Given a graph whose arc traversal times vary over time, the Time-Dependent Travelling Salesman Problem consists in finding a Hamiltonian tour of least total duration covering the vertices of the graph. The main goal of this work is to define tight upper bounds for this problem by reusing the information gained when solving instances with similar features. This is customary in distribution management, where vehicle routes have to be generated over and over again with similar input data. To this aim, we devise an upper bounding technique based on the solution of a classical (and simpler) time-independent Asymmetric Travelling Salesman Problem, where the constant arc costs are suitably defined by the combined use of a Linear Program and a mix of unsupervised and supervised Machine Learning techniques. The effectiveness of this approach has been assessed through a computational campaign on the real travel time functions of two European cities: Paris and London. The overall average gap between our heuristic and the best-known solutions is about 0.001\%. For 31 instances, new best solutions have been obtained.
翻译:根据一个不同时间跨度时间变化的图表,时间依赖旅行推销员问题在于找到一个涵盖图顶的至少总长度的汉密尔顿旅游,这项工作的主要目的是通过重新使用在解决类似特点的事例时获得的信息来界定这一问题的紧紧上限。这是分销管理中的惯例,车辆路线必须反复生成,并附有类似的输入数据。为了这个目的,我们设计了一种基于传统(和更简单)时间独立的远距旅行推销员问题解决方案的上层界限技术,长期弧成本通过使用线性方案和未经监督和监督的机器学习技术组合来适当确定。这一方法的有效性是通过两个欧洲城市:巴黎和伦敦的实际旅行时间功能的计算运动进行评估的。我们超光学和最著名的解决办法之间的总体平均差距是0.001 ⁇ 。在31个实例中,获得了新的最佳解决办法。