WSETO:针对 NB-IoT 跟踪系统的野生证券交易所交易优化算法路由功能

Sreeparnesh Sharma Sivadevuni, J. Naveen
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摘要

窄带物联网(NB-IoT)通信在物联网中发挥着重要作用,因为它能以有限的功率进行广泛的探索。在过去几年中,低功耗广域网(LPWAN)在数据采集和远程监控领域发挥了有效作用,但却无法实现高数据速率、低延迟和低功耗。为了解决这些问题,NB-IoT 技术在长期资产跟踪领域得到了发展,并以其无处不在的覆盖范围取代了全球定位系统(GPS)。本研究针对基于路由的 NB-IoT 跟踪系统提出了野生证券交易所交易优化技术(WSETO)。WSETO 是野雁算法(WGA)和 SETO 的结合。通过使用 WSETO,可以有效建立通往相关目标位置的路由。现有技术,如 NB-IoT 的低功耗资产跟踪(LoPATraN)、基于 NB-IoT 和北斗系统/GPS 的监控系统(BDS/GPS)以及窄带物理上行链路共享信道(NPUSCH),都被用来比较 WSETO 方法。在数值为 2000 的回合中,WSETO 与 LoPATraN、利用 NB-IoT 和 BDS/GPS 的监控系统以及 NPUSCH 等现有方法相比,定位误差仅为 0.001。
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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WSETO: wild stock exchange trading optimization algorithm enabled routing for NB-IoT tracking system

The Narrowband Internet of Things (NB-IoT) communication plays a significant role in the IoT due to the capability of generating broad exploration with the usage of limited power. Over the past few years, the Low Power Wide Area Networks (LPWAN) have been efficient in the data acquisition and remote monitoring area however they failed to generate high data rates, low latency, and the consumption of low power. To solve these problems, NB-IoT technology has developed in long-term asset tracking and it replaces the Global Positioning System (GPS) with its ubiquitous coverage. In this research, the Wild Stock Exchange Trading Optimization technique (WSETO) is proposed for a routing-based NB-IoT tracking system. The WSETO is the combination of the Wild Geese Algorithm (WGA) and SETO. By employing WSETO, the routing to the relevant target location is established effectively. The existing techniques like Low Power Asset Tracking of NB-IoT (LoPATraN), Monitoring system based on NB-IoT and BeiDou System/GPS (BDS/GPS), and Narrowband Physical Uplink Shared Channel (NPUSCH) are used to compare the WSETO approach. In rounds with a value of 2000, the WSETO demonstrates a superior location error of 0.001 in comparison to existing methods such as LoPATraN, a monitoring system utilizing NB-IoT and BDS/GPS, as well as NPUSCH.

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