Parametric synthesis of space systems for remote sensing of the earth on the basis of the genetic method

1Fedorovskyi, OD, 2Artiushenko, MV, 1Kozlov, ZV
1State institution «Scientific Centre for Aerospace Research of the Earth of the Institute of Geological Sciences of the National Academy of Sciences of Ukraine», Kyiv, Ukraine
2State institution «Scientific Centre for Aerospace Research of the Earth of the Institute of Geological Science of the National Academy of Sciences of Ukraine», Kyiv, Ukraine
Kosm. nauka tehnol. 2004, 10 ;(1):054-060
https://doi.org/10.15407/knit2004.01.054
Publication Language: Russian
Abstract: 
The methodical aspects of requirement definition to parameters of space systems for remote sensing of the Earth are considered on the basis of the genetic approach. The requirements to the system parameters are determined from the condition of their conformity to the characteristics ensuring the solution of theme problems of the RSE scientific and applied programs with the greatest probability.
References: 
1. Norenkov I. P. Genetic methods of structural synthesis of design decisions. Informatsionnye tekhnologii, No. 1, 9—13 (1998) [in Russian].
2. Fedorovskii A. D., Ryabokonenko S. A., Kozlov Z. V. Main requirements to the parameters of a space hardware complex of remote sensing of the Earth. Reports of the National Academy of Sciences of Ukraine, No. 7, 118—122 (2003) [in Russian].
3. Bierwirth C., Mattfeld D., Kopfer H. On permutation representations for scheduling problems. In: Voigt H. M., et al. (Eds) Parallel problem solving from nature, 310—318 (Springer-Verlag, Berlin, 1996).
4. Fang H. L. Genetic algorithms in timetabling and scheduling: A dissertation, 153 p. (Department of Artifical Intelligence Univ. of Edinburg, Edinburg, 2000).
5. Goldberg D. E. Genetic algorithms in search, optimization and machine learning, 315 p. (Addison-Wesley Publ. Company, Inc., USA, 1989).
6. Holland J. H. Adaptation in natural and artificial systems: An introductory with application to biology, control and artificial intelligence, 248 p. (Univ. of Michigan, USA, 1975).

7. Syswerda G. Uniform crossover in genetic algorithms. In: Proc. of the Third International Conf. on genetic algorithms, 2—9 (Morgan Kaufmann Publishing, 1989).