多输出路由智能方法

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摘要

Computational intelligence methods play an important role for supporting smart networks operations, optimization, and management. In wireless sensor networks (WSNs), increasing the number of nodes has a need for transferring large volume of data to remote nodes without any loss. These large amounts of data transmission might lead to exceeding the capacity of WSNs, which results in congestion, latency, and packet loss. Congestion in WSNs not only results in information loss but also burns a significant amount of energy. To tackle this issue, a practical computational intelligence approach for optimizing data transmission while decreasing latency is necessary. In this article, a Softmax-Regressed-Tanimoto-Reweight-Boost-Classification- (SRTRBC-) based machine learning technique is proposed for effective routing in WSNs. It can route packets around busy locations by selecting nodes with higher energy and lower load. The proposed SRTRBC technique is composed of two steps: route path construction and congestion-aware MIMO routing. Prior to constructing the route path, the residual energy of the node is determined. After that, the residual energy level is analyzed using softmax regression to determine whether or not the node is energy efficient. The energy-efficient nodes are located, and numerous paths between the source and sink nodes are established using route request and route reply. Following that, the SRTRBC technique is used for congestion-aware routing based on buffer space and bandwidth capability. The path that requires the least buffer space and has the highest bandwidth capacity is picked as the optimal route path among multiple paths. Finally, congestion-aware data transmission is used to minimize latency and data loss along the route path. The simulation considers a variety of performance metrics, including energy consumption, data delivery rate, data loss rate, throughput, and delay, in relation to the amount of data packets and sensor nodes.
机译:计算智能方法在支持智能网络运营、优化和管理方面发挥着重要作用。在无线传感器网络 (WSN) 中,增加节点数量需要将大量数据传输到远程节点而不会造成任何损失。这些大量的数据传输可能会导致超出 WSN 的容量,从而导致拥塞、延迟和数据包丢失。WSN中的拥塞不仅会导致信息丢失,还会消耗大量能量。为了解决这个问题,需要一种实用的计算智能方法来优化数据传输,同时减少延迟。该文提出一种基于Softmax-Regressed-Tanimoto-Reweight-Boost-Classification-(SRTRBC-)的机器学习技术,用于WSN的有效路由。它可以通过选择具有更高能量和更低负载的节点来在繁忙位置路由数据包。所提出的SRTRBC技术由路由路径构建和拥塞感知MIMO路由两步组成。在构建路由路径之前,需要确定节点的剩余能量。之后,使用 softmax 回归分析残余能级,以确定节点是否节能。定位节能节点,使用路由请求和路由回复在源节点和接收器节点之间建立多条路径。之后,SRTRBC技术用于基于缓冲区空间和带宽能力的拥塞感知路由。在多条路径中,选择需要最少缓冲区空间、带宽容量最大的路径作为最优路由路径。最后,使用拥塞感知数据传输来最大限度地减少沿路由路径的延迟和数据丢失。仿真考虑了与数据包和传感器节点数量相关的各种性能指标,包括能耗、数据传输率、数据丢失率、吞吐量和延迟。

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