Most of the existing steady state detection approaches are designed for univariate signals. For multivariate signals, the univariate approach is often applied to each process variable and the system is claimed to be steady once all signals are steady, which is computationally inefficient and also not accurate. The article proposes an efficient online method for multivariate steady state detection. It estimates the covariance matrices using two different approaches, namely, the mean-squared-deviation and mean-squared-successive-difference. To avoid the usage of a moving window, the process means and the two covariance matrices are calculated recursively through exponentially weighted moving average. A likelihood ratio test is developed to co...
peer reviewedIn this article, the monitoring of continuous processes using linear dynamic models is ...
In this article, a multivariate statistical process control (MSPC) strategy, devoted to bias identif...
The great challenge in quality control and process management is to devise computationally efficient...
Most of the existing steady state detection approaches are designed for univariate signals. For mult...
Steady state detection is critically important in many engineering fields such as fault detection an...
Steady state detection is critically important in many engineering fields such as fault detection an...
Fault diagnosis in continuous dynamic systems can be challenging, since the variables in these syste...
Online steady state identification (SSID) is an important task to ensure the quality consistence of ...
We introduce robust regression-based online filters for multivariate time series and discuss their p...
This paper introduces a novel steady-state identification (SSI) method based on the auto-regressive ...
As simulation output is generally nonstationary and autocorrelated and includes the initialization b...
A properly designed monitoring and diagnostic system must be capable of detecting and distinguishing...
A computationally simple method is demonstrated for automated identification of steady state and tra...
In industrial processes, it is of great significance to carry out steady-state detection (SSD) for e...
Dataset shift is a very common issue wherein the input data distribution shifts over time in non-sta...
peer reviewedIn this article, the monitoring of continuous processes using linear dynamic models is ...
In this article, a multivariate statistical process control (MSPC) strategy, devoted to bias identif...
The great challenge in quality control and process management is to devise computationally efficient...
Most of the existing steady state detection approaches are designed for univariate signals. For mult...
Steady state detection is critically important in many engineering fields such as fault detection an...
Steady state detection is critically important in many engineering fields such as fault detection an...
Fault diagnosis in continuous dynamic systems can be challenging, since the variables in these syste...
Online steady state identification (SSID) is an important task to ensure the quality consistence of ...
We introduce robust regression-based online filters for multivariate time series and discuss their p...
This paper introduces a novel steady-state identification (SSI) method based on the auto-regressive ...
As simulation output is generally nonstationary and autocorrelated and includes the initialization b...
A properly designed monitoring and diagnostic system must be capable of detecting and distinguishing...
A computationally simple method is demonstrated for automated identification of steady state and tra...
In industrial processes, it is of great significance to carry out steady-state detection (SSD) for e...
Dataset shift is a very common issue wherein the input data distribution shifts over time in non-sta...
peer reviewedIn this article, the monitoring of continuous processes using linear dynamic models is ...
In this article, a multivariate statistical process control (MSPC) strategy, devoted to bias identif...
The great challenge in quality control and process management is to devise computationally efficient...