城市项目规划的多智能体强化学习

Boudjemaa Khelifa, Mohamed Ridda Laouar
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引用次数: 1

摘要

实际上,规划者总是需要越来越多的更新计划来满足最终的变化。这些计划通常会带来立竿见影甚至可持续的解决方案。根据问题的性质和决策者的愿望,分配给制定计划的时间仍然很紧张。因此,适当的工艺和方法是适合解决这一问题的。最近,一个初级研究领域被称为机器学习(ML),其技术是基于通过研究数据或应用已知规则来对事物进行分类、预测结果、识别模式或检测意外行为的学习。强化学习(RL)是机器学习的一个活跃研究领域,它基于学习如何将情境映射到行动,从而最大化数值奖励。通过使用RL方法,目的是为城市项目提供更好的规划,其中它们被建模形成一个多智能体系统,合作和最佳地行动。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-agent Reinforcement Learning for Urban Projects Planning
Actually, planners always need more and more updated plans to satisfy eventual changes. Those plans usually bring immediate and even sustainable solutions. According to the nature of problems, and decision-makers yearnings, the allocated time to establish plans is still tight. Therefore, adequate technics and methods are suitable to tackle this problem. Recently, a primer research field called Machine learning (ML), whose technics are based on learning by studying data or by applying known rules to categorize things, to predict outcomes, to identify patterns, or to detect unexpected behaviors. Reinforcement learning (RL) is an active research field of ML, based on learning how to map situations to actions, so as to maximize a numerical reward. By employing RL methods, the aim is to provide better plans for urban projects, wherein they are modeled to form a multi-agents system, acting cooperatively and optimally.
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