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Intelligent prediction of engine failure through computational of wear

机译:通过磨损计算发动机故障的智能预测

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The present study is focused on studying the morphological characteristics of wear particles. The raw image captured from the CCD microscope is processed through a series of image processing techniques to obtain the final image. Fractal computation is performed to estimate the surface roughness of the particle boundary, which indicates the wear rate failure. An intelligence-based ANN model has been created using feed-forward backpropagation to predict outputs such as Form Factor, Convexity, Aspect Ratio, Solidity, and Roundness with respect to Running Hour, Engine RPM and Engine Oil temperature. The propound ANN model is seen as equipped to map the input-output patterns of failure under the engine parameter platform. Statistical analysis of combined error and correlation factor provides a powerful mapping tool for failure prediction. Subsequent ANN models have been seen as practical tools for predicting the performance of wear properties with the nominal inspection.
机译:本研究专注于研究磨损颗粒的形态特征。 从CCD显微镜捕获的原始图像通过一系列图像处理技术处理以获得最终图像。 进行分形计算以估计粒子边界的表面粗糙度,这表示磨损率故障。 已经使用前馈逆产产生了基于智能的ANN模型,以预测运行小时,发动机RPM和发动机油温的形状因子,凸起,纵横比,稳固度和圆度等输出。 Provound Ann模型被视为配备的,以在发动机参数平台下映射失效的输入输出模式。 组合误差和相关因子的统计分析为故障预测提供了强大的映射工具。 随后的Ann模型被视为用于预测磨损性能与标称检查的实用工具。

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