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System And Methods For Automated Model Development From Plant Historical Data For Advanced Process Control

机译:从工厂历史数据自动模型开发的系统和方法,用于高级过程控制

摘要

Systems and methods provide a new paradigm of Advanced Process Control that includes building and deploying APC seed models. Embodiments provide automated data cleansing and selection in model identification and adaption in multivariable process control (MPC) techniques. Rather than plant pre-testing onsite for building APC seed models, the embodiments help APC engineers to build APC seed models from existing plant historical data with self-learning automation and pattern recognition, AI techniques. Embodiments further provide “growing” and “calibrating” the APC seed models online with non-invasive closed loop step testing techniques. PID loops and associated SP, PV, and OPs are searched and identified. Only “informative moves” data is screened, identified, and selected among a long history of process variables for seed model development and MPC application. The seed models are efficiently developed while skipping the costly traditional pre-testing steps and minimizing the interferences to the subject production process.
机译:系统和方法提供了一种新的高级过程控制范例,包括构建和部署APC种子模型。实施例提供了在多变量过程控制(MPC)技术中的模型识别和适配中自动数据清理和选择。该实施例而不是用于构建APC种子模型的工厂预测现场预测现场预测,帮助APC工程师从现有的工厂历史数据和自动学习自动化和模式识别,AI技术构建APC种子模型。实施例进一步提供“生长”和“校准”APC种子模型在线,具有非侵入性闭环步骤测试技术。搜索和识别PID环路和关联的SP,PV和OPS。仅筛选,识别,并在种子模型开发和MPC应用程序的过程变量的长期历史中筛选,识别出“信息移动”数据。在跳过昂贵的传统预测试步骤并最大限度地减少对主题生产过程的干扰,可以有效地开发种子模型。

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