高性能能源系统的蠕变断裂预测

S. Chatzidakis, M. Alamaniotis, L. Tsoukalas
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引用次数: 2

摘要

利用人工神经网络的非线性能力来模拟蠕变破裂和破坏机制的动力学,以实现高性能能源系统的失效预测。该方法预测蠕变机制导致的断裂时间,包括库建设、训练过程所需的实验数据和测量、运行过程中收集的测量数据和人工神经网络。该方法在为此目的收集的实验数据上进行了演示,用于两种经常应用的高温/高负荷材料,即91级钢和哈氏合金XR。结果表明,该方法能够应用人工神经网络预测断裂时间,提高高性能系统的安全性和效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Creep rupture forecasting for high performance energy systems
The non-linear capabilities of artificial neural networks to model the dynamics of creep rupture and failure mechanisms are exploited to achieve failure forecasting in high performance energy systems. The proposed approach forecasts the time to rupture due to creep mechanism and consists of the library construction, the experimental data and measurements necessary for the training process, the measurements gathered during operation and the artificial neural network. The methodology is demonstrated on experimental data gathered for this purpose, for two frequently applied high-temperature/high-load materials, namely Grade 91 steel and Hastelloy XR. The results obtained demonstrate the capability of the proposed methodology to apply artificial neural networks to forecast the time to rupture and improve safety and efficiency of high performance systems.
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