Abstract:
Quality-related process monitoring is an important tool to ensure process safety and product quality. However, the existence of process dynamics and multirate sampling ma...Show MoreMetadata
Abstract:
Quality-related process monitoring is an important tool to ensure process safety and product quality. However, the existence of process dynamics and multirate sampling makes it difficult to construct an efficient monitoring model. In order to handle process dynamics and multirate sampling, a multirate process monitoring method based on a dynamic dual-latent variable model is proposed. The model involves two sets of latent variables modeled as first-order Markov chains, which are used to capture both quality-related and quality-unrelated dynamic information. In addition, to deal with multiple sampling rates in the process data, the proposed model is combined with a multirate Kalman filtering technique. An expectation-maximization (EM) algorithm is used to estimate the unknown parameters, and a fault detection strategy is developed. The higher fault detection rate of the proposed method is verified by two application studies including a real industrial experiment and the Tennessee Eastman (TE) process.
Published in: IEEE Transactions on Instrumentation and Measurement ( Volume: 72)
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- IEEE Keywords
- Index Terms
- Dynamic Model ,
- Process Monitoring ,
- Sampling Rate ,
- Markov Chain ,
- Latent Variables ,
- Kalman Filter ,
- Dynamic Information ,
- First-order Markov Chain ,
- Model Parameters ,
- Log-likelihood ,
- Probabilistic Model ,
- Variation In Quality ,
- Distributed Control ,
- State-space Model ,
- Performance Monitoring ,
- Filter Parameters ,
- Latent Variable Model ,
- Coal Power ,
- Corresponding State ,
- Disturbance Term ,
- Linear Dynamical System ,
- Decentralized Control ,
- Industrial Internet Of Things ,
- Latent Variable Distribution ,
- Linear State-space Model ,
- Probabilistic Framework ,
- Kalman Filter Algorithm ,
- Kinds Of Datasets ,
- Latent Structure ,
- Feasible Solution
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Dynamic Model ,
- Process Monitoring ,
- Sampling Rate ,
- Markov Chain ,
- Latent Variables ,
- Kalman Filter ,
- Dynamic Information ,
- First-order Markov Chain ,
- Model Parameters ,
- Log-likelihood ,
- Probabilistic Model ,
- Variation In Quality ,
- Distributed Control ,
- State-space Model ,
- Performance Monitoring ,
- Filter Parameters ,
- Latent Variable Model ,
- Coal Power ,
- Corresponding State ,
- Disturbance Term ,
- Linear Dynamical System ,
- Decentralized Control ,
- Industrial Internet Of Things ,
- Latent Variable Distribution ,
- Linear State-space Model ,
- Probabilistic Framework ,
- Kalman Filter Algorithm ,
- Kinds Of Datasets ,
- Latent Structure ,
- Feasible Solution
- Author Keywords