Redirigiendo al acceso original de articulo en 15 segundos...
Inicio  /  Algorithms  /  Vol: 13 Par: 12 (2020)  /  Artículo
ARTÍCULO
TITULO

Lifting the Performance of a Heuristic for the Time-Dependent Travelling Salesman Problem through Machine Learning

Gianpaolo Ghiani    
Tommaso Adamo    
Pierpaolo Greco and Emanuela Guerriero    

Resumen

In recent years, there have been several attempts to use machine learning techniques to improve the performance of exact and approximate optimization algorithms. Along this line of research, the present paper shows how supervised and unsupervised techniques can be used to improve the quality of the solutions generated by a heuristic for the Time-Dependent Travelling Salesman Problem with no increased computing time. This can be useful in a real-time setting where a speed update (or the arrival of a new customer request) may lead to the reoptimization of the planned route. The main contribution of this work is to show how to reuse the information gained in those settings in which instances with similar features have to be solved over and over again, as it is customary in distribution management. We use a method based on the nearest neighbor procedure (supervised learning) and the K-means algorithm with the Euclidean distance (unsupervised learning). In order to show the effectiveness of this approach, the computational experiments have been carried out for the dataset generated based on the real travel time functions of two European cities: Paris and London. The overall average improvement of our heuristic over the classical nearest neighbor procedure is about 5%" role="presentation">5%5% 5 % for London, and about 4%" role="presentation">4%4% 4 % for Paris.

 Artículos similares

       
 
Saige Lv and Xiong Hu    
In order to solve the problems of subjectivity in the extraction of traditional degradation features and incomplete degradation information contained in a single sensor signal, a performance degradation assessment and abnormal health status detection met... ver más

 
Yu Zhu, Rui Yan, Di Liu, Xiaojie Deng and Jiannan Yao    
In the mine hoisting system, rigid guide failures and the influence of internal and external airflow intensify vessel transverse vibration, heightening demands on operational safety and equipment reliability. This paper focuses on integrating magnetorheo... ver más
Revista: Applied Sciences

 
Giuseppe Palaia, Karim Abu Salem and Alessandro A. Quarta    
The continuously expanding transport aviation sector has a significant impact on climate change, and measures must be taken to limit its environmental impact. The study of advanced airframes, which may increase the lift-to-drag ratio and structural effic... ver más
Revista: Applied Sciences

 
Chankyu Son and Taewoo Kim    
A novel actuator disk model (ADM) coupled with lifting-line theory is proposed in this paper. Several virtual planform blades are placed on a disk plane with a constant azimuthal interval, and the lifting-line theory is applied to each blade to predict t... ver más
Revista: Aerospace

 
Karim Abu Salem, Giuseppe Palaia, Alessandro A. Quarta and Mario R. Chiarelli    
This paper presents a study on the aeromechanical characteristics of a box-wing aircraft configuration with a focus on stability, controllability, and the impact of aeromechanical constraints on the lifting system conceptual design. In the last decade, t... ver más
Revista: Aerospace