Shahid Syed Maaz, Ko Sunghoon, Kwon Sungoh
School of Electrical Engineering, University of Ulsan, Ulsan 44610, Korea.
Hyundai Heavy Industries, Ulsan 44032, Korea.
Sensors (Basel). 2019 Jul 18;19(14):3172. doi: 10.3390/s19143172.
An engine control system is responsible for controlling the combustion parameters of an internal combustion engine to increase the efficiency of the engine. An optimized parameter setting of an engine control system is highly influenced by the engine load. Therefore, with a change in engine load, the parameter settings need to be updated for higher engine efficiency. Hence, to optimize parameter settings during operation, engine load information is necessary. In this paper, we propose a real-time engine load classification from sensed signals. For the classification, an artificial neural network is used and trained using processed, real, measured data. To that end, a magnetic pickup sensor extracts the rotational speed of the prime mover of a four-stroke V12 marine diesel engine. The measured signal is then converted into a crank angle degree (CAD) signal that shows the behavior of the combustion strokes of firing cylinders at a particular engine load. The CAD signals are considered an input feature to the designed network for classification of engine loads. For verification, we considered five classes of engine load, and the trained network classifies these classes with an accuracy of 99.4%.
发动机控制系统负责控制内燃机的燃烧参数,以提高发动机的效率。发动机控制系统的优化参数设置受发动机负载的影响很大。因此,随着发动机负载的变化,需要更新参数设置以实现更高的发动机效率。所以,为了在运行期间优化参数设置,发动机负载信息是必要的。在本文中,我们提出了一种基于传感信号的实时发动机负载分类方法。对于分类,使用人工神经网络,并使用经过处理的真实测量数据进行训练。为此,一个磁电式传感器提取一台四冲程V12船用柴油发动机原动机的转速。然后,将测量信号转换为曲柄角度(CAD)信号,该信号显示了在特定发动机负载下点火气缸的燃烧冲程行为。CAD信号被视为设计网络用于发动机负载分类的输入特征。为了进行验证,我们考虑了五类发动机负载,经过训练的网络对这些类别进行分类的准确率为99.4%。