The search for life outside the Solar System is an endeavour of astronomers all around the world. With hundreds of exoplanets being discovered due to advances in astronomy, there is a need to classify the habitability of these exoplanets. This is typically done using various metrics such as the Earth Similarity Index or the Planetary Habitability Index. In this paper, Genetic Algorithms are used to evaluate the best possible habitability scores using the Cobb-Douglas Habitability Score. Genetic Algorithm is a classic evolutionary algorithm used for solving optimization problems. It is based on Darwin's theory of evolution, "Survival of the fittest". The working of the algorithm is established through comparison with various benchmark functions and extended its functionality to Multi-Objective optimization. The Cobb-Douglas Habitability Function is formulated as a bi-objective as well as a single objective optimization problem to find the optimal values to maximize the Cobb-Douglas Habitability Score for a set of promising exoplanets.
翻译:搜索太阳系以外的生命是全世界天文学家的一项努力。 数以百计的外行星由于天文学的进步而被发现, 有必要对这些外行星的可居住性进行分类。 通常使用各种测量方法, 如地球相似指数或行星可居住性指数。 在本文中, 遗传算法用于使用 Cobb- Douglas 霍比特性分数来评估最佳可居住性分数。 遗传算法是用于解决优化问题的经典进化算法。 它基于达尔文的进化理论“ 适者生存论 ” 。 算法的运作是通过与各种基准功能的比较来建立的, 并将其功能扩展至多目标优化。 Cobb- Douglas 可居住性函数是一个双目和单一目标优化问题, 以找到最佳值来最大限度地提高一套有希望的外行星的 Cobb- Douglas Habitiable性分数。