Intelligent Systems and Robotics: Revolutionizing Engineering Industries
Keywords:
Intelligent Systems, Robotics, Engineering Industries, Automation, Machine Learning, Industry 4.0, Industrial Robots, Smart ManufacturingAbstract
A mix of intelligent systems and robotics is making engineering industries much more efficient, precise and able to adapt. How artificial intelligence (AI), machine learning (ML) and autonomous robotic technologies are changing manufacturing, civil, electrical and mechanical engineering is discussed in this paper. Based on recent findings and a suggested way to evaluate intelligent robotic systems in industry, we give an overview of how their use impacts productivity, safety and operational costs. Experience and case studies confirm the benefits this area brings and the problems that have yet to be solved. The findings indicate that intelligent robotics involves more than a technology change; it introduces important new methods in engineering.
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