环境传感器系统预测性维护和异常检测的两步机器学习方法

IF 2.9 Q2 MULTIDISCIPLINARY SCIENCES MethodsX Pub Date : 2025-06-01 Epub Date: 2025-01-28 DOI:10.1016/j.mex.2025.103181
Saiprasad Potharaju , Ravi Kumar Tirandasu , Swapnali N. Tambe , Devyani Bhamare Jadhav , Dudla Anil Kumar , Shanmuk Srinivas Amiripalli
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引用次数: 0

摘要

环境传感器系统是监测基础设施和环境质量的重要手段,但由于传感器故障和环境异常等原因,环境传感器系统容易出现不可靠性问题。利用环境传感器遥测数据,本研究引入了一种新的方法,该方法结合了无监督和有监督的机器学习方法来检测异常并预测传感器故障。数据集包括传感器读数,如温度、湿度、CO、LPG和烟雾,没有可用的类别标签。这项研究在使用隔离森林无缝混合无监督异常检测来为以前未标记的数据点创建标签方面是新颖的。最后,这些生成的标签被用于训练有监督学习模型,如随机森林、神经网络(MLP Classifier)和AdaBoost,以便在新传感器数据被记录后立即预测异常。模型证实了所建议框架的准确性,而随机森林(Random Forest)、神经网络(Neural Network)和AdaBoost (AdaBoost)的有效性分别为99.93%、99.05%和98.04%。这种方法解决了一个关键的差距,将原始的、未标记的物联网传感器数据转化为预测性维护的可操作见解。该方法提供了一种可扩展、鲁棒的实时异常检测和传感器故障预测方法,极大地提高了环境监测系统的可靠性,推进了基础设施的智能化管理。•结合隔离森林异常标记和监督模型异常预测。•可扩展和适应各种物联网应用环境监测。•通过异常可视化提供可操作的见解,揭示传感器性能模式。
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A two-step machine learning approach for predictive maintenance and anomaly detection in environmental sensor systems
Environmental sensor systems are essential for monitoring infrastructure and environmental quality but are prone to unreliability caused by sensor faults and environmental anomalies. Using Environmental Sensor Telemetry Data, this study introduces a novel methodology that combines unsupervised and supervised machine learning approaches to detect anomalies and predict sensor failures. The dataset consisted of sensor readings such as temperature, humidity, CO, LPG, and smoke, with no class labels available. This research is novel in seamlessly blending unsupervised anomaly detection using Isolation Forest to create labels for data points that were previously unlabeled. Finally, these generated labels were used to train the supervised learning models such as Random Forest, Neural Network (MLP Classifier), and AdaBoost to predict anomalies in new sensor data as soon as it gets recorded. The models confirmed the proposed framework's accuracy, whereas Random Forest 99.93 %, Neural Network 99.05 %, and AdaBoost 98.04 % validated the effectiveness of the suggested framework. Such an approach addresses a critical gap, transforming raw, unlabeled IoT sensor data into actionable insights for predictive maintenance. This methodology provides a scalable and robust real-time anomaly detection and sensor fault prediction methodology that greatly enhances the reliability of the environmental monitoring systems and advances the intelligent infrastructure management.
  • Combines Isolation Forest for anomaly labeling and supervised models for anomaly prediction.
  • Scalable and adaptable for diverse IoT applications for environmental monitoring.
  • Provides actionable insights through anomaly visualization, revealing patterns in sensor performance.
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来源期刊
MethodsX
MethodsX Health Professions-Medical Laboratory Technology
CiteScore
3.60
自引率
5.30%
发文量
314
审稿时长
7 weeks
期刊介绍:
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