IOSO
IOSO is a multiobjective, multidimensional nonlinear optimization technology.
IOSO approach
IOSO Technology is based on the response surface methodology approach.At each IOSO iteration the internally constructed response surface model for the objective is being optimized within the current search region. This step is followed by a direct call to the actual mathematical model of the system for the candidate optimal point obtained from optimizing internal response surface model. During IOSO operation, the information about the system behavior is stored for the points in the neighborhood of the extremum, so that the response surface model becomes more accurate for this search area. The following steps are internally taken while proceeding from one IOSO iteration to another:
- the modification of the experiment plan;
- the adaptive adjustment of the current search area;
- the function type choice for the response surface model;
- the adjustment of the response surface model;
- the modification of both parameters and structure of the optimization algorithms; if necessary, the selection of the new promising points within the search area.
History
IOSO is based on the technology being developed for more than 20 years by which grew out of IOSO Technology Center in 2001. Sigma Technology is headed by prof. Egorov I. N., CEO.Products
IOSO is the name of the group of multidisciplinary design optimization software that runs on Microsoft Windows as well as on Unix/Linux OS and was developed by . It is used to improve the performance of complex systems and technological processes and to develop new materials based on a search for their optimal parameters. IOSO is easily integrated with almost any computer aided engineering tool.IOSO group of software consists of:
- IOSO NM: Multi-objective optimization;
- IOSO PM: Parallel multi-objective optimization;
- IOSO LM: Multilevel multi-objective optimization with adaptive change of the object model fidelity ;
- IOSO RM: Robust design optimization and robust optimal control software;
Purpose
Performance improvement and design optimization
IOSO NM is used to maximize or minimize system or object characteristics which can include the performance or cost of or loads on the object in question. The search for optimal values for object or system characteristics is carried out by means of optimal change to design, geometrical or other parameters of the object.Search for optimal system management laws
It is often necessary to select or co-ordinate management parameters for the system while it is in operation in order to achieve a certain effect during the operation of the system or to reduce the impact of some factors on the system.Identification of mathematical models
When the design process involves the use of any mathematical models of real-life objects, whether commercial or corporate, there is the problem of co-ordinating the experiment findings and model computation results. All models imply a set of unknown factors or constants. Searching for the optimal values thereof makes it possible to co-ordinate the experiment findings and model computation results.Robust design optimization and robust optimal control
Introduction
Practical application of the numerical optimization results is difficult because any complex technical system is a stochastic system and the characteristics of this system have probabilistic nature. We would like to emphasize that, speaking about the stochastic properties of a technical system within the frame of optimization tasks, we imply that the important parameters of any system are stochastically spread. Normally it occurs during the production stage despite the up-to-date level of modern technology. Random deviations of the system parameters lead to a random change in system efficiency.An efficiency extreme value, obtained during the optimization problem while solving in traditional approach, is simply a maximum attainable value and can be considered as just conventional optimum from the point of view of its practical realization. Thus, one can consider two different types of optimization criteria. One of them is an ideal efficiency which can be achieved under the conditions of absolutely precise practical replication of the system parameters under consideration. Other optimization criteria are of probabilistic nature. For example: mathematical expectation of the efficiency; the total probability of assuring preset constraints; variance of the efficiency and so on
It is evident that the extreme of the one of these criteria doesn't guarantee the assurance of the high level of another one. Even more, these criteria may contradict to each other. Thus, in this case we have a multiobjective optimization problem.