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人工智能在制造业中的应用:权衡能源消耗与效率提升.pdf

上传人: 明**** 编号:1011723 2025-12-21 15页 1.28MB

1、Jibran Zuberi,Haitam Laarabi,Sarah Smith,Arman ShehabiAI in Manufacturing:Weighing Energy Footprints Against Efficiency GainsAI in Manufacturing:Weighing Energy Footprints Against Efficiency GainsJibran Zuberi,Haitam Laarabi,Sarah Smith,Arman ShehabiOCP SPECIAL FOCUS:ARTIFICIAL INTELLIGENCE(AI)Manuf

2、acturing sector Accounts for approx.one-third of total U.S.primary energy demand(EIA U.S.Annual Energy Outlook 2025)Traditional smart manufacturing Relies on predefined rules,lean workflows,and simulation-or threshold-based systems.Advanced AI(such as deep learning)in manufacturing Learns from vast

3、amounts of data,adapts in real time,and detects nuances and anomalies beyond hardcoded rules.oRepresents a transformative step beyond conventional digitization and IT integration.Growth in AI concerns have grown over the substantial energy consumption and associated emissions of AI systems.Advanced

4、AI in Manufacturing3Projected AI-Added Revenue by Manufacturing VerticalABI Research(2024)4General AI Use Cases in Manufacturing MANUFACTURING APPLICATIONSOPERATIONSDESIGNPLANNINGREAL-TIMEPredictive MaintenanceQuality ControlSupply Chain and Resource ManagementProcess Optimization and ControlCollabo

5、rative RobotsGENERATIVE DESIGNTESTING/EXPERIMENTATIONCustom Manufacturing5AI Use Cases in Specific Manufacturing SectorsUse caseIndustrial sectorParameters optimized through AI technologiesService providersAI systemReported relative energy savings and other impactsAI-assisted process control,stabili

6、zation,&optimizationCementTemperature control,rates of alternative fuel substitution,kiln speed,feed rate,airflow,raw material proportions,fan speeds,etc.ABB,ThyssenKrupp,CarbonReImubitBasetwoLinear and Non-Linear Model Predictive Control,Fuzzy Logic,and ANN320%energy savings and 38%productivity gai

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根据报告的内容,全文主要探讨了人工智能(AI)在制造业中的应用及其对能源效率和环境影响。以下是关键点: 1. 制造业是美国能源需求的主要来源之一,约占三分之一。 2. 先进的AI技术(如深度学习)在制造业中的应用超越了传统数字化和IT集成,能够从大量数据中学习,实时适应,并检测到硬编码规则之外的细微差别和异常。 3. AI在制造业中的应用案例包括预测性维护、质量控制、供应链和资源管理、流程优化和控制、协作机器人、生成式设计等。 4. 在特定制造行业中,AI的应用带来了显著的能源节约,例如水泥行业通过AI辅助的过程控制和性能优化,实现了5-15%的热能需求节约。 5. AI技术的能源需求估计基于每家水泥厂需要1至5台服务器,平均功率消耗在2023年为每台服务器8760小时。 6. AI服务在制造业中的净能源和排放节约估计为总厂能源需求的4-13%。 7. 需要进一步的技术经济分析、计算足迹的量化评估以及非能源影响的通用评估。 8. 未来工作机会包括评估AI驱动的效率是否为净能源正效益,以及通过净影响分析来推进AI在工业制造业中的应用。
节能新篇章?" "AI助力制造业,效率翻倍?" "揭秘AI在制造领域的节能秘密!"
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