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Integration of data analytics with cloud services for safer process systems, application examples and implementation challenges

机译:使用云服务对更安全的过程系统,应用示例和实施挑战的数据分析与云服务集成

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摘要

Emerging sensors, computers, network technologies, and connected platforms result potentially in an immeasurable collection of data within plant operations. This creates the possibility of solving problems innovatively. Because most of the data appear to be unstructured or semi-structured, organizations shall design and adopt new strategies. Further, workflow architectures with data analytics are needed including machine learning tools and artificial intelligence techniques before proto-type solutions can be developed. We shall discuss several prospects of using (big) data analytics integrated with cloud services to produce solutions for improving plant operations. The paper outlines the vision and a systematic framework highlighting the data analytics lifecycle in the area of plant operation, process safety, and environmental protection. Four rather diverse example case studies are demonstrated including (1) deep learning-based predictive maintenance monitoring modeling, (2) Natural Language Processing (NLP) for mining text, (3) barrier assessment for dynamic risk mapping (DRA), and (4) correlation development for sustainability indicators. It further discusses the challenges in both research and implementation of proposed solutions in the industry. It is concluded that a well-balanced integrated approach including machine supporting decisions integrated with expert knowledge and available information from various key resources is required to enable more informed policy, strategic, and operational risk decision-making leading to safer, reliable and more efficient operations.
机译:新兴的传感器、计算机、网络技术和互联平台可能会在电厂运行中产生不可估量的数据收集。这为创新性地解决问题创造了可能性。由于大多数数据似乎是非结构化或半结构化的,组织应设计并采用新的策略。此外,在开发原型解决方案之前,还需要具有数据分析功能的工作流体系结构,包括机器学习工具和人工智能技术。我们将讨论使用(大)数据分析与云服务相结合来生产改善工厂运营的解决方案的几种前景。本文概述了在工厂运营、过程安全和环境保护领域强调数据分析生命周期的愿景和系统框架。展示了四个不同的示例案例研究,包括(1)基于深度学习的预测性维护监测建模,(2)挖掘文本的自然语言处理(NLP),(3)动态风险映射(DRA)的障碍评估,以及(4)可持续性指标的相关性开发。它进一步讨论了在行业中研究和实施拟议解决方案所面临的挑战。得出的结论是,需要一种平衡的综合方法,包括结合专家知识和来自各种关键资源的可用信息的机器支持决策,以实现更明智的政策、战略和运营风险决策,从而实现更安全、可靠和更高效的运营。

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