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Multiplexed extremum seeking for calibration of spark timing in a CNG-fuelled engine

机译:寻求CNG燃料发动机火花正时校准的多重极值

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摘要

The compositional variability of many alternative fuels, coupled with fuel agnostic behaviour like engine ageing and vehicle-to-vehicle differences, leads to the desire for some form of online calibration in order to optimise fuel efficiency. This has led to the incorporation of extremum seeking techniques within the field in order to continually fine tune engine performance. These typically address steady state engine performance and are characterised by slow convergence times, hindering their deployment in typical dynamic driving scenarios. To address this potential shortcoming, in this paper a novel multiplexed extremum seeking scheme is proposed to track a time-varying extremum caused by a measurable disturbance. It consists of multiple extremum seeking agents that are individually activated based on the disturbance. The multiplexed approach accommodates the rigorous practical stability results of the “traditional” extremum seeking approaches, but offers improved results in dynamic scenarios. The proposed approach is implemented both in simulation and experimentally on a compressed natural gas (CNG) engine operating over a drive cycle. The experimental results show that under proper tuning, the proposed controller can improve the engine fuel efficiency for unknown natural gas compositions without requiring gas composition sensing at little additional calibration effort.
机译:许多替代燃料的成分变异性,再加上燃料不可知的行为,例如发动机老化和车辆与车辆之间的差异,导致人们需要某种形式的在线校准,以优化燃料效率。这导致极值搜索技术在该领域内的应用,以不断微调引擎性能。这些通常解决稳态引擎性能的问题,并且收敛速度较慢,从而阻碍了它们在典型动态驾驶场景中的部署。为了解决这个潜在的缺点,在本文中提出了一种新颖的多路极值搜寻方案,以跟踪由可测量的扰动引起的时变极值。它由多个极值搜寻代理组成,这些代理根据干扰被单独激活。复用方法适应了“传统”极值搜索方法的严格实用稳定性结果,但在动态场景中提供了改进的结果。所提出的方法可以在模拟和实验中在驱动周期内运行的压缩天然气(CNG)发动机上实现。实验结果表明,在适当的调节下,所提出的控制器可以提高未知燃油成分的发动机燃油效率,而无需花费很少的额外校准工作即可检测到气体成分。

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