Model Predictive Control with Adaptive PLC-based Policy on Low Dimensional State Representation for Industrial Applications

Steve Yuwono, Andreas Schwung
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Abstract

In the modern era of manufacturing automation, the integration of sensor technology into the system ensures that data acquisition and analysis from complex systems become more efficient than ever. With the support of such developments, artificial intelligence-powered control in industrial control domains gains popularity and enhances the traditional human-based PLC control, where the machines can monitor themselves, learn from the experience, and make their own decisions. However, despite advances in sensor technologies, there are some limitations of the current applications of sensors in industries, for instance, sensors for observing the current status of the system often provide Boolean output data instead of continuous output. Therefore, such limitation forms a low dimensional state representation of the system, which could be problematic to develop a self-control policy, e.g. using a model-free deep reinforcement learning. In this paper, we present an effective model predictive controller with adaptive PLC-based policy on low dimensional state representation specifically for industrial control domains. First, we learn the model of the production system using the deep learning method to get the representation of the system dynamics, in case its digital representation is not available. Second, we set up a native implementation of model predictive control. Third, we enhance the model predictive control with adaptive PLC-based policy. The proposed method is implemented into a bulk good system showing its potential to self-optimize the system by satisfying the production objective without overflow and low power consumption.
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基于自适应plc的低维状态表示模型预测控制在工业中的应用
在现代制造业自动化时代,将传感器技术集成到系统中,确保了来自复杂系统的数据采集和分析变得比以往任何时候都更加高效。在这种发展的支持下,工业控制领域的人工智能驱动控制越来越受欢迎,并增强了传统的基于人的PLC控制,机器可以自我监控,从经验中学习,并做出自己的决定。然而,尽管传感器技术取得了进步,但目前传感器在工业中的应用存在一些局限性,例如,用于观察系统当前状态的传感器通常提供布尔输出数据,而不是连续输出。因此,这种限制形成了系统的低维状态表示,这可能会给开发自我控制策略带来问题,例如使用无模型深度强化学习。本文针对工业控制领域,提出了一种有效的基于自适应plc策略的低维状态表示模型预测控制器。首先,我们使用深度学习方法学习生产系统的模型,以获得系统动力学的表示,以防其数字表示不可用。其次,我们建立了模型预测控制的本地实现。第三,采用基于自适应plc的策略增强模型预测控制。该方法在批量生产系统中的应用表明,该方法在满足生产目标、无溢出和低功耗的情况下具有自优化系统的潜力。
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