Remote Computing Cluster for the Optimization of Preventive Maintenance Strategies: Models and Algorithms

A. Kirillov, S. Kirillov, Vitaliy Iakimkin, M. Pecht
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引用次数: 1

Abstract

The chapter describes a mathematical model of the early prognosis of the state of high-complexity mechanisms. Based on the model, systems of recognizing automata are constructed, which are a set of interacting modified Turing machines. The purposes of the recognizing automata system are to calculate the predictors of the sensor signals (such as vibration sensors) and predict the evolution of hidden predictors of dysfunction in the work of the mechanism, leading in the future to the development of faults of mechanism. Hidden predictors are determined from the analysis of the internal states of the recognizing automata obtained from wavelet decompositions of time series of sensor signals. The results obtained are the basis for optimizing the maintenance strategies. Such strategies are chosen from the classes of solutions to management problems. Models and algorithms for self-maintenance and self-recovery systems are discussed.
基于远程计算集群的预防性维护策略优化:模型与算法
本章描述了高复杂性机制状态早期预测的数学模型。在此基础上,构造了识别自动机系统,即一组相互作用的改进图灵机。识别自动机系统的目的是计算传感器信号(如振动传感器)的预测因子,并预测机构工作中隐藏的功能障碍预测因子的演变,从而导致未来机构故障的发展。通过对传感器信号时间序列进行小波分解得到的识别自动机的内部状态进行分析,确定了隐藏的预测因子。所得结果为优化维修策略提供了依据。这些策略是从管理问题的解决方案中选择的。讨论了自维护和自恢复系统的模型和算法。
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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