Department of Scientific Computing and Numerical Analysis, Simula Research Laboratory, Oslo, Norway.
Nofima - Norwegian Institute of Food, Fisheries and Aquaculture Research, Ås, Norway.
J Biophotonics. 2022 Sep;15(9):e202200097. doi: 10.1002/jbio.202200097. Epub 2022 Jun 22.
In the process of converting food-processing by-products to value-added ingredients, fine grained control of the raw materials, enzymes and process conditions ensures the best possible yield and economic return. However, when raw material batches lack good characterization and contain high batch variation, online or at-line monitoring of the enzymatic reactions would be beneficial. We investigate the potential of deep neural networks in predicting the future state of enzymatic hydrolysis as described by Fourier-transform infrared spectra of the hydrolysates. Combined with predictions of average molecular weight, this provides a flexible and transparent tool for process monitoring and control, enabling proactive adaption of process parameters.
在将食品加工副产物转化为增值成分的过程中,精细控制原材料、酶和工艺条件可确保获得最佳的产量和经济效益。然而,当原料批次缺乏良好的特性且批次间变化较大时,对酶反应进行在线或在线监测将是有益的。我们研究了深度神经网络在预测酶解产物傅里叶变换红外光谱所描述的酶解未来状态方面的潜力。结合平均分子量的预测,这为过程监测和控制提供了一个灵活透明的工具,能够主动适应过程参数。