基于联合学习的能量最小化自适应阈值梯度节点定位的混合累积方法

IF 0.6 Q4 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
A. I., K. Selvakumar
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引用次数: 0

摘要

目的节点的定位对于获得不同节点的访问至关重要,这些节点将在网络无法访问的极端区域提供服务。节点的定位特征已经成为一项重要的研究,其中距离模型上的多个特征涉及到每一组定位参数的预测和启发式模型,这些参数控制着所提出的自适应阈值梯度特征(ATGF)模型的能量最小化设计。将具有节点估计特征的接收信号强度指标(RSSI)模型与定位问题联系起来,并用混合累积方法(HCA)算法对其进行了改进,用于距离预测的节点优化。设计/方法/方法使用理论或经验信号传播模型,将RSSI(已知发射功率)转换为距离,将接收功率(在接收节点测量)转换为间距,并将间距转换为RSSI(未知接收功率)。结果,可以通过测量接收信号的强度来确定收发器节点和接收器之间的近似距离。在获取关于锚节点和未知节点之间的距离的信息之后,根据使用联合学习的情况,可以使用三边技术或最大概率估计方法来确定未知节点的位置。发现改进无线传感器网络的定位已成为估计外部和内部不同条件变化的主要设计特征之一。本文通过HCA观察到了一个这样的改进特征,其中在第5节中,用机器学习算法描述了定位的每个特征,为每个新的定位节点赋予能量减少问题。如第4节所述,所有受影响的能级参数特征以及新节点和已灭绝节点的定位问题都与混合累积方法有关。所提出的算法(带有AGTF的HCA)涉及新生成的节点的能级的显著变化,这些节点在规定的时间内处于非活动状态,如第6节中的图表所述。起源/价值节点的定位对于获得不同节点的访问至关重要,这些节点将在网络无法访问。节点的定位特征已经成为一项重要的研究,其中距离模型上的多个特征涉及到每一组定位参数的预测和启发式模型,这些参数控制着所提出的ATGF模型的能量最小化设计。将具有节点估计特征的RSSI模型与定位问题联系起来,并用HCA算法对具有距离预测的节点优化进行了改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hybrid cumulative approach for localization of nodes with adaptive threshold gradient feature on energy minimization using federated learning
Purpose Localization of the nodes is crucial for gaining access of different nodes which would provision in extreme areas where networks are unreachable. The feature of localization of nodes has become a significant study where multiple features on distance model are implicated on predictive and heuristic model for each set of localization parameters that govern the design on energy minimization with proposed adaptive threshold gradient feature (ATGF) model. A received signal strength indicator (RSSI) model with node estimated features is implicated with localization problem and enhanced with hybrid cumulative approach (HCA) algorithm for node optimizations with distance predicting. Design/methodology/approach Using a theoretical or empirical signal propagation model, the RSSI (known transmitting power) is converted to distance, the received power (measured at the receiving node) is converted to distance and the distance is converted to RSSI (known receiving power). As a result, the approximate distance between the transceiver node and the receiver may be determined by measuring the intensity of the received signal. After acquiring information on the distance between the anchor node and the unknown node, the location of the unknown node may be determined using either the trilateral technique or the maximum probability estimate approach, depending on the circumstances using federated learning. Findings Improvisation of localization for wireless sensor network has become one of the prime design features for estimating the different conditional changes externally and internally. One such feature of improvement is observed in this paper, via HCA where each feature of localization is depicted with machine learning algorithms imparting the energy reduction problem for each newer localized nodes in Section 5. All affected parametric features on energy levels and localization problem for newer and extinct nodes are implicated with hybrid cumulative approach as in Section 4. The proposed algorithm (HCA with AGTF) has implicated with significant change in energy levels of nodes which are generated newly and which are non-active for a stipulated time which are mentioned and tabulated in figures and tables in Section 6. Originality/value Localization of the nodes is crucial for gaining access of different nodes which would provision in extreme areas where networks are unreachable. The feature of localization of nodes has become a significant study where multiple features on distance model are implicated on predictive and heuristic model for each set of localization parameters that govern the design on energy minimization with proposed ATGF model. An RSSI model with node estimated features is implicated with localization problem and enhanced with HCA algorithm for node optimizations with distance predicting.
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来源期刊
International Journal of Pervasive Computing and Communications
International Journal of Pervasive Computing and Communications COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS-
CiteScore
6.60
自引率
0.00%
发文量
54
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