用于预测性工业维护的新型热供电无电池物联网架构的模型与实施

Information Pub Date : 2024-06-05 DOI:10.3390/info15060330
R. Aragonés, J. Oliver, R. Malet, Maria Oliver-Parera, C. Ferrer
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引用次数: 0

摘要

工业 4.0 的研究和管理越来越依赖于准确的实时质量数据,以应用高效算法进行预测性维护。目前,低功耗广域网(LPWAN)在预测性维护的监控任务方面具有潜在优势。然而,它们的适用性需要在能耗、传输距离、数据传输速率和稳定的服务质量等方面进行改进。常用的电池供电 IIoT 设备在大型设施或热量密集型行业(钢铁、水泥等)的应用中存在一些局限性。在这些情况下,自加热节点与适当的低功耗处理平台和工业传感器一起,符合工业监控所需的要求和实时标准。从环境角度来看,与人类活动相关的碳足迹导致全球平均气温持续上升。排放到大气中的大部分气体都是由这些热量密集型工业造成的。事实上,工业消耗的大部分能源都以余热的形式散失。在这种情况下,建立热能转换收集系统作为无电池自供电 IIoT 设备的保证就显得非常有意义了。热能收集器的工作物理基础是塞贝克效应。因此,本文收集了物联网节点废热回收系统建模和仿真的标准化方法,从任何热表面(如管道或烟囱)收集能量。利用从两种不同物联网架构中获得的数据进行了统计分析,结果表明模型模拟与原型行为之间存在良好的相关性。此外,选定的模型将与具有 LoRaWAN 连接功能的低功耗处理平台相结合,以展示其在实际工业环境中的有效性和自供电能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Model and Implementation of a Novel Heat-Powered Battery-Less IIoT Architecture for Predictive Industrial Maintenance
The research and management of Industry 4.0 increasingly relies on accurate real-time quality data to apply efficient algorithms for predictive maintenance. Currently, Low-Power Wide-Area Networks (LPWANs) offer potential advantages in monitoring tasks for predictive maintenance. However, their applicability requires improvements in aspects such as energy consumption, transmission range, data rate and constant quality of service. Commonly used battery-operated IIoT devices have several limitations in their adoption in large facilities or heat-intensive industries (iron and steel, cement, etc.). In these cases, the self-heating nodes together with the appropriate low-power processing platform and industrial sensors are aligned with the requirements and real-time criteria required for industrial monitoring. From an environmental point of view, the carbon footprint associated with human activity leads to a steady rise in global average temperature. Most of the gases emitted into the atmosphere are due to these heat-intensive industries. In fact, much of the energy consumed by industries is dissipated in the form of waste heat. With this scenario, it makes sense to build heat transformation collection systems as guarantors of battery-free self-powered IIoT devices. Thermal energy harvesters work on the physical basis of the Seebeck effect. In this way, this paper gathers the methodology that standardizes the modelling and simulation of waste heat recovery systems for IoT nodes, gathering energy from any hot surface, such as a pipe or chimney. The statistical analysis is carried out with the data obtained from two different IoT architectures showing a good correlation between model simulation and prototype behaviour. Additionally, the selected model will be coupled to a low-power processing platform with LoRaWAN connectivity to demonstrate its effectiveness and self-powering ability in a real industrial environment.
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