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LONG SHORT-TERM MEMORY ANOMALY DETECTION FOR MULTISENSOR EQUIPMENT MONITORING

机译:多传感器设备监控的长期记忆异常

摘要

Methods, systems, and non-transitory computer readable medium are provided for long short-term memory (LSTM) anomaly detection for multi-sensor equipment monitoring. A method includes training a LSTM recurrent neural network (RNN) model for semiconductor processing fault detection. The training includes generating training data for the LSTM RNN model and providing the training data to train the LSTM RNN model on first training input and first target output to generate a trained LSTM RNN model for the semiconductor processing fault detection. The training data includes the first training input and the first target output based on normal runs of manufacturing processes of semiconductor processing equipment. Another method includes providing input based on runs of manufacturing processes of semiconductor processing equipment to a trained LSTM RNN model; obtaining one or more outputs from the trained LSTM RNN model; and using the one or more outputs for semiconductor processing fault detection.
机译:提供了用于多传感器设备监视的长短期存储器(LSTM)异常检测的方法,系统和非暂时性计算机可读介质。一种方法包括训练用于半导体处理故障检测的LSTM递归神经网络(RNN)模型。训练包括为LSTM RNN模型生成训练数据,并提供训练数据以在第一训练输入和第一目标输出上训练LSTM RNN模型,以生成用于半导体处理故障检测的训练LSTM RNN模型。训练数据包括基于半导体处理设备的制造过程的正常运行的第一训练输入和第一目标输出。另一种方法包括将基于半导体加工设备的制造过程的运行的输入提供给训练后的LSTM RNN模型;从经过训练的LSTM RNN模型中获得一个或多个输出;使用一个或多个输出进行半导体处理故障检测。

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