Q-Model: An Artificial Intelligence Based Methodology for the Development of Autonomous Robots
Philip Kurrek, Firas Zoghlami, Mark Jocas, Martin F. Stoelen, Vahid Salehi
- Year
- 2020
- Citations
- 14
Abstract
Abstract The increasing individualization of products reinforces the importance of decoupled factories in production processes. Artificial intelligence (AI) is a recognized technology for problem solving and accelerates automation by enabling systems to act independently. In the field of robotics, there are new deep learning approaches which make robotic control systems human independent. This work provides a literature overview of the current state of development methodologies, showing that there are only limited methods available for the development of artificial intelligent robots. We present a novel development methodology based on artificial intelligence, particularly deep reinforcement learning. The so-called Q-model can enable robots to learn specific tasks independently. In summary, we show how an AI-based methodology assists the development of autonomous robots along the product lifecycle.
Keywords
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