Location based services, already popular with end users, are now inevitably becoming part of new wireless infrastructures and emerging business processes. The increasingly popular Deep Learning (DL) artificial intelligence methods perform very well in wireless fingerprinting localization based on extensive indoor radio measurement data. However, with the increasing complexity these methods become computationally very intensive and energy hungry, both for their training and subsequent operation. Considering only mobile users, estimated to exceed 7.4 billion by the end of 2025, and assuming that the networks serving these users will need to perform only one localization per user per hour on average, the machine learning models used for the calculation would need to perform $65 \times 10^{12}$ predictions per year. Add to this equation tens of billions of other connected devices and applications that rely heavily on more frequent location updates, and it becomes apparent that localization will contribute significantly to carbon emissions unless more energy-efficient models are developed and used. In this Chapter, we discuss the latest results and trends in wireless localization and look at paths towards achieving more sustainable AI. We then elaborate on a methodology for computing DL model complexity, energy consumption and carbon footprint and show on a concrete example how to develop a more resource-aware model for fingerprinting. We finally compare relevant works in terms of complexity and training CO$_2$ footprint.
翻译:现在,基于位置的服务已经受到终端用户的欢迎,这些服务现在不可避免地成为新的无线基础设施和新兴业务流程的一部分。根据广泛的室内无线电测量数据,日益流行的深入学习(DL)人工智能方法在无线指纹本地化方面表现得非常好。然而,随着这些方法日益复杂,其计算变得非常密集,能源也十分匮乏,既用于培训,也用于随后的操作。考虑到只有移动用户,估计到2025年底将超过74亿,并且假定为这些用户服务的网络需要平均每个用户每个小时只实现一个本地化,计算所用的机器学习模型每年需要用65美元进行预测。除此等外,还有数十亿个其他相关装置和应用,这些装置和应用严重依赖更频繁的更新地点,而且显然,除非开发和使用更节能的模式,否则本地化将大大有助于碳排放。我们本章讨论无线本地化的最新结果和趋势,并审视实现更可持续的AI的途径。我们随后将详细研究计算DL模型、能源消耗和碳足迹的计算方法,每年需要65美元。我们最后要用多少个具体例子来比较资源足迹的模型。