Paper ID: 2403.06458

Prediction of Wort Density with LSTM Network

Derk Rembold, Bernd Stauss, Stefan Schwarzkopf

Many physical target values in technical processes are error-prone, cumbersome, or expensive to measure automatically. One example of a physical target value is the wort density, which is an important value needed for beer production. This article introduces a system that helps the brewer measure wort density through sensors in order to reduce errors in manual data collection. Instead of a direct measurement of wort density, a method is developed that calculates the density from measured values acquired by inexpensive standard sensors such as pressure or temperature. The model behind the calculation is a neural network, known as LSTM.

Submitted: Mar 11, 2024