首页> 外文会议>Proceedings of the 2007 International Conference on Machine Learning and Cybernetics >TURBO-GENERATOR UNIT VIBRATION FAULT DIAGNOSIS RESEARCH BASED ON SPACE OPTIMIZATION ALGORITHM OF BAYESIAN NETWORKS
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TURBO-GENERATOR UNIT VIBRATION FAULT DIAGNOSIS RESEARCH BASED ON SPACE OPTIMIZATION ALGORITHM OF BAYESIAN NETWORKS

机译:基于贝叶斯网络空间优化算法的汽轮发电机组振动故障诊断研究。

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Recursive conditioning, RC, is any-space algorithm for exact inference in Bayesian networks because any number of results may be cached.But given a limited amount of memory, which results should be cached in order to minimize the running time of the algorithm becomes a key question.Aiming at this problem, depth-first branch-and-bound method is proposed to search all the potential goal states, average running time under each state is computed, then some optimal time-space tradeoff curves were made.Through the curves, an optimal discrete cache scheme can be found, with this scheme, significant amounts of memory can be removed from the algorithm's cache with only a minimal cost in time.Applying this algorithm in turbo-generator unit fault diagnosis, based on analysis of vibration fault of the turbine machinery, the fault sets, manifestation sets, relation table for fault and manifestations to turbine fault were given, Bayesian networks for fault diagnosis was made, on the basis of which, a fault in turbine was identified.The results show that with the space optimization algorithm of Bayesian networks, the fault can be accurately diagnosed, and at the same time, and the storage capacity is reduced.It is estimated that the optimized strategy may be further applied in fault diagnosis.
机译:递归条件RC是贝叶斯网络中用于精确推理的任何空间算法,因为可以缓存任意数量的结果,但是在有限的内存量下,应将其缓存以最大程度地减少算法的运行时间。针对此问题,提出了深度优先分支定界法搜索所有潜在目标状态,计算每个状态下的平均运行时间,然后绘制了一些最优的时空折衷曲线。可以找到最佳的离散缓存方案,利用该方案,可以以最小的时间成本从算法的缓存中删除大量内存。将该算法应用于基于振动故障分析的汽轮发电机组故障诊断中给出了涡轮机械的故障集,表现集,故障关系表以及涡轮故障的表现形式,并建立了贝叶斯网络进行故障诊断,并在此基础上,建立了故障诊断的贝叶斯网络。结果表明,利用贝叶斯网络空间优化算法,可以准确诊断故障,同时减少存储量,估计可以进一步优化策略。在故障诊断中的应用。

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