Shah Sabir, Munir Asim, Salam Abdu, Ullah Faizan, Amin Farhan, AlSalman Hussain, Javeed Qaisar
Department of Computer Science and Software Engineering, International Islamic University, Islamabad, 44000, Pakistan.
Department of Computer Science, Abdul Wali Khan University, Mardan, 23200, Pakistan.
Sci Rep. 2024 Sep 27;14(1):22393. doi: 10.1038/s41598-024-72775-4.
Underwater wireless sensor networks (UWSNs) are an emerging research area that is rapidly gaining popularity. However, it has several challenges, including security, node mobility, limited bandwidth, and high error rates. Traditional trust models fail to adapt to the dynamic underwater environment. Thus, to address these issues, we propose a dynamic trust evaluation and update model using a modified decision tree algorithm. Unlike baseline methods, which often rely on static and generalized trust evaluation approaches, our model introduces several innovations tailored specifically for UWSNs. These include energy-aware decision-making, real-time adaptation to environmental changes, and the integration of multiple underwater-specific factors such as water currents and acoustic signal properties. Our model enhances trust accuracy, reduces energy consumption, and lowers data overhead, achieving a 96% accuracy rate with a 2% false positive rate. Additionally, it outperforms baseline models by improving energy efficiency by 50 mW and reducing response time to 20 ms per packet. These innovations demonstrate the proposed model's effectiveness in addressing the unique challenges of UWSNs, ensuring both security and operational efficiency goals. The proposed model effectively enhances the trust evaluation process in UWSNs, providing both security and operational benefits. These key findings validate the potential of integrating modified decision tree algorithms to improve the performance and sustainability of UWSNs.
水下无线传感器网络(UWSNs)是一个正在迅速兴起且越来越受欢迎的研究领域。然而,它面临着诸多挑战,包括安全性、节点移动性、有限的带宽以及高错误率。传统的信任模型无法适应动态的水下环境。因此,为了解决这些问题,我们提出了一种使用改进决策树算法的动态信任评估与更新模型。与通常依赖静态和通用信任评估方法的基线方法不同,我们的模型引入了多项专门针对水下无线传感器网络量身定制的创新。这些创新包括能量感知决策、对环境变化的实时适应,以及整合多个水下特定因素,如水流动和声学信号特性。我们的模型提高了信任准确性,降低了能耗,并减少了数据开销,实现了96%的准确率和2%的误报率。此外,它在每数据包的能源效率提高50毫瓦且响应时间缩短至20毫秒的情况下,性能优于基线模型。这些创新证明了所提出的模型在应对水下无线传感器网络独特挑战方面的有效性,确保了安全性和运营效率目标。所提出的模型有效地增强了水下无线传感器网络中的信任评估过程,带来了安全和运营方面的益处。这些关键发现验证了整合改进决策树算法以提高水下无线传感器网络性能和可持续性的潜力。