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首页> 外文期刊>Indonesian Journal of Computing and Cybernetics Systems >Case-Based Reasoning Using The Nearest Neighbor Method For Detection Of Equipment Damage To PLN Power Plant
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Case-Based Reasoning Using The Nearest Neighbor Method For Detection Of Equipment Damage To PLN Power Plant

机译:基于案例的推理,使用最近的邻法检测PLN发电厂的设备损坏

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摘要

Predictive Maintenance (PdM) at the PLN Power Plant is a periodic monitoring of equipment activities before the equipment is damaged in more severe conditions. According to an expert or PdM owner that maintenance analysis is not appropriate and efficiency has an impact on maintenance costs that are not small. In real conditions, the PdM owner analyzes equipment damage based on previous cases of damage equipment. Then we need a computer-based intelligent system that can help detect damage to equipment. Based on the Literature Review that has been done, Case-Based Reasoning can solve new problems using answers or experiences from old problems such as imitating human abilities. Case-Based Reasoning Process there is the most important step, which is to find the highest similarity value or the level of similarity between new cases and old cases by adapting solutions from old cases that have occurred (Sankar, 2004). In this study the process of similarity or approach using Nearest Neighbor. Testing on the system uses 20 test data and the measurement of system performance uses confusion matrix. Evaluation of testing using confusion matrix can be seen how accurately the system can classify data correctly that is equal to 97.98%. Then the precision value of 95% represents the number of positive categorized data that is correctly divided by the total data classified as positive. Furthermore, the test results of the equipment damage detection test data at the PLN plant with a threshold value of 0.75 using the nearest neighbor, the system has a performance with a 95% sensitivity level.
机译:PLN电厂的预测维护(PDM)是在设备在更严重的条件下损坏之前的设备活动的周期性监测。根据专家或PDM所有者,维护分析不合适,效率对维护成本的影响不小。在实际条件下,PDM所有者根据先前的损坏设备分析设备损坏。然后我们需要一种基于计算机的智能系统,可以帮助检测设备损坏。基于已经完成的文献综述,基于案例的推理可以使用旧问题(例如模仿人体能力)的答案或经验来解决新问题。基于案例的推理过程有最重要的步骤,即通过调整发生的旧案例(Sankar,2004),找到新案例和旧案例之间的最高相似性值或新案例之间的相似程度。在这研究了使用最近邻居的相似性或方法的过程。在系统上测试使用20个测试数据并测量系统性能使用混淆矩阵。可以看到使用混淆矩阵的测试评估如何准确地将数据分类为等于97.98%。然后,95%的精确值表示正分类数据的数量,该数据被正确地划分为正的总数据。此外,使用最近邻居的PLN工厂的设备损坏检测测试数据的测试结果具有0.75的阈值,系统具有95%的灵敏度水平的性能。

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