Abstract

The industrial manufacturing sector is undergoing a tremendous revolution moving from traditional production processes to intelligent techniques. Under this revolution, known as Industry 4.0 (I40), a robot is no longer static equipment but an active workforce to the factory production alongside human operators. Safety becomes crucial for humans and robots to ensure a smooth production run in such environments. The loss of operating moving robots in plant evacuation can be avoided with the adequate safety induction for them. Operators are subject to frequent safety inductions to react in emergencies, but very little is done for robots. Our research proposes an experimental safety response mechanism for a small manufacturing plant, through which an autonomous robot learns the obstacle-free trajectory to the closest safety exit in emergencies. We implement a reinforcement learning (RL) algorithm, Q-learning, to enable the path learning abilities of the robot. After obtaining the robot optimal path selection options with Q-learning, we code the outcome as a rule-based system for the safety response. We also program a speech recognition system for operators to react timeously, with a voice command, to an emergency that requires stopping all plant activities even when they are far away from the emergency stops (ESTOPs) button. An ESTOP or a voice command sent directly to the factory central controller can give the factory an emergency signal. We tested this functionality on real hardware from an S7-1200 Siemens programmable logic controller (PLC). We simulate a simple and small manufacturing environment overview to test our safety procedure. Our results show that the safety response mechanism successfully generates paths without obstacles to the closest safety exits from all the factory locations. Our research benefits any manufacturing SME intending to implement the initial and primary use of autonomous moving robots (AMR) in their factories. It also impacts manufacturing SMEs using legacy devices such as traditional PLCs by offering them intelligent strategies to incorporate current state-of-the-art technologies such as speech recognition to improve their performances. Our research empowers SMEs to adopt advanced and innovative technological concepts within their operations.

Highlights

  • Today’s manufacturing automation trend, the so-called Industry 4.0 or smart manufacturing, is characterized by the application of intelligent technologies and concepts to create smart factories [1]

  • A speech command incorporated into the central controller program has the advantage of controlling all other plants’ operations in a single instruction. This feature could be convenient in emergencies. We address these gaps by creating a safety response mechanism for an autonomous moving robot to:

  • It could lead to evacuating the plant and pressing one of the emergencies stop interlocks (ESTOP or Stop buttons depending on the disaster’s severity) that usually halts the whole system

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Summary

Introduction

Today’s manufacturing automation trend, the so-called Industry 4.0 or smart manufacturing, is characterized by the application of intelligent technologies and concepts to create smart factories [1]. When dealing with a moving robot, the concept of autonomy becomes more critical since the robot must safely navigate through the factory from the starting point to the destination by avoiding any obstacle along the way [7]. Obstacle avoidance for moving autonomous robots has been a challenging topic among researchers. One of these researches’ goals is to provide robots with an intelligent behavior system to make appropriate decisions in their working environment. To give robots the ability to make autonomous decisions like human beings, researchers used the great potentials of machine learning to build intelligent robot systems. Machine learning (ML) is a field in the domain of artificial intelligence (AI) [10]

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