Abstract:
In most of the process industries the end product quality is not measurable online.
Unavailability of reliable hardware sensors for continuous quality monitoring at times
results in production of low quality products. Soft sensors or inferential sensors are
process models which use the information of easily measurable process variables and
produce as output, the estimated/predicted values of difficult to measure process
variables. Most of the present day approaches for soft sensor development are data based because of the various difficulties associated with development of mathematical models for complex processes. Clinker composition and cement particle size are two of the most important quality parameters in cement manufacturing process. Unfortunately, there are no hardware sensors available for continuous monitoring of these quality parameters. Therefore, the focus of this research is to develop data-driven soft sensors for online monitoring of cement clinker quality and cement fineness.
The two processes focused upon are, (1) a chemical process where the raw mix is
converted to cement clinker at high temperature in a rotary cement kiln and (2) a
physical process where the clinker is ground in a vertical roller mill for cement
production. The required data for these two processes were collected from a cement
plant. The grinding process data set comprised of data for three input variables and one
output variable. The three input variables are measured continuously by installed
hardware sensors and therefore contain some outlying observations. These outliers were
detected and removed by the robust Hampel's method of outlier detection. The processed
data set after outlier removal, consisted of 158 samples of input-output data. This data
set was equally divided into a training set and a validation set consisting of 79
observations each. The data division was performed using Kennard-Stone maximal intradistance criterion. The training set was used for development of different kinds of datadriven soft sensors. The different soft sensors developed include, linear and support
vector regression, artificial neural network, fuzzy inference and neuro-fuzzy models of
Abstract the grinding process. The performances of the developed models were assessed with the validation data set by measuring six different statistical model performance indicators.
The neuro-fuzzy and the back propagation neural network models showed better
performances than the other models. The accuracy of both these models are quite
acceptable as per the model acceptability criteria reported in the literature.
The clinkerization process taking place in the rotary kiln, involves nine inputs and
eight outputs. Out of the nine inputs, 4 are raw meal quality parameters (measured in the
laboratory) and five are kiln operating parameters. The operating parameters are
measured continuously by installed hardware sensors and therefore contain outliers.
After performing a comparison of different multivariate outlier detection techniques, the
outliers present in the kiln input data were removed by the technique of closest distance
to center method. The processed data set consisted of 223 pairs of input-output data.
Using Kennard-Stone algorithm, the total data set was divided into a training set
consisting of 112 samples and a validation set containing 111 samples. The training set
was used to develop three kinds of feed forward neural network models and two types of
fuzzy inference models. The performances of the developed soft sensors were analyzed
with the validation data set by evaluating six statistical model evaluation parameters. The
analysis showed that the soft sensor based on Takagi-Sugeno fuzzy inference modeling
technique, has the highest accuracy in estimating eight cement clinker quality
parameters.