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A methodological approach ball bearing damage prediction under fretting wear conditions.

机译:磨损条件下的一种方法论方法滚珠轴承损坏预测。

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The industrial demand for higher reliability of various components is one of the main flywheels of the research and development in the field of modelling of complex phenomena. There is a need to characterize the wear behaviour of the interface under fretting wear conditions in ball bearing application. Pre-treated experimental data was used to determine the wear of contacting surfaces as a criterion of damage that can be useful for a life-time prediction. The benefit of acquired knowledge can be crucial for the industrial expert systems and the scientific feature extraction that cannot be underestimated. Wear is a very complex and partially-formalized phenomenon involving numerous parameters and damage mechanisms. To correlate the working conditions with the state of contacting bodies and to define damage mechanisms different techniques are used. The use of our approaches in the prediction of the response of the system to different test conditions is validated. Two physical models, based on Archard and Energetic approach, are compared with Artificial Neural Network model and Genetic Programming. Decisive factors for a comparison of used AI techniques are their: performance, generalization capabilities, complexity and time-consumption. Optimization of the structure of the model is done to reach high robustness of field applications. Finally, application of the wear level information to forecast a probability of damage is presented.
机译:各种组成部分更高可靠性的工业需求是复杂现象建模领域的研发的主要飞轮之一。需要表征滚珠轴承应用中的磨损条件下界面的磨损行为。预处理的实验数据用于确定接触表面的磨损作为对寿命预测有用的损坏的标准。获得知识的好处可能对工业专家系统和无法低估的科学特征提取至关重要。佩戴是一种非常复杂和部分正式的现象,涉及许多参数和损坏机制。为了将工作条件与接触体的状态相关联,并使用损坏机制使用不同的技术。验证了我们在预测系统对不同测试条件的响应中的使用方法。基于Archard和精力充沛的方法的两个物理模型与人工神经网络模型和遗传编程进行了比较。用于比较使用的AI技术的决定性因素是它们的:性能,泛化能力,复杂性和时间消耗。优化模型的结构,以达到现场应用的高稳健性。最后,介绍了磨损水平信息来预测损坏的概率。

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