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Multi-Sensor Information Fusion for Optimizing Electric Bicycle Routes Using a Swarm Intelligence Algorithm

机译:基于群体智能算法的电动自行车路线多传感器信息融合

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摘要

The use of electric bikes (e-bikes) has grown in popularity, especially in large cities where overcrowding and traffic congestion are common. This paper proposes an intelligent engine management system for e-bikes which uses the information collected from sensors to optimize battery energy and time. The intelligent engine management system consists of a built-in network of sensors in the e-bike, which is used for multi-sensor data fusion; the collected data is analysed and fused and on the basis of this information the system can provide the user with optimal and personalized assistance. The user is given recommendations related to battery consumption, sensors, and other parameters associated with the route travelled, such as duration, speed, or variation in altitude. To provide a user with these recommendations, artificial neural networks are used to estimate speed and consumption for each of the segments of a route. These estimates are incorporated into evolutionary algorithms in order to make the optimizations. A comparative analysis of the results obtained has been conducted for when routes were travelled with and without the optimization system. From the experiments, it is evident that the use of an engine management system results in significant energy and time savings. Moreover, user satisfaction increases as the level of assistance adapts to user behavior and the characteristics of the route.
机译:电动自行车(电动自行车)的使用已日益普及,尤其是在人满为患和交通拥堵很普遍的大城市中。本文提出了一种用于电动自行车的智能发动机管理系统,该系统利用从传感器收集的信息来优化电池能量和时间。智能引擎管理系统由电动自行车中内置的传感器网络组成,用于多传感器数据融合。对收集的数据进行分析和融合,并基于此信息,系统可以为用户提供最佳的个性化帮助。向用户提供有关电池消耗,传感器以及与所行驶路线相关的其他参数(例如持续时间,速度或海拔高度变化)的建议。为了向用户提供这些建议,人工神经网络用于估计路线的每个路段的速度和消耗。将这些估计值合并到进化算法中以进行优化。对使用和不使用优化系统的路线行驶时间进行了比较分析。从实验中可以明显看出,使用发动机管理系统可以节省大量的能源和时间。此外,随着协助水平适应用户行为和路线特征,用户满意度也会提高。

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