基于BP神经网络的高温硬度变化分析与预测

Chen Shilin, Shi Wei
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引用次数: 0

摘要

随着科学技术的发展,越来越多的设备面临着在极端温度下使用的问题。随着温度的升高,材料的性能经常发生变化,导致材料在高温下处于失效状态。然而,现有的材料测试方法,如硬度,主要是基于传统的常温测试。虽然近年来发展了高温硬度测试,但常见的培养箱上限温度在1200℃左右,远低于大多数材料的变性温度。因此,本文分析了高温下测得的硬度值随温度变化过程的结果,提出了基于BP神经网络的高温硬度预测概念。根据测得的高温硬度数据,预测硬度值随温度的持续升高而发生的后续变化,寻找硬度失效的温度点。通过迭代学习,硬度变化预测模型计算结果的拟合程度接近于1,可以很好地预测结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis and Prediction of Hardness Change at High Temperature Based on BP Neural Network
With the development of science and technology, more and more equipment are facing the problem of service under extreme temperature. With the increase of temperature, the properties of materials often change, which leads to the failure state of materials at high temperature. However, the existing material testing methods, such as hardness, are mainly based on the traditional normal temperature testing. Although high-temperature hardness testing has been developed in recent years, the common upper limit temperature of the incubator is about 1200 °C, which is far lower than the denaturation temperature of most materials. Therefore, this paper analyzes the results of the change process of the hardness value measured at high temperature with temperature, and puts forward a high-temperature hardness prediction concept based on BP neural network. Based on the measured high-temperature hardness data, it predicts the subsequent change of the hardness value with the continuous increase of temperature, and looks for the temperature point of hardness failure. Through iterative learning, the fitting degree of the calculation result of the hardness change prediction model is close to one, which can well predict the result.
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