首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers, Part D. Journal of Automobile Engineering >Enhanced intelligent proportional-integral-like fuzzy knowledge-based controller using chaos-enhanced accelerated particle swarm optimization algorithm for transient calibration of air-fuel ratio control system
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Enhanced intelligent proportional-integral-like fuzzy knowledge-based controller using chaos-enhanced accelerated particle swarm optimization algorithm for transient calibration of air-fuel ratio control system

机译:使用混沌增强的加速粒子群优化算法增强了基于智能比例积分模糊知识的控制器,用于空燃比控制系统的瞬态校准

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摘要

The self-adaptive and highly robust proportional-integral-like fuzzy knowledge-based controller has been developed to regulate air-fuel ratio for gasoline direct injection engines, in order to improve the transient response behaviour and reduce the effort to be spent on calibration of parameter settings. However, even though the proportional-integral-like fuzzy knowledge-based controller can automatically correct the initially calibrated proportional and integral parameters, a more appropriate selection of controller parameter settings will lead to better transient performance. Thus, this article proposes an enhanced intelligent proportional-integral-like fuzzy knowledge-based controller using chaos-enhanced accelerated particle swarm optimization algorithm to automatically define the most optimal parameter settings. An alternative time-domain objective function is applied for the transient calibration programme without the need for prior selection of the search-domain. The real-time transient performance of the enhanced controller is investigated on the air-fuel ratio control system of a gasoline direct injection engine. The experimental results show that the enhanced proportional-integral-like fuzzy knowledge-based controller based on chaos-enhanced accelerated particle swarm optimization is able to damp out the oscillations with less settling time (up to 75% reduction) and less integral of absolute error (up to 64.07% reduction) compared with the conventional self-adaptive proportional-integral-like fuzzy knowledge-based controller. Repeatability tests indicate that the chaos-enhanced accelerated particle swarm optimization algorithm-based proportional-integral-like fuzzy knowledge-based controller is also able to reduce the mean value of objective function by up to 10.61% reduction and the standard deviation of the objective function by up to 28.29% reduction, compared with the conventional accelerated particle swarm optimization algorithm-based proportional-integral-like fuzzy knowledge-based controller.
机译:已经开发了自适应和高强度比例积分的模糊知识的控制器,以调节汽油直喷发动机的空燃比,以改善瞬态响应行为,并减少校准的努力参数设置。 However, even though the proportional-integral-like fuzzy knowledge-based controller can automatically correct the initially calibrated proportional and integral parameters, a more appropriate selection of controller parameter settings will lead to better transient performance.因此,本文提出了一种使用混沌增强的加速粒子群优化优化算法的增强型智能比例积分模糊知识控制器,以自动定义最佳参数设置。替代的时间域目标函数用于瞬态校准程序,而无需以前选择搜索域。对汽油直喷式发动机的空燃比控制系统研究了增强控制器的实时瞬态性能。实验结果表明,基于混沌增强的加速粒子群优化的基于增强的比例积分模糊知识控制器能够在较小的稳定时间(减少高达75%)和绝对误差的整体较少的振荡中抑制振荡(减少高达64.07%)与传统的自适应比例 - 积分模糊知识控制器相比。重复性测试表明混沌增强的加速粒子群优化算法的比例积分模糊知识控制器也能够将客观函数的平均值降低高达10.61%和目标函数的标准偏差减少了高达28.29%,与传统的加速粒子群优化算法的比例积分模糊知识控制器相比。

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