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基于物联网的智能互联自行车骑行训练解决方案。

Connected Bike-smart IoT-based Cycling Training Solution.

机构信息

Department of Automation, Faculty of Automation and Computer Science, Technical University of Cluj-Napoca, Memorandumului Str. 28, 400014 Cluj-Napoca, Romania.

Physiological Controls Research Center, Óbuda University, H-1034 Budapest, Hungary.

出版信息

Sensors (Basel). 2020 Mar 7;20(5):1473. doi: 10.3390/s20051473.

DOI:10.3390/s20051473
PMID:32156032
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC7085696/
Abstract

The Connected Bike project combines several technologies, both hardware and software, to provide cycling enthusiasts with a modern alternative solution for training. Therefore, a trainer can monitor online through a Web Application some of the important parameters for training, more specifically the speed, cadence and power generated by the cyclist. Also, the trainer can see at every moment where the rider is with the aid of a GPS module. The system is built out of both hardware and software components. The hardware is in charge of collecting, scaling, converting and sending data from sensors. On the software side, there is the server, which consists of the Back-End and the MQTT (Message Queues Telemetry Transport) Broker, as well as the Front-End of the Web Application that displays and manages data as well as collaboration between cyclists and trainers. Finally, there is the Android Application that acts like a remote command for the hardware module on the bike, giving the rider control over how and when the ride is monitored.

摘要

联网自行车项目结合了多种技术,包括硬件和软件,为自行车爱好者提供了一种现代的替代训练方案。因此,培训师可以通过 Web 应用程序在线监控一些重要的训练参数,特别是自行车运动员的速度、踏频和功率。此外,培训师还可以借助 GPS 模块随时了解骑手的位置。该系统由硬件和软件组件构成。硬件负责从传感器收集、缩放、转换和发送数据。在软件方面,有服务器,它由后端和 MQTT(消息队列遥测传输)代理以及 Web 应用程序的前端组成,该前端用于显示和管理数据以及自行车手和培训师之间的协作。最后,还有一个 Android 应用程序,它充当自行车硬件模块的远程命令,让骑手可以控制何时以及如何监控骑行。

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