@article{oai:nagoya.repo.nii.ac.jp:00005326, author = {Mukai, Naoto and Watanabe, Toyohide and Jun, Feng}, journal = {17th IEEE International Conference on Tools with Artificial Intelligence}, month = {Nov}, note = {In this paper, we focus on behavioral decisions for empty transport veicles e.g., they shoud wait on their place or go to other places. Effective behaviors of empty vehicles enable to decrease waiting times of customers. Our algorithm to acquire such effective behaviors is based on transport experiences of vehicles (i.e., history). It means that vehicles adjust to their city environment by learning trends of transport demands (e.g., amounts and directions). Our algorithm consists of learning and abstraction stages. In the learning stage, vehicles acquire low-level rules of actions at an intersection. In the abstraction stage, vehicles acquire high-level rules of actions in a region. Finally, we report simulation results and show the effectiveness of our algorithm.}, pages = {679--680}, title = {Behavioral Decision Based on Abstraction of Pheromone Distribution for Transport Vehicles}, year = {2005} }