TY - CPAPER U1 - Konferenzveröffentlichung A1 - Schuhmacher, Jan A1 - Hummel, Vera T1 - Development of an intelligent warehouse and autonomously controlled intralogistics scenario to investigate the mastering of short-term turbulences at Werk150 T2 - Proceedings of the Conference on Learning Factories (CLF) 2021, 1-2 July 2021, online N2 - Manufacturing companies are confronted with external (e.g. short-term change of product configuration by the customer) and internal (e.g. production process deviations) turbulences which are affecting the performance of production. Predefined, centrally controlled logistics processes are limiting the possibilities of production to initiate countermeasures to react in an optimized way to these turbulences. The autonomous control of intralogistics offers a great potential to cope with these turbulences by using the respective flexibility corridors of production systems and applying intelligent logistic objects with decentralized decision and process execution capabilities to maintain a target-optimized production. A method for AI-based storage-location- and material-handling-optimization to achieve performance-optimized intralogistics system through continuous monitoring of performance-relevant parameters and influencing factors by using AI (e.g. for pattern recognition) has been developed. To provide the basis to investigate and demonstrate the potentials of autonomously controlled intralogistics in connection with turbulences of production and in combination with AI, an intelligent warehouse involving an indoor localization system, smart bins, manual, semi-automated/collaborative and autonomous transport systems has been developed and implemented at Werk150, the factory on campus of ESB Business School (Reutlingen University). This scenario, which has been integrated into graduate training modules, allows the analysis and demonstration of different measures of intralogistics to cope with turbulences in production involving amongst others storage and material provision processes. The target fulfilment of the applied intralogistics measures to master arising turbulences is assessed based on the overall performance of production considering lead times and adherence to delivery dates. By applying artificial intelligence (AI) algorithms the intelligent logistical objects (smart bin, transport systems, etc.) as well as the entire logistics system should be enabled to improve their decision and process execution capabilities to master short-term turbulences in the production system autonomously. KW - flexibility KW - intralogistics KW - autonomous control KW - smart storage KW - smart warehouse KW - learning factory KW - turbulences Y1 - 2021 UN - https://nbn-resolving.org/urn:nbn:de:bsz:rt2-opus4-33216 U6 - https://doi.org/10.2139/ssrn.3861946 DO - https://doi.org/10.2139/ssrn.3861946 SP - 6 S1 - 6 PB - Elsevier CY - Rochester, NY ER -