The Schrodinger equation is one of the most important equations in physics and chemistry and can be solved in the simplest cases by computer numerical methods. Since the beginning of the 70s of the last century the computer began to be used to solve this equation in elementary quantum systems, e.g. and in the most complex case a hydrogen-like system. Obtaining the solution means finding the wave function, which allows predicting the physical and chemical properties of the quantum system. However, when a quantum system is more complex than a hydrogen-like system then we must be satisfied with an approximate solution of the equation. During the last decade the application of algorithms and principles of quantum computation in disciplines other than physics and chemistry, such as biology and artificial intelligence, has led to the search for alternative techniques with which to obtain approximate solutions of the Schrodinger equation. In this paper, we review and illustrate the application of genetic algorithms, i.e. stochastic optimization procedures inspired by Darwinian evolution, in elementary quantum systems and in quantum models of artificial intelligence. In this last field, we illustrate with two toy models how to solve the Schrodinger equation in an elementary model of a quantum neuron and in the synthesis of quantum circuits controlling the behavior of a Braitenberg vehicle.
翻译:石化方程式是物理和化学中最重要的方程式之一,可以在最简单的情况下通过计算机数字方法解决。自上世纪70年代初以来,计算机开始用于在初级量子系统中解决这个方程式,例如,在最复杂的情况下,计算机开始用于在初级量子系统中解决这个方程式,在最复杂的情况下,采用氢类系统。获得解决方案意味着找到波函数,从而可以预测量子系统的物理和化学特性。然而,当量子系统比氢类系统复杂得多时,我们必须满足于这一方程式的大致解决办法。在过去十年中,在物理和化学以外的学科中应用算法和量子计算原则,例如生物学和人工智能,导致寻找替代技术,以获得施罗德式方程式的近似解决办法。在本文中,我们审查并演示了基因算法的应用,即由达尔文进化、初级量子系统和人造智能智能模型所启发的随机优化程序。在最后一个领域,我们用两个至极模型来说明如何在控制Schrodinger 等方程式的初级气流模型中,如何在控制Sharniralsiral的气压的合成中,并用两个模型来解算。