Massive Internet of Things (IoT) networks have a wide range of applications, including but not limited to the rapid delivery of emergency and disaster messages. Although various benchmark algorithms have been developed to date for message delivery in such applications, they pose several practical challenges such as insufficient network coverage and/or highly redundant transmissions to expand the coverage area, resulting in considerable energy consumption for each IoT device. To overcome this problem, we first characterize a new performance metric, forwarding efficiency, which is defined as the ratio of the coverage probability to the average number of transmissions per device, to evaluate the data dissemination performance more appropriately. Then, we propose a novel and effective forwarding method, fishbone forwarding (FiFo), which aims to improve the forwarding efficiency with acceptable computational complexity. Our FiFo method completes two tasks: 1) it clusters devices based on the unweighted pair group method with the arithmetic average; and 2) it creates the main axis and sub axes of each cluster using both the expectation-maximization algorithm for the Gaussian mixture model and principal component analysis. We demonstrate the superiority of FiFo by using a real-world dataset. Through intensive and comprehensive simulations, we show that the proposed FiFo method outperforms benchmark algorithms in terms of the forwarding efficiency.
翻译:大量物质互联网(IoT)网络具有广泛的应用范围,包括但不限于快速发送紧急和灾害信息。尽管迄今为止已经为在这些应用中发送信息开发了各种基准算法(FiFo),但它们带来了若干实际挑战,如网络覆盖面不足和/或为扩大覆盖范围而进行超冗传输,导致每个IoT设备大量消耗能源。为解决这一问题,我们首先将新的性能衡量标准、传输效率定性为覆盖概率与每个设备平均传输次数的比率,以更恰当地评价数据传播性能。然后,我们提出一种创新和有效的传输方法,即鱼骨转发(FiFo),目的是以可接受的计算复杂性提高传输效率。我们的FiFo方法完成了两项任务:1)它以非加权组合组合方法为基础,以算术平均值为基础,将每个组群组合的主要轴和子轴组合组合组成,使用高斯混合模型的预期-最大度算法和主要组件分析。我们通过使用现实-FiF数据传输方法展示了FiFo的优越性能。我们通过模拟和模拟工具展示了拟议的基本数据传输效率。