We propose how a developing country like Sri Lanka can benefit from privacy-enabled machine learning techniques such as Federated Learning to detect road conditions using crowd-sourced data collection and proposed the idea of implementing a Digital Twin for the national road system in Sri Lanka. Developing countries such as Sri Lanka are far behind in implementing smart road systems and smart cities compared to the developed countries. The proposed work discussed in this paper matches the UN Sustainable Development Goal (SDG) 9: "Build Resilient Infrastructure, Promote Inclusive and Sustainable Industrialization and Foster Innovation". Our proposed work discusses how the government and private sector vehicles that conduct routine trips to collect crowd-sourced data using smartphone devices to identify the road conditions and detect where the potholes, surface unevenness (roughness), and other major distresses are located on the roads. We explore Mobile Edge Computing (MEC) techniques that can bring machine learning intelligence closer to the edge devices where produced data is stored and show how the applications of Federated Learning can be made to detect and improve road conditions. During the second phase of this study, we plan to implement a Digital Twin for the road system in Sri Lanka. We intend to use data provided by both Dedicated and Non-Dedicated systems in the proposed Digital Twin for the road system. As of writing this paper, and best to our knowledge, there is no Digital Twin system implemented for roads and other infrastructure systems in Sri Lanka. The proposed Digital Twin will be one of the first implementations of such systems in Sri Lanka. Lessons learned from this pilot project will benefit other developing countries who wish to follow the same path and make data-driven decisions.
翻译:我们建议斯里兰卡这样的发展中国家如何能从隐私驱动的机器学习技术中受益,如Federed Learning, 以利用众源数据收集来探测路况,并提出斯里兰卡国家道路系统采用数字双极的设想。斯里兰卡等发展中国家与发达国家相比,在实施智能道路系统和智能城市方面远远落后。本文件讨论的拟议工作与联合国可持续发展目标9(SDG)相匹配:“建设弹性基础设施,促进包容性和可持续的工业化和促进创新”。我们提议的工作讨论了政府和私营部门车辆如何利用智能手机设备进行例行旅行,以收集众源数据,查明道路状况,并查明公路系统位于哪些地方的坑洞、地表不均(干旱)和其他主要困难。我们探索移动电子计算技术,这些技术可使机器学习情报更接近储存数据的边缘设备,并表明如何利用联邦学习系统检测和改善道路状况。在这项研究的第二阶段,我们计划为斯里兰卡的一条公路系统实施数字双向数据路,我们打算利用这一数据库系统进行双向数据化的学习。我们打算利用这一数据库数据库系统,在斯里兰卡进行双向数据库系统实施。