A simple multiresponse steepest ascent procedure has been developed by combining the standard steepest ascent method with multicriteria decision making. The steepest ascent method is one of the older methods in response surface methodology. It can be applied in optimization where the operability region is so large that a very complex function would be needed to fit an empirical function. With steepest ascent, local designs and local models in a part of the operability region are used to find a direction where the response is improved most. Experiments performed along a line in that direction will reveal the region of interest. There the response may be fitted with a second degree equation. The problem of multiresponse steepest ascent is tha...
There have been many productive methods developed so far for optimization of multiple response surfa...
AbstractA steepest ascent family of algorithms suitable for the direct solution of continuous variab...
One of the spread first level methods of optimum search is learned by the steepest descent method in...
A simple multiresponse steepest ascent procedure has been developed by combining the standard steepe...
Steepest ascent is shown to be a feasible method for problems where two or more responses are to be ...
Response Surface Methodology (RSM) searches for the input combination maximizing the output of a rea...
Response surface methodology is applied often in industrial experiments to find the optimal conditio...
This chapter first summarizes Response Surface Methodology (RSM), which started with Box and Wilson’...
Abstract: This chapter first summarizes Response Surface Methodology (RSM), which started with Box a...
This thesis provides some extensions to the existing method of determining the precision of the path...
The steepest descent method has a rich history and is one of the simplest and best known methods for...
Many previous researches conveyed the superiority of Steepest Ascent (SA) method to find the optimal...
The results of this chapter lead to a modification of the standard stopping rule which breathes new ...
We propose a steepest descent method for unconstrained multicriteria op-timization and a “feasible d...
Response surface methodology involves relationships between different variables, specifically experi...
There have been many productive methods developed so far for optimization of multiple response surfa...
AbstractA steepest ascent family of algorithms suitable for the direct solution of continuous variab...
One of the spread first level methods of optimum search is learned by the steepest descent method in...
A simple multiresponse steepest ascent procedure has been developed by combining the standard steepe...
Steepest ascent is shown to be a feasible method for problems where two or more responses are to be ...
Response Surface Methodology (RSM) searches for the input combination maximizing the output of a rea...
Response surface methodology is applied often in industrial experiments to find the optimal conditio...
This chapter first summarizes Response Surface Methodology (RSM), which started with Box and Wilson’...
Abstract: This chapter first summarizes Response Surface Methodology (RSM), which started with Box a...
This thesis provides some extensions to the existing method of determining the precision of the path...
The steepest descent method has a rich history and is one of the simplest and best known methods for...
Many previous researches conveyed the superiority of Steepest Ascent (SA) method to find the optimal...
The results of this chapter lead to a modification of the standard stopping rule which breathes new ...
We propose a steepest descent method for unconstrained multicriteria op-timization and a “feasible d...
Response surface methodology involves relationships between different variables, specifically experi...
There have been many productive methods developed so far for optimization of multiple response surfa...
AbstractA steepest ascent family of algorithms suitable for the direct solution of continuous variab...
One of the spread first level methods of optimum search is learned by the steepest descent method in...