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Potential of Machine Learning Methods for Robust Performance and Efficient Engine Control Development

机译:机器学习方法稳健性能和高效发动机控制开发的潜力

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Increasingly strict legislation for greenhouse gas and real-world pollutant emissions makes it necessary to develop fuel-efficient and robust control solutions for future automotive engines. Today’s engine control development relies on traditional map-based and model-based control approaches. Due to growing system complexity and real-world requirements, these expert-intensive and time-consuming approaches are facing a turning point, which will lead to unacceptable development time and costs in the near future. Artificial Intelligence (AI) is a disruptive technology, which has interesting features that can tackle these challenges. AI-based methods have received growing interest due to the increasing availability of data and the success of AI applications for complex problems. This paper presents an overview of the state-of-the-art in Machine Learning (ML)-based methods that are applied for engine control development with focus on the time-consuming calibration process. The overview here shows that the vast majority of studies concentrates on regression modelling to model complex processes, to reduce the number of model parameters and to develop real-time, ECU implementable models. The identified promising directions for future ML-based engine control research include the application of reinforcement learning methods to on-line optimize engine performance and guarantee robust performance and unsupervised learning methods for data quality monitoring.
机译:温室气体和现实世界污染物排放越来越严格的立法使得有必要为未来的汽车发动机开发燃油效率和强大的控制解决方案。今天的发动机控制开发依赖于基于传统地图和基于模型的控制方法。由于系统复杂性和现实世界的要求不断增长,这些专家密集型和耗时的方法都面临着转折点,这将导致不可接受的开发时间和不久的成本。人工智能(AI)是一种破坏性技术,具有有趣的功能,可以解决这些挑战。基于AI的方法由于数据的可用性和AI应用程序的成功而受到复杂问题的成功,因此获得了越来越感兴趣。本文概述了机器学习(ML)的最先进的方法,这些方法应用于发动机控制开发,重点是耗时的校准过程。这里概述显示绝大多数研究专注于回归建模到模型复杂过程,以减少模型参数的数量并开发实时ECU可实现的模型。所确定的未来ML的发动机控制研究的有希望的方向包括在线优化发动机性能的加固学习方法的应用,并保证数据质量监测的鲁棒性能和无监督的学习方法。

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