Recommendation System using Reinforcement Learning for What-If Simulation in Digital Twin

Flávia Pires, B. Ahmad, A. Moreira, P. Leitão
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引用次数: 4

Abstract

The research about the digital twin concept is growing worldwide, especially in the industrial sector, due to the increasing digitisation level associated to Industry 4.0. The application of the digital twin concept improves performance of a system by implementing monitoring, diagnosis, optimisation, and decision support actions. In particular, the decision-making process is very time consuming since the decision-maker is presented with hundreds of different scenarios that can be simulated and assessed in a what-if perspective. Bearing this in mind, this paper proposes to integrate a digital twin-based what-if simulation with a recommendation system to improve the decision-making cycle. The recommendation system is based on a reinforcement learning technique and takes user knowledge of the system into consideration and trust in the system recommendation. The applicability of the proposed approach is presented in an assembly line case study for recommending the best configurations for the system operation, in terms of the optimal number of AGVs (Autonomous Guided Vehicles) in various scenarios. The achieved results show its successful application and highlight the benefits of using AI-based recommendation systems for what-if simulation in digital twin systems.
基于强化学习的数字孪生假设仿真推荐系统
由于与工业4.0相关的数字化水平不断提高,关于数字孪生概念的研究在全球范围内正在增长,特别是在工业领域。数字孪生概念的应用通过实施监测、诊断、优化和决策支持行动来提高系统的性能。特别是,决策过程非常耗时,因为决策者要面对数百种不同的场景,这些场景可以从假设的角度进行模拟和评估。考虑到这一点,本文提出将基于数字双胞胎的假设模拟与推荐系统集成,以改善决策周期。推荐系统基于强化学习技术,考虑了用户对系统的了解和对系统推荐的信任。在一个装配线案例研究中,根据各种场景下agv(自动导引车)的最佳数量,提出了该方法的适用性,以推荐系统运行的最佳配置。所取得的结果表明了该方法的成功应用,并突出了在数字孪生系统中使用基于人工智能的推荐系统进行假设模拟的好处。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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