Adaptive and Priority-Based Data Aggregation and Scheduling Model for Wireless Sensor Network

IF 7.2 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
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引用次数: 0

Abstract

Wireless Sensor Networks (WSN) use sensor nodes placed in potential places to collect sensitive information. These sensor nodes monitor necessary data and send it to the sink node. Sensor nodes have resource constraints, especially energy and power depletion. The majority of sensor and battery power is wasted on redundant data transmission. The redundant data transmission consumes a significant amount of the sensor and battery life, decreasing the total lifespan of the sensor nodes. Data aggregation is an approach that expands the useful lifetime of sensor nodes overall and removes unnecessary data and delays. There are many types of data aggregation techniques, such as centralized, tree-based, in-network, and cluster-based. The available tree-based data aggregation mechanism performs well, but the whole tree may be down due to single-node failure. Due to bottlenecks, node data aggregation suffers from an increased packet failure ratio. Another limitation is that every node aggregates data into slices, which consumes more energy. For this purpose, an adaptive and priority-based data aggregation and scheduling model (APB-DASM) for WSNs is proposed in this paper to address these issues. It is proposed that APB-DASM be used to improve quality of service (QoS) with regard to energy consumption and data transmission. The APB-DASM model aggregates sensor data into cluster heads and divides it into three formats: The first format categorizes the most important data that consists of four slices, and the second format categorizes the important data that consists of three slices. Format three data is represented in two slices, which is normal data. These three types of format data are aggregated on a priority basis, such that the highest priority is given to the first format, i.e., most important data; moderate priority is given to the second format, i.e., important data; and then low priority is given to the normal data. Due to an efficient priority-based data aggregation and scheduling algorithm, our proposed model sends the most important data first, and so on. Theoretical study and simulation research demonstrate that our proposed approach improves the existing tree-based models. By using APB-DASM, significant decreases in energy usage, packet delivery ratio, and overall QoS are achieved, and as a result, the WSNs' lifetime is thus increased. The proposed model is implemented in MATLAB, and the results are compared with existing tree-based models. Simulations comparing our model to the most recent models indicate that it worked effectively, reducing the packet failure ratio and energy usage by 36.8% and 30%, respectively, for CBF-ADA, D-SMART, and WDARS. This article emphasizes how the suggested methodology can be effectively used in the aggregation of coronavirus patient data. It demonstrates how adaptable and applicable our method is in the real world.

无线传感器网络的自适应和基于优先级的数据聚合与调度模型
无线传感器网络(WSN)利用放置在潜在地点的传感器节点来收集敏感信息。这些传感器节点监测必要的数据并将其发送到汇节点。传感器节点受到资源限制,特别是能源和电力消耗。传感器和电池的大部分电量都浪费在冗余数据传输上。冗余数据传输消耗了大量传感器和电池的寿命,降低了传感器节点的总寿命。数据聚合是一种能延长传感器节点总体使用寿命并消除不必要数据和延迟的方法。数据聚合技术有多种类型,如集中式、树型、网络内和集群式。现有的基于树的数据聚合机制性能良好,但可能会因单个节点故障而导致整棵树瘫痪。由于存在瓶颈,节点数据聚合的数据包失败率会增加。另一个局限是,每个节点都要将数据聚合成片,这会消耗更多能量。为此,本文提出了一种用于 WSN 的自适应和基于优先级的数据聚合和调度模型(APB-DASM)来解决这些问题。本文建议使用 APB-DASM 改善能耗和数据传输方面的服务质量(QoS)。APB-DASM 模型将传感器数据汇聚到簇头,并将其分为三种格式:第一种格式将最重要的数据分类,由四个片段组成;第二种格式将重要数据分类,由三个片段组成。格式三的数据用两个片段表示,即普通数据。这三种格式的数据按优先级进行汇总,第一种格式的数据(即最重要数据)优先级最高;第二种格式的数据(即重要数据)优先级适中;普通数据优先级较低。由于采用了高效的基于优先级的数据聚合和调度算法,我们提出的模型会先发送最重要的数据,以此类推。理论研究和仿真研究表明,我们提出的方法改进了现有的基于树的模型。通过使用 APB-DASM,能源使用量、数据包传送率和整体 QoS 均显著降低,从而延长了 WSN 的使用寿命。我们在 MATLAB 中实现了所提出的模型,并将结果与现有的基于树的模型进行了比较。将我们的模型与最新模型进行比较的仿真结果表明,该模型行之有效,CBF-ADA、D-SMART 和 WDARS 的数据包失败率和能源使用量分别降低了 36.8% 和 30%。本文强调了建议的方法如何有效地用于冠状病毒患者数据的聚合。它证明了我们的方法在现实世界中的适应性和适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Knowledge-Based Systems
Knowledge-Based Systems 工程技术-计算机:人工智能
CiteScore
14.80
自引率
12.50%
发文量
1245
审稿时长
7.8 months
期刊介绍: Knowledge-Based Systems, an international and interdisciplinary journal in artificial intelligence, publishes original, innovative, and creative research results in the field. It focuses on knowledge-based and other artificial intelligence techniques-based systems. The journal aims to support human prediction and decision-making through data science and computation techniques, provide a balanced coverage of theory and practical study, and encourage the development and implementation of knowledge-based intelligence models, methods, systems, and software tools. Applications in business, government, education, engineering, and healthcare are emphasized.
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