A Methodology for Evaluating and Scheduling Preventive Maintenance for a Thermo-Electric Unit Using Artificial Intelligence

Wasan Mahmood Ahmed, A. Ahmed, Osamah Abdulateef
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引用次数: 1

Abstract

Flow-production systems whose pieces are connected in a row may not have maintenance scheduling procedures fixed because problems occur at different times (electricity plants, cement plants, water desalination plants). Contemporary software and artificial intelligence (AI) technologies are used to fulfill the research objectives by developing a predictive maintenance program. The data of the fifth thermal unit of the power station for the electricity of Al Dora/Baghdad are used in this study. Three stages of research were conducted. First, missing data without temporal sequences were processed. The data were filled using time series hour after hour and the times were filled as system working hours, making the volume of the data relatively high for 2015-2016-2017. 2018 was utilized as a test year to assess the modeling work and validate the experimental results. In the second step, the artificial neural networks approach employs the python program as an AI, and the affinity ratio of real data using the performance measurement of the mean absolute error (MAE) was 0.005. To improve and reduce the value of absolute error, the genetic algorithm uses the python program and the convergence ratio became 0.001. It inferred that the algorithm is efficient in improving results. Thus, the genetic algorithm provided better results with fewer errors than the neural network alone. This concludes that the shown network has superior performance over others and the possibility of its long-term predictions for 2030. A Sing time series helped detect future cases by reading and inferring system data. The development of appropriate work plans will lower internal and external expenses of the systems and help integrate other capabilities by giving correct data sources of raw materials, costs, etc. To facilitate prediction for maintenance workers, an interface has been created that facilitates users to apply them using the python program represented by entering the times, an hour, a day, a month, a year, to predict the type and place of failure.
基于人工智能的热电机组预防性维护评估与调度方法
由于问题发生在不同的时间(发电厂、水泥厂、海水淡化厂),部件连成一排的流动生产系统可能没有固定的维护调度程序。现代软件和人工智能(AI)技术通过开发预测性维护程序来实现研究目标。本研究使用Al Dora/Baghdad电站第五热电机组的数据。研究进行了三个阶段。首先,对无时间序列的缺失数据进行处理。数据采用逐小时时间序列填充,时间以系统工作时间填充,因此2015-2016-2017年数据量较大。2018年作为测试年,评估模型工作并验证实验结果。第二步,人工神经网络方法采用python程序作为AI,使用平均绝对误差(MAE)的性能度量得到真实数据的亲和比为0.005。为了提高和降低绝对误差的值,遗传算法使用python程序,收敛比变为0.001。结果表明,该算法在改进结果方面是有效的。因此,遗传算法比单独的神经网络提供了更好的结果和更少的误差。结论是,所展示的网络具有优于其他网络的性能,并且有可能对2030年进行长期预测。Sing时间序列通过读取和推断系统数据来帮助检测未来的病例。制定适当的工作计划将降低系统的内部和外部费用,并通过提供原材料、成本等的正确数据来源,帮助整合其他能力。为了便于对维护人员进行预测,已经创建了一个界面,方便用户使用python程序来应用它们,通过输入时间(一小时、一天、一个月、一年)来预测故障的类型和位置。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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