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Innovative and Unconventional Approach Toward Analytical Cadastre – based on Genetic Algorithms

This study explores the use of genetic algorithms for analytical cadastre, providing a detailed overview of the algorithm's characteristics, operators, and implementation approach. Case studies and results analysis are presented to showcase the effectiveness and potential of this unconventional approach.

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Innovative and Unconventional Approach Toward Analytical Cadastre – based on Genetic Algorithms

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  1. Mapping and Geo-Information Engineering Technion – Israel Institute of Technology Innovative and Unconventional Approach Toward Analytical Cadastre – based on Genetic Algorithms Anna Shnaidman

  2. Introduction Graphical cadastre Urbanization Reliable system

  3. Introductioncont. • Transition to analytical cadastre has given • rise to much research • The common practice is the Least Square • (LS) method • The current techniques are mainly analytical • and straightforward

  4. Genetic Algorithms (GAs) Overview • A biological optimization • Characteristics: • stochastic method • founded on evolutionary ideas and Darwin's • principles of selection and survival of the fittest • a natural selection which operates on a variety • of candidate solutions – chromosomes • (individuals)

  5. GAs Overview cont.- Generic Framework • Encode the given problem • Create the first/next population • Evaluate (grade)theinitial/current • individualsby assigning afitness value • Create the next (new) population by applying • variation- inducing operators: selection, crossover • and mutation

  6. GAs Overviewcont. – Genetic Operators • Selection • Two parent chromosomes are selected from a population • according to their fitness value • Guiding principle – selection of the fittest • Superior individuals are of a higher probability to be • selected (survive) • Selection method – roulette wheel selection • Roulette slot’s size is • determined by the fitness value

  7. GAs Overviewcont. • Example

  8. GAs Overviewcont. - Genetic operators • Crossover • Two offspring are created Parents chromosomes children chromosomes • Mutation • The new offspring genes are changed • randomly to ensure diversity

  9. Implementation – Cadastral Analogy • Each individual - vector of turning points • coordinates • Parcels’ areas, lines and pairs of lines - • provide the cadastral and geometricalconstraints • Objective function - minimizes the differences • between the actual and the requested values • With each generation -vectors values are • altered

  10. Implementation – Cadastral Analogy cont. • Cadastral Conditions: • Objective function –calculatedand registered areas • Fitness function -parcel size determines weight

  11. Implementation – Cadastral Analogy cont. • Geometrical Conditions: • Objective function • Fitness function - number of • points and total lines’ lengths dictate weight • Total Grade

  12. Implementation - Cadastral Analogy cont. • A Successive Generation: • Parent selection - Tournamentmethod • Crossover • Process repetition • Averaging • Mutation

  13. The proposed algorithm - graphical illustration … … … … … … … … Parcel 1 Parcel 1 Parcel 1 New set 1 New set 2 Set 1 Set 2 New set N Set N Parents selection Parent 2 Parent 1 Single point crossover Lines 1 Lines 1 Lines 1 Offspring 2 Offspring 1 next generation –Averaging coordinates, adding mutation, creation of new sets

  14. Case Studies • Simulations on synthetic data • Case Studies based on legitimate • parcellation plans (alternative solution) • Features considered: • number of parcels • parcels' shapes and sizes • lines’ topology • numerical ratio

  15. Case Studiescont Ex. C Ex. A Ex. B

  16. Case Studiescont. • Case Studies’ Fitness Values

  17. Case Studiescont. – Results Analyses

  18. Case Studiescont. – Results Analyses • Coordinates’ Distributions Ex. A Final Coordinates’ Distribution Initial Coordinates’ Distribution

  19. Summary & Future Work • GAs - a new approach for achieving • homogeneous coordinates • GAs imitate the natural process of • evolving solutions • Several case of different characteristics • were presented

  20. Summary & Future Work cont. • The method provides very promising • results • FutureObjectives: • Dealing with more complex situations • Integrating additional conditions • Working with adjacent blocks

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