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Reinforcement learning in real-time geometry assurance

机译:实时几何保证中的强化学习

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To improve the assembly quality during production, expert systems are often used. These experts typically use a system model as a basis for identifying improvements. However, since a model uses approximate dynamics or imperfect parameters, the expert advice is bound to be biased. This paper presents a reinforcement learning agent that can identify and limit systematic errors of an expert systems used for geometry assurance. By observing the resulting assembly quality over time, and understanding how different decisions affect the quality, the agent learns when and how to override the biased advice from the expert software.
机译:为了提高生产过程中的组装质量,经常使用专家系统。这些专家通常使用系统模型作为识别改进的基础。但是,由于模型使用近似动力学或不完善的参数,因此专家建议势必会产生偏差。本文提出了一种增强学习代理,可以识别和限制用于几何保证的专家系统的系统错误。通过观察随时间变化的装配质量,并了解不同的决定如何影响质量,座席可以了解何时以及如何覆盖专家软件中的有偏见的建议。

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