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Optimal calibration of variable biofuel blend dual-injection engines using sparse Bayesian extreme learning machine and metaheuristic optimization

机译:基于稀疏贝叶斯极限学习机和元启发式优化的可变生物燃料混合双喷发动机的最优标定

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摘要

Although many combinations of biofuel blends are available in the market, it is more beneficial to vary the ratio of biofuel blends at different engine operating conditions for optimal engine performance. Dual-injection engines have the potential to implement such function. However, while optimal engine calibration is critical for achieving high performance, the use of two injection systems, together with other modern engine technologies, leads the calibration of the dual-injection engines to a very complicated task. Traditional trial-and-error-based calibration approach can no longer be adopted as it would be time-, fuel- and labor-consuming. Therefore, a new and fast calibration method based on sparse Bayesian extreme learning machine (SBELM) and metaheuristic optimization is proposed to optimize the dual-injection engines operating with biofuels. A dual-injection spark-ignition engine fueled with ethanol and gasoline is employed for demonstration purpose. The engine response for various parameters is firstly acquired, and an engine model is then constructed using SBELM. With the engine model, the optimal engine settings are determined based on recently proposed metaheuristic optimization methods. Experimental results validate the optimal settings obtained with the proposed methodology, indicating that the use of machine learning and metaheuristic optimization for dual-injection engine calibration is effective and promising. (C) 2017 Elsevier Ltd. All rights reserved.
机译:尽管市场上有多种生物燃料混合物的组合,但在不同的发动机工况下改变生物燃料混合物的比例以获得最佳的发动机性能更为有益。双喷引擎具有实现这种功能的潜力。但是,尽管最佳发动机校准对于实现高性能至关重要,但使用两个喷射系统以及其他现代发动机技术会使双重喷射发动机的校准工作非常复杂。传统的基于试错法的校准方法将不再被采用,因为它将浪费时间,燃料和劳动力。因此,提出了一种基于稀疏贝叶斯极限学习机(SBELM)和元启发式优化的新的快速标定方法,以优化使用生物燃料的双喷发动机。为了演示,采用了以乙醇和汽油为燃料的双喷火花点火发动机。首先获取各种参数的发动机响应,然后使用SBELM构建发动机模型。利用发动机模型,基于最近提出的元启发式优化方法确定最佳发动机设置。实验结果验证了所提出方法的最佳设置,表明使用机器学习和元启发式优化进行双喷发动机标定是有效且有前途的。 (C)2017 Elsevier Ltd.保留所有权利。

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