Control-Oriented Model-Based Burn Duration and Ignition Timing Prediction With Recursive-Least-Square Adaptation for Closed-Loop Combustion Phasing Control of a Spark Ignition Engine

IF 1 Q4 AUTOMATION & CONTROL SYSTEMS
Xin Wang, Amir Khameneian, P. Dice, Bo Chen, M. Shahbakhti, J. Naber, Chad Archer, Qiuping Qu, C. Glugla, G. Huberts
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引用次数: 9

Abstract

In homogeneous spark-ignition (SI) engines, ignition timing is used to control the combustion phasing (crank angle of fifty percent of fuel burned, CA50), which affects fuel economy, engine torque output, and emissions. This paper presents a model-based adaptive ignition timing prediction strategy using a control-oriented dynamic combustion model for real-time closed-loop combustion phasing control. The combustion model predicts the burn duration from ignition timing to CA50 (ΔθIGN-CA50) at Intake Valve Closing (IVC) for the upcoming cycle based on current engine operating conditions, including variable valve timing, predicted ignition timing, air-fuel ratio, engine speed, and engine load. To maintain the accuracy of combustion model and ignition timing prediction during the engine lifetime, a Recursive-Least-Square (RLS) with Variable Forgetting Factor (VFF) based adaptation algorithm is developed to handle both short term (operating-point-dependent) and long term (engine aging) model errors. Due to short term model errors and stochastic characteristics of cycle-to-cycle combustion variations, large model errors may occur during severe transient operating conditions (tip-in/tip-out), which can result in wrong adjustments and excessive adaptations. Since on-road SI engines are always operating in transient conditions, the ‘Heavy Transient Detection’ algorithm is developed to avoid fault adaptation and assist the adaptation algorithm to be stable. On-road vehicle testing data is used to evaluate the performance of the entire model-based adaptive burn duration and ignition timing prediction algorithm. With only 64 calibration points, a mean ignition timing prediction error of 0.2 Crank Angle Degree (CAD) and average iteration number of 2 shows the capability of adaptive ignition timing prediction, a significant reduction of calibration efforts, and potential of real-time application of the developed adaptive ignition timing prediction algorithm.
基于控制导向模型的火花点火发动机燃烧持续时间和点火正时预测递归最小二乘自适应闭环燃烧相位控制
在均匀火花点火(SI)发动机中,点火正时用于控制燃烧相位(燃烧燃料的50%的曲柄角,CA50),它影响燃油经济性,发动机扭矩输出和排放。本文提出了一种基于模型的自适应点火时间预测策略,该策略采用面向控制的动态燃烧模型,用于实时闭环燃烧相位控制。燃烧模型根据当前发动机运行条件,包括可变气门正时、预测点火正时、空燃比、发动机转速和发动机负载,预测下一个循环从点火正时到进气气门关闭(IVC) CA50的燃烧持续时间(ΔθIGN-CA50)。为了在发动机寿命期间保持燃烧模型和点火正时预测的准确性,提出了一种基于可变遗忘因子(VFF)的递归最小二乘(RLS)自适应算法来处理短期(依赖于工况点)和长期(发动机老化)模型误差。由于短期模型误差和循环间燃烧变化的随机特性,在严重的瞬态操作条件下(倾入/倾出)可能会出现较大的模型误差,从而导致错误的调整和过度的适应。针对公路SI发动机一直处于暂态状态,为了避免故障自适应,并使自适应算法保持稳定,提出了“重暂态检测”算法。利用道路车辆试验数据对整个基于模型的自适应燃烧持续时间和点火正时预测算法的性能进行了评价。在64个标定点的情况下,平均点火正时预测误差为0.2曲轴角度(CAD),平均迭代次数为2次,表明该算法具有自适应点火正时预测的能力,大大减少了标定工作量,具有实时应用的潜力。
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来源期刊
Mechatronic Systems and Control
Mechatronic Systems and Control AUTOMATION & CONTROL SYSTEMS-
CiteScore
1.40
自引率
66.70%
发文量
27
期刊介绍: This international journal publishes both theoretical and application-oriented papers on various aspects of mechatronic systems, modelling, design, conventional and intelligent control, and intelligent systems. Application areas of mechatronics may include robotics, transportation, energy systems, manufacturing, sensors, actuators, and automation. Techniques of artificial intelligence may include soft computing (fuzzy logic, neural networks, genetic algorithms/evolutionary computing, probabilistic methods, etc.). Techniques may cover frequency and time domains, linear and nonlinear systems, and deterministic and stochastic processes. Hybrid techniques of mechatronics that combine conventional and intelligent methods are also included. First published in 1972, this journal originated with an emphasis on conventional control systems and computer-based applications. Subsequently, with rapid advances in the field and in view of the widespread interest and application of soft computing in control systems, this latter aspect was integrated into the journal. Now the area of mechatronics is included as the main focus. A unique feature of the journal is its pioneering role in bridging the gap between conventional systems and intelligent systems, with an equal emphasis on theory and practical applications, including system modelling, design and instrumentation. It appears four times per year.
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