Artificial Neural Network Based Fault Prediction and Detection in Grid Computing

P. Prakash, K. Kumar
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Abstract

Reliability is a very well-known matter in now day's Grid systems and it is anticipated to become still more difficult in the next generation systems. Because the ongoing fault tolerance approaches like checkpoint and replication techniques are examined to be ineffectual due to performance and suitability issues, improved fault tolerance approaches are today under inspection. The fault tolerance used taking place fault prediction and detection in organize to minimize collision of failure on system and detect faulty and non-faulty resources. In this research, we traverse the tradition of artificial neural network for fault prediction and fault detection improvement in a fault tolerance context. Outcomes display the prediction and detection performance improvement of the prior thresholds trigger and classifying approach.
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网格计算中基于人工神经网络的故障预测与检测
可靠性是当今电网系统中一个众所周知的问题,预计在下一代系统中将变得更加困难。由于检查点和复制技术等正在进行的容错方法由于性能和适用性问题而被认为是无效的,因此改进的容错方法目前正在研究之中。容错是指在组织中进行故障预测和检测,以最大限度地减少故障对系统的碰撞,检测故障资源和非故障资源。在本研究中,我们将传统的人工神经网络用于故障预测,并在容错环境中改进故障检测。结果显示了先验阈值触发和分类方法的预测和检测性能改进。
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