Safari Ashkan, Tehranidoost Mohammad Hosein, Sabahi Mehran
Faculty of Electrical and Computer Engineering , University of Tabriz , Tabriz, Iran.
Sci Rep. 2025 May 3;15(1):15511. doi: 10.1038/s41598-025-00583-5.
Multi-Level Inverters (MLIs) are commonly used in high-voltage, high-power industrial applications. In this regard, their reliability, and health optimal performance are in the first priority. However, as the number of switches in a multilevel inverter increases, it comes so common to occur faults within the system. Ensuring the reliability of MLI is an important concern in power industries, making effective fault detection methods essential. Developing precise physics-based, model-based, and hardware-based models for fault detection is challenging, largely due to unknown parameters and incomplete understanding of the physical processes within the system. At this end, the proposed paper presents a highly efficient hyper-tuned machine learning (ML) model known as Isolation Forest (IF). This algorithm is an unsupervised method used for anomaly detection, which isolates outliers by recursively partitioning data points, as an effective way for identifying faults or rare events in large datasets with minimal computational complexity of the MLI system. To test this algorithm, a 17-level Cascaded H-Bridge (CHB) inverter is simulated with several faults, the proposed IF model is tested. In the next phase, the proposed model compared to the others, based on the performance indicators of F1-Score, Precision, Recall, and Accuracy, which the highest results retained for IF to have an accurate unsupervised fault detection model, that smoothens the way for a fully automated, and self-healing industrial application system.
多电平逆变器(MLIs)常用于高压、大功率工业应用中。在这方面,它们的可靠性和健康最优性能是首要考虑因素。然而,随着多电平逆变器中开关数量的增加,系统内出现故障变得很常见。确保多电平逆变器的可靠性是电力行业的一个重要问题,因此有效的故障检测方法至关重要。开发基于精确物理、模型和硬件的故障检测模型具有挑战性,主要是由于系统内参数未知且对物理过程理解不完整。为此,本文提出了一种高效的超调谐机器学习(ML)模型,即孤立森林(IF)。该算法是一种用于异常检测的无监督方法,通过递归划分数据点来隔离异常值,是一种在多电平逆变器系统计算复杂度最小的情况下识别大型数据集中故障或罕见事件的有效方法。为了测试该算法,对一个带有多个故障的17电平级联H桥(CHB)逆变器进行了仿真,并对所提出的IF模型进行了测试。在下一阶段,根据F1分数、精度、召回率和准确率等性能指标,将所提出的模型与其他模型进行比较,IF模型保留了最高结果,从而拥有一个准确的无监督故障检测模型,为全自动、自愈的工业应用系统铺平了道路。