{"title":"利用标签感知神经过程对状态监测信号预测进行实时调整","authors":"Seokhyun Chung, Raed Al Kontar","doi":"arxiv-2403.16377","DOIUrl":null,"url":null,"abstract":"Building a predictive model that rapidly adapts to real-time condition\nmonitoring (CM) signals is critical for engineering systems/units.\nUnfortunately, many current methods suffer from a trade-off between\nrepresentation power and agility in online settings. For instance, parametric\nmethods that assume an underlying functional form for CM signals facilitate\nefficient online prediction updates. However, this simplification leads to\nvulnerability to model specifications and an inability to capture complex\nsignals. On the other hand, approaches based on over-parameterized or\nnon-parametric models can excel at explaining complex nonlinear signals, but\nreal-time updates for such models pose a challenging task. In this paper, we\npropose a neural process-based approach that addresses this trade-off. It\nencodes available observations within a CM signal into a representation space\nand then reconstructs the signal's history and evolution for prediction. Once\ntrained, the model can encode an arbitrary number of observations without\nrequiring retraining, enabling on-the-spot real-time predictions along with\nquantified uncertainty and can be readily updated as more online data is\ngathered. Furthermore, our model is designed to incorporate qualitative\ninformation (i.e., labels) from individual units. This integration not only\nenhances individualized predictions for each unit but also enables joint\ninference for both signals and their associated labels. Numerical studies on\nboth synthetic and real-world data in reliability engineering highlight the\nadvantageous features of our model in real-time adaptation, enhanced signal\nprediction with uncertainty quantification, and joint prediction for labels and\nsignals.","PeriodicalId":501062,"journal":{"name":"arXiv - CS - Systems and Control","volume":"10 1","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-03-25","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Real-time Adaptation for Condition Monitoring Signal Prediction using Label-aware Neural Processes\",\"authors\":\"Seokhyun Chung, Raed Al Kontar\",\"doi\":\"arxiv-2403.16377\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"Building a predictive model that rapidly adapts to real-time condition\\nmonitoring (CM) signals is critical for engineering systems/units.\\nUnfortunately, many current methods suffer from a trade-off between\\nrepresentation power and agility in online settings. For instance, parametric\\nmethods that assume an underlying functional form for CM signals facilitate\\nefficient online prediction updates. However, this simplification leads to\\nvulnerability to model specifications and an inability to capture complex\\nsignals. On the other hand, approaches based on over-parameterized or\\nnon-parametric models can excel at explaining complex nonlinear signals, but\\nreal-time updates for such models pose a challenging task. In this paper, we\\npropose a neural process-based approach that addresses this trade-off. It\\nencodes available observations within a CM signal into a representation space\\nand then reconstructs the signal's history and evolution for prediction. Once\\ntrained, the model can encode an arbitrary number of observations without\\nrequiring retraining, enabling on-the-spot real-time predictions along with\\nquantified uncertainty and can be readily updated as more online data is\\ngathered. Furthermore, our model is designed to incorporate qualitative\\ninformation (i.e., labels) from individual units. This integration not only\\nenhances individualized predictions for each unit but also enables joint\\ninference for both signals and their associated labels. 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引用次数: 0
摘要
建立一个能快速适应实时状态监测(CM)信号的预测模型对于工程系统/单位来说至关重要。不幸的是,目前的许多方法都在在线设置中的代表性和敏捷性之间做了权衡。例如,假设 CM 信号具有基本函数形式的参数方法有助于高效的在线预测更新。然而,这种简化会导致易受模型规范的影响,无法捕捉复杂信号。另一方面,基于过参数化或非参数模型的方法可以很好地解释复杂的非线性信号,但此类模型的实时更新是一项具有挑战性的任务。在本文中,我们提出了一种基于神经过程的方法来解决这一权衡问题。它将 CM 信号中的可用观测值编码到表示空间中,然后重建信号的历史和演变过程,以便进行预测。经过训练后,该模型可以对任意数量的观测数据进行编码,而无需重新训练,从而实现现场实时预测和量化不确定性,并可随着更多在线数据的收集而随时更新。此外,我们的模型在设计上还纳入了单个单元的定性信息(即标签)。这种整合不仅增强了对每个单元的个性化预测,还实现了对信号及其相关标签的联合推断。对可靠性工程中的合成数据和实际数据进行的数值研究,突出了我们的模型在实时适应、增强的不确定性量化信号预测以及标签和信号联合预测方面的优势特点。
Real-time Adaptation for Condition Monitoring Signal Prediction using Label-aware Neural Processes
Building a predictive model that rapidly adapts to real-time condition
monitoring (CM) signals is critical for engineering systems/units.
Unfortunately, many current methods suffer from a trade-off between
representation power and agility in online settings. For instance, parametric
methods that assume an underlying functional form for CM signals facilitate
efficient online prediction updates. However, this simplification leads to
vulnerability to model specifications and an inability to capture complex
signals. On the other hand, approaches based on over-parameterized or
non-parametric models can excel at explaining complex nonlinear signals, but
real-time updates for such models pose a challenging task. In this paper, we
propose a neural process-based approach that addresses this trade-off. It
encodes available observations within a CM signal into a representation space
and then reconstructs the signal's history and evolution for prediction. Once
trained, the model can encode an arbitrary number of observations without
requiring retraining, enabling on-the-spot real-time predictions along with
quantified uncertainty and can be readily updated as more online data is
gathered. Furthermore, our model is designed to incorporate qualitative
information (i.e., labels) from individual units. This integration not only
enhances individualized predictions for each unit but also enables joint
inference for both signals and their associated labels. Numerical studies on
both synthetic and real-world data in reliability engineering highlight the
advantageous features of our model in real-time adaptation, enhanced signal
prediction with uncertainty quantification, and joint prediction for labels and
signals.