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Adaptive neural network based fuzzy control for a smart idle stop and go vehicle control system

机译:智能怠速行驶控制系统的自适应神经网络模糊控制

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摘要

Idle stop and go (ISG) is a low cost but very effective technology to improve fuel efficiency and reduce engine emissions by preventing unnecessary engine idling. In this study, a new method is developed to improve the performance of conventional ISG by monitoring traffic conditions. To estimate frontal traffic conditions, an ultra-sonic ranging sensor is employed. Several fuzzy logic algorithms are developed to determine whether the engine idling is on or off. The algorithms are evaluated experimentally using various data gathered in real areas with traffic congestion. The evaluation results show that the method developed can reduce the chance of false application of ISG significantly while improving fuel efficiency up to 15%.
机译:怠速停机(ISG)是一种低成本但非常有效的技术,可通过防止不必要的发动机空转来提高燃油效率并减少发动机排放。在这项研究中,开发了一种通过监视交通状况来改善常规ISG性能的新方法。为了估计正面交通状况,采用了超声波测距传感器。开发了几种模糊逻辑算法来确定发动机空转是打开还是关闭。使用交通拥堵的实际区域中收集的各种数据对算法进行实验评估。评估结果表明,所开发的方法可以显着减少ISG错误应用的机会,同时将燃油效率提高多达15%。

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