Background and Motivation

In today's highly dynamic manufacturing landscape, the relentless market shift toward extreme customer individualization that drives production down to "batch size 1" , combined with radically compressed delivery windows, has escalated the complexity of shop-floor control to unprecedented levels.

For small and medium-sized enterprises (SMEs), this market pressure exposes a critical operational gap. While these companies house massive volumes of valuable production data within their SAP systems , they are frequently unable to leverage it. Historically, the prohibitive manual effort and the highly specialized technical expertise required to implement simulation-based Digital Twins have acted as an insurmountable barrier to entry.

Locked out of advanced, data-driven forecasting, SMEs are often forced to manage volatile, highly complex production environments using rigid, simplistic priority rules like FIFO (First-In, First-Out). This systemic disconnect inevitably leads to cascading production bottlenecks, the buildup of costly excess inventory, and a significantly increased risk of missed delivery deadlines. The TeaTwin project was initiated to dismantle these exact barriers, transforming dormant SAP data into an accessible, automated engine for proactive production planning.

Last Modification: 16.03.2026 -
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