Predicting the degradation of working conditions and trending of fault propagation before they reach the alarm or failure control limit is significantly important to optimize the operational capacity of a chemical process. However, traditional one-step-ahead (OS) soft-sensors render such benefits inadequate. Direct, Recursive and Direct-recursive strategies are proposed to generalize the Gaussian Process Regression (GPR) model for multi-step-ahead (MS) prediction, thereby supporting the fault diagnosis and prognosis of the product qualities control for chemical processes. The proposed methodology was firstly demonstrated by applying the designed algorithm to a wastewater plant (WWTP) simulated with the well-established model, i.e., Benchmar...
Online measurement of the melt index is typically unavailable in industrial polypropyleneproductionp...
In this paper we present the results of a feature importance analysis of a chemical sulphonation pro...
Activated sludge process has been widely adopted to remove pollutants in wastewater treatment plants...
Predicting the degradation of working conditions and trending of fault propagation before they reach...
The activated sludge process (ASP) is widely adopted to remove pollutants in wastewater treatment pl...
Prediction uncertainty has rarely been integrated into traditional soft sensors in industrial proces...
The proper monitoring of quality-related but hard-to-measure variables is currently one of the bottl...
Soft-sensor is the most common strategy to predict hard-to-measure variables in the wastewater treat...
Prediction uncertainty has rarely been integrated into traditional soft sensors in industrial proces...
Reliable sensor values are important for resource-efficient control and operations of wastewater tre...
In the development of soft sensors for chemical processes, outliers of input variables and the time-...
This paper introduces a Gaussian process regression (GPR) model which could adapt to both linear and...
The characteristics of nonlinearity and time-varying changes in most industrial processes usually cr...
Abstract: In order to overcome the difficulties of online measurement of some crucial biochemical va...
Traditional single model based soft sensors may have poor performance on quality prediction for batc...
Online measurement of the melt index is typically unavailable in industrial polypropyleneproductionp...
In this paper we present the results of a feature importance analysis of a chemical sulphonation pro...
Activated sludge process has been widely adopted to remove pollutants in wastewater treatment plants...
Predicting the degradation of working conditions and trending of fault propagation before they reach...
The activated sludge process (ASP) is widely adopted to remove pollutants in wastewater treatment pl...
Prediction uncertainty has rarely been integrated into traditional soft sensors in industrial proces...
The proper monitoring of quality-related but hard-to-measure variables is currently one of the bottl...
Soft-sensor is the most common strategy to predict hard-to-measure variables in the wastewater treat...
Prediction uncertainty has rarely been integrated into traditional soft sensors in industrial proces...
Reliable sensor values are important for resource-efficient control and operations of wastewater tre...
In the development of soft sensors for chemical processes, outliers of input variables and the time-...
This paper introduces a Gaussian process regression (GPR) model which could adapt to both linear and...
The characteristics of nonlinearity and time-varying changes in most industrial processes usually cr...
Abstract: In order to overcome the difficulties of online measurement of some crucial biochemical va...
Traditional single model based soft sensors may have poor performance on quality prediction for batc...
Online measurement of the melt index is typically unavailable in industrial polypropyleneproductionp...
In this paper we present the results of a feature importance analysis of a chemical sulphonation pro...
Activated sludge process has been widely adopted to remove pollutants in wastewater treatment plants...