航空维修中的数据管道考虑

Annmarie Spexet, Jessica LaRocco-Olszewski, D. Alvord
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摘要

在航空领域,维护是推动物联网(loT)设备管理系统、人工智能(AI)/机器学习(ML)研究和云基础设施的主要驱动力。这种方法在减少停机时间、最大化组件使用寿命、减少诊断和维修工时、优化供应链和调度方面的潜力推动了整个行业的大量投资。然而,利用现有数据和技术实现这些承诺的挑战也不应被最小化。为了充分发挥其潜力,维护计划的实施者必须了解可以从可用数据中得出哪些预测,哪些维护行动可能由这些预测驱动,以及如何将这些预测呈现给地面操作和物流链中的适当决策者。本报告探讨了航空维修领域的数据现状、组件级别覆盖范围的变化,以及如何将其转化为数据和计算基础设施的类型、数量和及时性,从而为维护人员、供应链管理人员和运营商提供正确的时间预测和分析。本报告还讨论了航空领域的一些具体挑战,包括数据可用性、设备可变性、使用可变性和维护操作编码,这些挑战会影响运营商从数据科学项目中获取价值的能力。
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Data Pipeline Considerations for Aviation Maintenance
In the aviation space, maintenance is the main driver in the push for Internet of Things (loT) device management systems, artificial intelligence (AI)/machine learning (ML) re-search, and cloud infrastructure. The potential for this approach to reduce downtime, maximize component lifetime, re-duce man-hours on diagnosis and repair, and optimize supply chains and scheduling has driven massive investments across the industry. And yet, the challenges in delivering on these promises with the available data and technology should also not be minimized. To reach its full potential, maintenance program implementers must understand what predictions can be derived from the available data, what maintenance actions may be driven by those predictions, and how the predictions should be presented to the appropriate decision makers in ground operations and the logistics chain. This report examines the current state of data within the aviation maintenance space, variations in component level coverage, and how that translates to the type, volume, and timeliness of data and computational infrastructure necessary to provide right time predictions and analytics to maintainers, supply chain managers, and operators. This report also addresses some of the specific challenges in the aviation space with respect to data availability, equipment variability, use variability, and maintenance action coding that can affect the ability of operators to derive value from a data science program.
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