论文标题

智能城市的智能电动自行车

A smart electric bike for smart cities

论文作者

Sweeney, Shaun, Shorten, Robert, Timoney, David, Russo, Giovanni, Pilla, Francesco

论文摘要

这是2017年在爱尔兰都柏林大学学院完成的硕士论文,该论文涉及增强带有传感器的现成电动自行车,以使新服务能够交付给城市的骑自行车的人。主要兴趣的应用是根据局部空气污染物的浓度来控制骑自行车的人的通风率。为我们的网络物理系统提供了详细的建模和系统设计,该系统由修改的BTWIN电子自行车,自行车分析师传感器,骑自行车的人本身,蓝牙连接的智能手机和我们的算法组成。提出并以基本方式验证了骑自行车者作为其通风率的代理权力的控制算法的比例,后来在进一步的工作中得到了进一步的证明(请参阅IEEE智能运输系统上的IEEE交易:https://ieeeexplore.ieee.ieee.ieee.org/abstract/document/document/8833557777777)。基本思想是在高空气污染区域为骑自行车的人提供更多的电气援助,以降低骑自行车的通风速率,从而降低吸入空气污染物的量。由于人类的特征和有影响力的现实生活应用的潜力,这提出了一个有趣的控制挑战。在与骑自行车有关的能源方面提供了背景文献综述,还讨论了其他一些应用。提供了展示该系统的视频的链接,也是IBM Research关于该系统的博客的链接。

This is a Masters Thesis completed at University College Dublin, Ireland in 2017 which involved augmenting an off-the-shelf electric bike with sensors to enable new services to be delivered to cyclists in cities. The application of primary interest was to control the cyclist's ventilation rate based on the concentration of local air pollutants. Detailed modelling and system design is presented for our Cyberphysical system which consisted of a modified BTwin e-bike, Cycle Analyst sensors, the cyclist themselves, a Bluetooth connected smartphone and our algorithms. Control algorithms to regulate the proportion of power the cyclist provided as a proxy for their ventilation rate were proposed and validated in a basic way, which were later proven significantly further in Further Work (see IEEE Transactions on Intelligent Transportation Systems paper: https://ieeexplore.ieee.org/abstract/document/8357977). The basic idea was to provide more electrical assistance to cyclists in areas of high air pollution to reduce the cyclist ventilation rate and thereby the amount of air pollutants inhaled. This presents an interesting control challenge due to the human-in-the-loop characteristics and the potential for impactful real life applications. A background literature review is provided on energy as it relates to cycling and some other applications are also discussed. A link to a video which demonstrates the system is provided, and also to a blog published by IBM Research about the system.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源