SI发动机喷油控制的智能控制策略(以CNG发动机为例)

F. Barghi, A. Safavi
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引用次数: 9

摘要

本研究的独特之处在于使用递归神经模糊网络(RNFN)结构作为火花点火(SI)发动机燃油喷射控制的智能方法。由于进气歧管空气-燃料流动动力学是严重非线性和多变量的,因此控制问题非常敏感。为了合理处理这一复杂的控制问题,在一辆实际的压缩天然气(CNG)燃料汽车上进行了精确的实验测试,并通过车辆在瞬态状态下运行,收集了过程输入输出数据。利用过程知识和过程输入输出数据,利用RNFN估计器建立了CNG发动机空燃比(AFR)的非线性动力学模型。然后基于AFR的非线性逆动力学设计了预测RNFN控制器。该控制策略的优点是控制动作可以解析计算,避免了传统燃油喷射控制策略中昂贵且耗时的校准工作。结果表明,控制器的响应与电控单元(ECU)产生的实测燃油喷射指令相匹配。这对控制器的有效性进行了评价和验证。此外,将所提出的智能模型置于闭环中,与实际燃油喷射系统和ECU在实时工况下的性能进行了比较,结果具有相似性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An intelligent control policy for fuel injection control of SI Engines (case study: CNG engine)
This research is distinctive in terms of using a Recurrent Neuro-Fuzzy Network (RNFN) structure as an intelligent approach for fuel injection control of Spark Ignition (SI) Engines. This control problem is very sensitive because the dynamics of intake manifold air-fuel flow is severely nonlinear and multivariable. To reasonably handle such a complicated control problem, a precise experimental test has been done on a real Compressed Natural Gas (CNG) fuelled vehicle and the process input output data have been collected by running the vehicle in transient conditions. Using both process knowledge and process input output data, the nonlinear dynamics of air to fuel ratio (AFR) of CNG engine has been modeled by a RNFN estimator. Then a predictive RNFN controller has been designed based on nonlinear inverse dynamics of AFR. This control strategy has the advantage that control actions can be calculated analytically avoiding the costly and time-consuming calibration efforts required in conventional fuel injection control strategies. The results show that the response of controller is match to the measured fuel injection commands produced by the electronic control unit (ECU). This evaluated and validated the efficiency of controller. Furthermore, place the controller in a closed loop with the proposed intelligent model shows a similarity in results, in comparison with the performance of real fuel injection system and ECU in the real-time conditions.
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