In this paper we discuss the application of AI and ML to the exemplary industrial use case of the two-dimensional commissioning problem in a high-bay storage, which essentially can be phrased as an instance of Traveling Salesperson Problem (TSP). We investigate the mlrose library that provides an TSP optimizer based on various heuristic optimization techniques. Our focus is on two methods, namely Genetic Algorithm and Hill Climbing, which are provided by mlrose. We present modifications for both methods that improve the computed tour lengths, by moderately exploiting the problem structure of TSP. However, the proposed improvements have some generic character and are not limited to TSP only.
翻译:在本文中,我们讨论了将AI和ML应用到高海湾储存中二维调试问题的示范性工业用途案例,这基本上可以称为“旅行销售人员问题”的例子。我们调查了以各种超温优化技术为基础提供TSP优化器的Mlrose图书馆,我们的重点是两种方法,即Mlrose提供的遗传高压和山坡爬升。我们提出了两种方法的修改,通过适度利用TSP的问题结构,改进了计算出的旅行长度。然而,拟议的改进有一些通用性质,并不限于TSP。