基于云计算和物联网的蜂窝站点后预测决策框架

Safa Meraghni, L. Terrissa, N. Zerhouni, C. Varnier, Soheyb Ayad
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引用次数: 11

摘要

维修是生产过程中的主要因素之一。维护策略的目的不仅仅是在良好的状态下维修和维护设备,而是实施有效的维护解决方案,以确保良好的功能,同时最大限度地降低维护成本。预测性维护策略首先从传感器收集数据,分析这些数据并预测系统中的故障或故障。因此,根据这些信息,我们试图找到维护的最佳解决方案。预后运行状况管理器(PHM)为维护提供了显著的好处。它预测系统的未来行为以及它的剩余使用寿命。然而,当工厂有大量的资产与移动和固定设备在不同的地理位置。做决定和收集数据变得很困难。在这项研究中,我们对地理分布的固定设备感兴趣;在此基础上,提出了一个决策后预测框架,以帮助工程师对维修操作做出最优决策,从而使维修成本最小化。为了增强后预测决策,我们提出了一个基于物联网技术的框架,用于实时传感,从设备收集数据,云计算范式用于资源管理和信息处理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A post-prognostics decision framework for cell site using Cloud computing and Internet of Things
Maintenance is one of the main factors of production process. The aim of maintenance strategy is not just to repair and maintain equipment in a good condition, but to implement efficient maintenance solutions to ensure the good function while minimizing the cost of maintenance. Predictive maintenance strategy start by collecting data from sensors, analyze this data and predict the malfunction or failure in the system. As a result, with this information, we try to find the optimal solution for maintenance. Prognostics Health Manager (PHM) offers significant benefits for maintenance. It predicts the future behavior of a system as well as its remaining useful life. However when factories have a large number of asset with mobile and stationary equipment in different geographically sites. Making decision and collecting data become difficult to be done. In this study we interested in stationary equipment geographically distributed; and we propose a decision post-prognostics framework to help engineers to take the optimal decision for maintenance operation in order to minimize maintenance cost. In order to enhance the post-prognostics decision, we propose a framework based on Iot technology for real-time sensing to collect data from equipment and Cloud computing paradigm for resources management and information processing.
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