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A Prediction-Optimization Framework for Site-Wide Process Optimization

机译:用于站点范围的过程优化的预测优化框架

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We address the problem of site-wide operational optimization of production plants in the context of Industry 4.0 with an emphasis on sensor data-driven approaches. A multi-plant production site is a complex network of plants and intermediate storage tanks with a continuous flow of materials that get transformed from raw inflows into product outflows. A site-wide production strategy is a time-indexed operational plan for operating the network in real-time and computing various plant flow rates and corresponding tank inventories. It needs to be dynamic to respond to changes like breakdowns or shifting economic objectives, thereby requiring the ability to capture the run-time behavior of each process to alter any controls as needed. We present a novel solution based on the use of machine learning to learn process relationships from sensor data and converting the process network into a surrogate network representation of regression-based transformers that are coupled via inventory balances and physical constraints like capacity limits. We discuss some physical and modeling considerations that need to be handled in practice for realizing such a representation from sensor data. We emphasize the choice of segmented linear models and couple them with integer-linear modeling techniques to devise a prediction-optimization framework for site-wide optimization. We illustrate the application and the effectiveness of the proposed framework with a case study based on the oil sands processing industry.
机译:我们处理传感器数据驱动的方法在工业4.0重点强调上下文生产工厂的站点范围内的操作优化的问题。多植物生产现场是植物和中间储罐的复杂网络与该获得从原料流入转化成产物流出材料的连续流。站点范围生产策略是用于在实时操作所述网络和计算各种植物的流速和相应的罐库存时间索引的行动计划。它需要是动态的以响应故障等或移位经济目标,由此需要捕获每个进程的运行时行为根据需要改变任何控件的能力的改变。提出了一种基于学习学习从传感器数据处理的关系和处理网络转换成经由库存余额和等容量限制物理约束耦合基于回归的变压器的替代网络表示使用机器的新颖的解决方案。我们讨论了一些物理和建模考虑,需要在实践中从传感器数据实现这样的表示进行处理。我们强调分段线性模型和整数线性建模技术他们夫妇的选择,设计一种用于站点范围内的优化的预测,优化框架。我们说明应用程序和基于油砂加工行业的案例研究提出的框架的有效性。

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