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A study of applying Genetic Network Programming with Reinforcement Learning to Elevator Group Supervisory Control System

机译:加固学习遗传网络规划对电梯群监控系统的研究

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Elevator Group Supervisory Control System (EGSCS) is a very large scale stochastic dynamic optimization problem. Due to its vast state space, significant uncertainty, and numerous resource constraints such as finite car capacities and registered hall/car calls, it is hard to manage EGSCS using conventional control methods. Recently, many solutions for EGSCS using Artificial Intelligence (AI) technologies have been reported. Genetic Network Programming (GNP), which is proposed as a new evolutionary computation method several years ago, is also proved to be efficient when applied to EGSCS problem. In this paper, we propose an extended algorithm for EGSCS by introducing Reinforcement Learning (RL) into GNP framework, and expect to make an improvement of the EGSCS' performances since the efficiency of GNP with RL has been clarified in some other studies like tile-world problem. Simulation tests using traffic flows in a typical office building have been made, and the results show an actual improvement of the EGSCS' performances comparing to the algorithms using original GNP and conventional control methods.
机译:电梯集团监控系统(EGSCS)是一个非常大的随机动态优化问题。由于其庞大的状态空间,显着的不确定性和众多资源限制,例如有限的汽车能力和注册厅/呼叫,因此使用传统的控制方法很难管理EGSCS。最近,已经报道了使用人工智能(AI)技术的许多EGSCs解决方案。遗传网络编程(GNP)在几年前提出为新的进化计算方法,当应用于EGSCS问题时也被证明是有效的。在本文中,我们通过将增强学习(RL)引入GNP框架来提出EGSCS的扩展算法,并且期望改善EGSCS的性能,因为在其他一些研究中被阐明了GNP的GNP效率,如图瓦 - 世界问题。已经进行了使用交通流在典型的办公楼中的仿真试验,结果表明,使用原始GNP和传统控制方法的算法进行了比较EGSCS性能的实际改进。

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