LGOct 13, 2021

Sustainability Through Cognition Aware Safety Systems -- Next Level Human-Machine-Interaction

arXiv:2110.07003v1
Originality Incremental advance
AI Analysis

This addresses safety and productivity challenges in industrial settings with smart robotics and skilled worker shortages, though it appears incremental as it builds on existing safety mechanisms with AI augmentation.

The paper tackles the problem of inflexible industrial safety systems by proposing Cognition Aware Safety Systems (CASS) that dynamically adapt machine and factory configurations using AI to reason about human factors like load and stress, aiming to reduce accidents and increase productivity while maintaining safety requirements.

Industrial Safety deals with the physical integrity of humans, machines and the environment when they interact during production scenarios. Industrial Safety is subject to a rigorous certification process that leads to inflexible settings, in which all changes are forbidden. With the progressing introduction of smart robotics and smart machinery to the factory floor, combined with an increasing shortage of skilled workers, it becomes imperative that safety scenarios incorporate a flexible handling of the boundary between humans, machines and the environment. In order to increase the well-being of workers, reduce accidents, and compensate for different skill sets, the configuration of machines and the factory floor should be dynamically adapted, while still enforcing functional safety requirements. The contribution of this paper is as follows: (1) We present a set of three scenarios, and discuss how industrial safety mechanisms could be augmented through dynamic changes to the work environment in order to decrease potential accidents, and thus increase productivity. (2) We introduce the concept of a Cognition Aware Safety System (CASS) and its architecture. The idea behind CASS is to integrate AI based reasoning about human load, stress, and attention with AI based selection of actions to avoid the triggering of safety stops. (3) And finally, we will describe the required performance measurement dimensions for a quantitative performance measurement model to enable a comprehensive (triple bottom line) impact assessment of CASS. Additionally we introduce a detailed guideline for expert interviews to explore the feasibility of the approach for given scenarios.

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