Patented intelligence : cloning human decision models for Industry 4.0
Terziyan, V., Gryshko, S., & Golovianko, M. (2018). Patented intelligence : cloning human decision models for Industry 4.0. Journal of Manufacturing Systems, 48 (Part C), 204-217. doi:10.1016/j.jmsy.2018.04.019
Published inJournal of Manufacturing Systems
© 2018 The Society of Manufacturing Engineers. Published by Elsevier Ltd.
Industry 4.0 is a trend related to smart factories, which are cyber-physical spaces populated and controlled by the collective intelligence for the autonomous and highly flexible manufacturing purposes. Artificial Intelligence (AI) embedded into various planning, production, and management processes in Industry 4.0 must take the initiative and responsibility for making necessary real-time decisions in many cases. In this paper, we suggest the Pi-Mind technology as a compromise between completely human-expert-driven decision-making and AI-driven decision-making. Pi-Mind enables capturing, cloning and patenting essential parameters of the decision models from a particular human expert making these models transparent, proactive and capable of autonomic and fast decision-making simultaneously in many places. The technology facilitates the human impact (due to ubiquitous presence) in smart manufacturing processes and enables human-AI shared responsibility for the consequences of the decisions made. It also benefits from capturing and utilization of the traditionally human creative cognitive capabilities (sometimes intuitive and emotional), which in many cases outperform the rational decision-making. Pi-Mind technology is a set of models, techniques, and tools built on principles of value-based biased decision-making and creative cognitive computing to augment the axioms of decision rationality in industry. ...
MetadataShow full item record
Showing items with similar title or keywords.
Khriyenko, Oleksiy; Kim, Chinh Nguyen; Ahapainen, Atte (Global Science and Technology Forum, 2018)To smartly utilize a huge and constantly growing volume of data, improve productivity and increase competitiveness in various fields of life; human requires decision making support systems that efficiently process and ...
Countering Adversarial Inference Evasion Attacks Towards ML-Based Smart Lock in Cyber-Physical System Context Vähäkainu, Petri; Lehto, Martti; Kariluoto, Antti (Springer, 2021)Machine Learning (ML) has been taking significant evolutionary steps and provided sophisticated means in developing novel and smart, up-to-date applications. However, the development has also brought new types of hazards ...
Terziyan, Vagan; Golovianko, Mariia; Gryshko, Svitlana (IOS Press, 2018)Artificial intelligence is an unavoidable asset of Industry 4.0. Artificial actors participate in real-time decision-making and problem solving in various industrial processes, including planning, production, and management. ...
Golovianko, Mariia; Gryshko, Svitlana; Terziyan, Vagan; Tuunanen, Tuure (Taylor & Francis, 2022)This study uses a design science research methodology to develop and evaluate the Pi-Mind agent, an information technology artefact that acts as a responsible, resilient, ubiquitous cognitive clone – or a digital copy – ...
Spiga, Fabiano (2020)This thesis deals with contemporary emergent approaches to CPS (Cyber Physical System) cognitive automation and embedded-intelligence processes, either with or without a HitL (Human-in-the-Loop) setting. The introduction ...