State-of-the-art methods for quantifying wear in cylinder liners of large internal combustion engines require disassembly and cutting of the liner. This is followed by laboratory-based high-resolution microscopic surface depth measurement that quantitatively evaluates wear based on bearing load curves (Abbott-Firestone curves). Such methods are destructive, time-consuming and costly. The goal of the research presented is to develop nondestructive yet reliable methods for quantifying the surface topography. A novel machine learning framework is proposed that allows prediction of the bearing load curves from RGB images of the liner surface that can be collected with a handheld microscope. A joint deep learning approach involving two neural network modules optimizes the prediction quality of surface roughness parameters as well and is trained using a custom-built database containing 422 aligned depth profile and reflection image pairs of liner surfaces. The observed success suggests its great potential for on-site wear assessment of engines during service.
翻译:在大型内燃发动机的气瓶衬里磨损的量化最新方法需要拆卸和切割衬里。接着是实验室的高分辨率显微表层测量,根据承载的负载曲线(Abbott-Firrestone曲线)对磨损进行定量评估。这种方法具有破坏性、耗时和成本高昂。研究的目的是开发非破坏性但可靠的表层地形量化方法。提出了新的机器学习框架,以便预测用手持显微镜收集的衬里表面RGB图像的承载负曲线。由两个神经网络模块组成的联合深层学习方法,优化地表粗糙参数的预测质量,并使用由422个对齐的深度剖面和衬里表面反射成像组组成的定制数据库进行培训。观察到的成功表明,它极有可能在服务期间对引擎进行现场磨损评估。