DATA ANALYSIS AND PROCESSING FOR THE SYSTEM RELIABILITY NEURAL NETWORK BASED ON EXPERT JUDGMENT

Hoang Nguyen
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Abstract

The article presents a data analysis and processing for tuning artificial neural network (ANN) of the anthrop technical system reliability, based on the opinions of experts. In general, the system reliability parameters are functions of operands – physical values – like time to failure, time between failures, duration times of specific reliability or operational states, number of failures in a time interval (event frequencies). These values are easier to be determined by an expert – operator with long year experience – than probabilistic model parameters. It is suggested that they be used in elicitation, for example linguistic estimates of the shares of reliability system elements in the system failure frequency. The numerical – linguistic elicitation of these opinions was carried out, which turned out to be uncorrelated and not suitable for tuning the network. Data processing method was used with the appropriate adopted analytic hierarchy process (AHP) geometric scale and matrix approximation method evaluations (logarithmic least squares method). Correlation analyses were performed for received input and output data of network and error of data processing method was determined. The results are shown in the example of elicitation and data correlation analyses for tuning the reliability neural network of the ship propulsion system.
基于专家判断的系统可靠性神经网络数据分析与处理
本文在专家意见的基础上,对人类技术系统可靠性的人工神经网络(ANN)进行数据分析和处理。一般来说,系统可靠性参数是操作数(物理值)的函数,如故障间隔时间、故障间隔时间、特定可靠性或操作状态的持续时间、时间间隔内的故障次数(事件频率)。与概率模型参数相比,这些值更容易由具有多年经验的专家操作员确定。建议将它们用于启发,例如对系统故障频率中可靠性系统要素份额的语言估计。对这些意见进行了数值语言推导,结果表明这些意见是不相关的,不适合对网络进行调整。数据处理方法采用适当的层次分析法(AHP)、几何尺度法和矩阵近似法(对数最小二乘法)进行评价。对接收到的网络输入输出数据进行相关性分析,确定了数据处理方法的误差。最后以船舶推进系统可靠性神经网络整定为例进行了仿真和数据关联分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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