At present, SOILD-STATE Fermentation (SSF) is mainly controlled by artificial experience, and the product quality and yield are not stable. Accurately predicting the quality and yield of SSF is of great significance for improving human food security and supply. In this paper, we propose an Intelligent Utility Prediction (IUP) scheme for SSF in 5G Industrial Internet of Things (IoT), including parameter collection and utility prediction of SSF process. This IUP scheme is based on the environmental perception and intelligent learning algorithms of the 5G Industrial IoT. We build a workflow model based on rewritable petri net to verify the correctness of the system model function and process. In addition, we design a utility prediction model for SSF based on the Generative Adversarial Networks (GAN) and Fully Connected Neural Network (FCNN). We design a GAN with constraint of mean square error (MSE-GAN) to solve the problem of few-shot learning of SSF, and then combine with the FCNN to realize the utility prediction (usually use the alcohol) of SSF. Based on the production of liquor in laboratory, the experiments show that the proposed method is more accurate than the other prediction methods in the utility prediction of SSF, and provide the basis for the numerical analysis of the proportion of preconfigured raw materials and the appropriate setting of cellar temperature.
翻译:目前,SOILD-STATFeration(SSF)主要受人工经验控制,产品质量和产量不稳定,准确预测SSSF的质量和产量对于改善人类粮食安全和供应具有重大意义,在本文中,我们提议在5G工业物质互联网(IoT)中为SSF设计智能实用预测(IUP)计划,包括参数收集和SSF进程的实用预测。这个IUP计划以5G工业工业IOT的环境认知和智能温度学习算法为基础。我们根据可改用石油网建立一个工作流程模型,以核实系统模型功能和流程的正确性。此外,我们根据Genement Aversarial Net(GAN)和完全连通的神经网络(FCNNN),为SSF设计了一个智能智能智能工具预测(MSE-GAN)计划,以解决SSF少镜头学习的问题,然后与FN公司联合,以便实现系统模型模型功能预测的正确性功能模型和过程。SSFAF的原始预测(通常使用SF的数值分析方法),提供SFSFAFAF前的准确的数值分析。