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Prognostic Software Agents for Machinery Health Monitoring

机译:用于机械健康监测的预后软件代理

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Increasing levels of machinery automation for systems health monitoring are providing operators with larger amounts of raw data. However, transforming massive amounts of data into information useful for effective condition-based maintenance (CBM) remains an arduous task. New technology is needed to continually monitor machinery, to identify impending failures, and to accurately predict its remaining useful life. Prognostic software agents can satisfy this growing need as higher levels of machinery automation raise the cost requirements of continuous monitoring beyond the levels of human and company feasibility. Software agent technologies that can automatically perform useful work as human assistants and can readily be integrated into existing automation system environments, represent viable tools to improve machinery reliability and reduce maintenance costs. Software agents can be used to clone human intelligence, perform human-like reasoning, and interact with human clients. Agents can perform tedious, repetitive, time-consuming, or analytically complex tasks on behalf of people who may not have the time or requisite skills to perform these tasks themselves. Agents can serve as expert assistants in monitoring, troubleshooting, and predicting failures in complex machinery processes. Imparting intelligent processing functions into software agents will allow maintenance organizations to leverage valuable "corporate" knowledge across geographically distributed machinery plants, such as aircraft or ship fleets. Agents can be distributed when and where needed to enhance fleet operations, performance, and readiness. Their intelligence can be upgraded remotely. The human-agent team can provide higher levels of productivity at practically the same cost as that of just the human resource alone. This paper describes intelligent prognostic software agents for real-time machinery monitoring applications. The main functions of the prognostic agent include machinery performance assessment, historical data archiving, automated trending analysis, alarm prediction, fault prediction, and prognostic event logging. The prognostic software agent is a generic tool for maintenance personnel to implement CBM. It predicts future machinery faults and determines when maintenance should be carried out. By predicting machinery problems before they occur, unexpected breakdowns can be avoided. In the absence of significant trends, equipment overhaul periods may be rationally extended, thereby eliminating unnecessary maintenance work. The ability to predict future maintenance requirements leads to improved maintenance planning and cost management. Maintenance and repair decisions can be tied to actual plant operating conditions based on the severity of degrading trends and predicted plant problems.
机译:增加系统健康监测的机械自动化水平正在提供具有较大数量的原始数据的运营商。但是,将大量数据转换为可用于基于有效条件的维护(CBM)的信息仍然是一个艰巨的任务。需要新的技术来持续监控机器,以确定即将发生的失败,并准确地预测其剩余的使用寿命。预后软件代理可以满足这种日益增长的需求,因为更高水平的机械自动化提高了超越人类和公司可行性水平的持续监测的成本要求。软件代理技术可以自动执行有用的工作作为人类助理,并且可以容易地集成到现有的自动化系统环境中,代表可行的工具,以提高机械可靠性并降低维护成本。软件代理可用于克隆人类智能,执行人类的推理,并与人类客户互动。代理商可以代表可能没有时间或必要技能自己履行这些任务的人的人进行繁琐的,重复,耗时的或分析复杂的任务。代理商可以作为专家助理在监控,故障排除和预测复杂机械过程中的失败。将智能处理功能赋予软件代理商将允许维护组织在地理分布的机械设备(如飞机或船队)中利用有价值的“企业”知识。代理商可以在需要提高舰队操作,性能和准备时分发。他们的智慧可以远程升级。人类代理团队可以在几乎与单独的人力资源的成本实际上提供更高水平的生产率。本文介绍了用于实时机械监测应用的智能预后软件代理。预后代理的主要功能包括机械性能评估,历史数据归档,自动化趋势分析,报警预测,故障预测和预后事件测井。预后软件代理是维护人员实现CBM的通用工具。它预测未来的机械故障并确定应当进行维护何时进行。通过预测机器问题在发生之前,可以避免意外的故障。在没有显着趋势的情况下,设备大修时期可能是合理的延伸,从而消除了不必要的维护工作。预测未来维护需求的能力导致更好的维护规划和成本管理。基于降解趋势和预测植物问题的严重程度,维护和修复决策可以与实际植物操作条件相关联。

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