School of Mining Engineering, College of Engineering, University of Tehran, Tehran, 16846-13114, Iran.
Department of Computer Engineering, Amirkabir University of Technology (Tehran Polytechnic), Tehran, Iran.
Sci Rep. 2022 May 9;12(1):7543. doi: 10.1038/s41598-022-11429-9.
Cement production is one of the most energy-intensive manufacturing industries, and the milling circuit of cement plants consumes around 4% of a year's global electrical energy production. It is well understood that modeling and digitalizing industrial-scale processes would help control production circuits better, improve efficiency, enhance personal training systems, and decrease plants' energy consumption. This tactical approach could be integrated using conscious lab (CL) as an innovative concept in the internet age. Surprisingly, no CL has been reported for the milling circuit of a cement plant. A robust CL interconnect datasets originated from monitoring operational variables in the plants and translating them to human basis information using explainable artificial intelligence (EAI) models. By initiating a CL for an industrial cement vertical roller mill (VRM), this study conducted a novel strategy to explore relationships between VRM monitored operational variables and their representative energy consumption factors (output temperature and motor power). Using SHapley Additive exPlanations (SHAP) as one of the most recent EAI models accurately helped fill the lack of information about correlations within VRM variables. SHAP analyses highlighted that working pressure and input gas rate with positive relationships are the key factors influencing energy consumption. eXtreme Gradient Boosting (XGBoost) as a powerful predictive tool could accurately model energy representative factors by R-square ever 0.80 in the testing phase. Comparison assessments indicated that SHAP-XGBoost could provide higher accuracy for VRM-CL structure than conventional modeling tools (Pearson correlation, Random Forest, and Support vector regression.
水泥生产是能源密集型制造业之一,水泥厂的粉磨回路消耗了全球每年 4%的电力生产。人们已经充分认识到,对工业规模的过程进行建模和数字化将有助于更好地控制生产回路,提高效率,增强人员培训系统,并降低工厂的能源消耗。这种策略方法可以使用互联网时代的创新概念——有意识实验室(CL)进行集成。令人惊讶的是,目前还没有报告提到将 CL 应用于水泥厂的粉磨回路。一个强大的 CL 互联数据集源于监测工厂中的运行变量,并使用可解释的人工智能(EAI)模型将其转换为人类基础信息。通过为工业水泥立磨(VRM)启动 CL,本研究探索了一种新颖的策略,以研究 VRM 监测的运行变量与其代表性能耗因素(输出温度和电机功率)之间的关系。使用 SHapley Additive exPlanations (SHAP) 作为最近的 EAI 模型之一,准确地帮助填补了 VRM 变量内部相关性信息的空白。SHAP 分析强调,与正相关的工作压力和输入气体速率是影响能耗的关键因素。作为强大的预测工具,eXtreme Gradient Boosting (XGBoost) 可以在测试阶段通过 R-square 准确地对代表能源的因素进行建模,R-square 始终超过 0.80。比较评估表明,与传统建模工具(Pearson 相关性、随机森林和支持向量回归)相比,SHAP-XGBoost 可为 VRM-CL 结构提供更高的准确性。