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Self-learning Processes in Smart Factories: Deep Reinforcement Learning for Process Control of Robot Brine Injection

机译:智能工厂的自学过程:机器人盐水注入过程控制的深度加固学习

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The goal of this paper is to investigate the application of adaptive learning algorithms, which enables industrial robots to cope with natural variations exhibited in a brine injection process related to the production of bacon. Due to the variations in bacon meat, the traditional needle-based brine injection process is not capable of injecting the correct amount of brine, leading to either ruined or unflavored bacon. In the presented work a Deep Deterministic Policy Gradient (DDPG) reinforcement learning algorithm is introduced in the injection process to improve process control. To accelerate training of the reinforcement learning algorithm, a simulation environment of the brine absorption is generated based on 64 conducted experiments. The simulation environment estimates the amount of absorbed brine given injection pressure and injection time. Tests are run in the simulation where the starting mass is generated from a normal distribution with mean 80.5g, and a standard deviation of 4.8 g and 20.0 g respectively. With a target of 15% mass increase, the agent can produce an average mass increase of 14.9% for the first test and 14.6% for the second test. This indicates that the model can successfully adapt to a high variety input, thereby showing potential for process control in brine injection, coping with natural variation in meat structure.
机译:本文的目标是调查自适应学习算法的应用,这使得工业机器人能够应对与培根生产相关的盐水注入过程中表现出的自然变化。由于培根肉的变化,传统的针基盐水注入过程能够注射正确的盐水量,导致毁灭或未燃烧的培根。在本工作中,在注射过程中引入了深度确定性政策梯度(DDPG)加强学习算法,以改善过程控制。为了加速加强学习算法的训练,基于64个进行的实验产生盐水吸收的模拟环境。仿真环境估计给定注射压力和注射时间的吸收盐水的量。在模拟中运行测试,其中起始质量从具有平均80.5g的正态分布产生,分别为4.8g和20.0g的标准偏差。对于靶量增加15%,药剂可以产生第一次试验的平均质量增加14.9%,第二次试验的14.6%。这表明该模型可以成功适应高品种输入,从而显示盐水注入过程中的过程控制潜力,应对肉类结构的自然变化。

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