Evaluation of Bio-Inspired Models under Different Learning Settings for Energy Efficiency in Network Traffic Prediction.

IF 6.4
Theodoros Tsiolakis, Nikolaos Pavlidis, Vasileios Perifanis, Pavlos Efraimidis
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Abstract

Cellular traffic forecasting is a critical task that enables network operators to efficiently allocate resources and address anomalies in rapidly evolving environments. The exponential growth of data collected from base stations poses significant challenges to processing and analysis. While machine learning (ML) algorithms have emerged as powerful tools for handling these large datasets and providing accurate predictions, their environmental impact, particularly in terms of energy consumption, is often overlooked in favor of their predictive capabilities. This study investigates the potential of two bio-inspired models: Spiking Neural Networks (SNNs) and Reservoir Computing through Echo State Networks (ESNs) for cellular traffic forecasting. The evaluation focuses on both their predictive performance and energy efficiency. These models are implemented in both centralized and federated settings to analyze their effectiveness and energy consumption in decentralized systems. Additionally, we compare bio-inspired models with traditional architectures, such as Convolutional Neural Networks (CNNs) and Multi-Layer Perceptrons (MLPs), to provide a comprehensive evaluation. Using data collected from three diverse locations in Barcelona, Spain, we examine the trade-offs between predictive accuracy and energy demands across these approaches. The results indicate that bio-inspired models, such as SNNs and ESNs, can achieve significant energy savings while maintaining predictive accuracy comparable to traditional architectures. Furthermore, federated implementations were tested to evaluate their energy efficiency in decentralized settings compared to centralized systems, particularly in combination with bio-inspired models. These findings offer valuable insights into the potential of bio-inspired models for sustainable and privacy-preserving cellular traffic forecasting.

不同学习环境下生物启发模型对网络流量能效预测的评价。
蜂窝流量预测是一项关键任务,它使网络运营商能够有效地分配资源,并在快速发展的环境中处理异常情况。从基站收集的数据呈指数级增长,对处理和分析提出了重大挑战。虽然机器学习(ML)算法已经成为处理这些大型数据集并提供准确预测的强大工具,但它们对环境的影响,特别是在能源消耗方面,往往被忽视,而倾向于它们的预测能力。本研究探讨了两种生物启发模型的潜力:脉冲神经网络(SNNs)和通过回声状态网络(ESNs)的水库计算(Reservoir Computing through Echo State Networks, ESNs)用于蜂窝流量预测。评估的重点是它们的预测性能和能源效率。这些模型在集中式和联邦设置中实现,以分析它们在分散系统中的有效性和能耗。此外,我们将生物启发模型与传统架构(如卷积神经网络(cnn)和多层感知器(mlp))进行比较,以提供全面的评估。使用从西班牙巴塞罗那三个不同地点收集的数据,我们检查了这些方法中预测准确性和能源需求之间的权衡。结果表明,生物启发模型,如snn和esn,可以在保持与传统架构相当的预测精度的同时实现显著的节能。此外,对联邦实施进行了测试,以评估其在分散环境下与集中式系统相比的能源效率,特别是与生物启发模型相结合。这些发现为生物启发模型的潜力提供了宝贵的见解,以实现可持续和隐私保护的蜂窝流量预测。
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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