Abstract
Industrial assistive systems result from a multidisciplinary effort that integrates IoT (and Industrial IoT), Cognetics, and Artificial Intelligence. This paper evaluates the Prediction by Partial Matching algorithm as a component of an assembly assistance system that supports factory workers, by providing choices for the next manufacturing step. The evaluation of the proposed method was performed on datasets collected within an experiment involving trainees and experienced workers. The goal is to find out which method best suits the datasets in order to be integrated afterwards into our context-aware assistance system. The obtained results show that the Prediction by Partial Matching method presents a significant improvement with respect to the existing Markov predictors.
Funder
European Regional Development Fund
Subject
Fluid Flow and Transfer Processes,Computer Science Applications,Process Chemistry and Technology,General Engineering,Instrumentation,General Materials Science
Reference23 articles.
1. Anthropocentric perspective of production before and within Industry 4.0
2. The operator 4.0: Human cyber-physical systems and adaptive automation towards human-automation symbiosis work systems;Romero,2016
3. The Impact of Industrial Robots on EU Employment and Wages: A local Labour Market Approach;Chiacchio,2018
4. Using Two-Level Context-Based Predictors for Assembly Assistance in Smart Factories;Gellert,2020
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