Method for noninvasive HV/MV switchgear motion analysis using kernel-based algorithm with adaptive feature extraction

IF 2.2 4区 工程技术 Q3 ENGINEERING, MULTIDISCIPLINARY Journal of Engineering Research Pub Date : 2025-09-01 DOI:10.1016/j.jer.2024.07.001
Nermina Ahmic-Beganovic, Emir Sokic, Almir Salihbegovic, Nedim Osmic
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Abstract

When designing, developing, and testing medium-voltage (MV) and high-voltage (HV) switchgears, it is of utmost importance to analyze the movements of their mechanical parts, such as drive trains, contact nozzles, etc. This ensures the safety of switchgear operations and enables detecting and predicting issues that could lead to component damage, power interruptions, reduced efficiency, or even switch failure. Conventional invasive measuring setups, including encoders and laser distance measurements, are often difficult or expensive to use, due to undesirable environmental properties such as high temperatures and/or high voltages, or dimensional constraints often encountered in testing laboratories, compact substations or confined equipment rooms. Video object tracking can be a viable solution in such conditions, allowing for the extraction of the trajectory of mechanical parts of an object under analysis. This paper proposes a novel kernel-based algorithm with adaptive feature extraction for precise colour-based object tracking through video processing. The implemented method is based on the principles of the CamShift algorithm, augmented with fusion with the Kalman filter for continuous estimation and prediction of the object’s position based on the available measurements while reducing sensitivity to noise. Beyond precise tracking of the object of interest, the algorithm automatically adapts the mask used in the standard CamShift algorithm by extracting and processing the features of the selected object. This approach exhibits flexibility and robustness in adverse industrial environments. It supports modifications according to user preferences and represents a cost-effective alternative to conventional methods, while performing real-time processing. Experimental results underscore this noninvasive approach is flexible, highly robust, and enables tracking of coloured markers even in challenging conditions like poor lighting, significant blur, and low frame rates.
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利用基于核的自适应特征提取算法进行无创高压/中压开关设备运动分析的方法
在设计、开发和测试中压(MV)和高压(HV)开关柜时,分析其机械部件(如传动系、接触喷嘴等)的运动是至关重要的。这确保了开关柜操作的安全性,并能够检测和预测可能导致组件损坏、电源中断、效率降低甚至开关故障的问题。传统的侵入式测量装置,包括编码器和激光距离测量,由于不理想的环境特性,如高温和/或高压,或者在测试实验室、紧凑的变电站或密闭的机房中经常遇到尺寸限制,通常使用起来困难或昂贵。在这种情况下,视频对象跟踪可以是一个可行的解决方案,允许提取被分析对象的机械部件的轨迹。本文提出了一种新的基于核的自适应特征提取算法,通过视频处理实现基于颜色的精确目标跟踪。所实现的方法基于CamShift算法的原理,增强了与卡尔曼滤波的融合,从而根据可用的测量值连续估计和预测目标的位置,同时降低了对噪声的敏感性。除了对感兴趣的对象进行精确跟踪之外,该算法还通过提取和处理所选对象的特征,自动适应标准CamShift算法中使用的掩码。这种方法在不利的工业环境中表现出灵活性和稳健性。它支持根据用户偏好进行修改,是传统方法的一种经济有效的替代方案,同时执行实时处理。实验结果强调了这种非侵入性方法是灵活的,高度鲁棒性的,即使在光线不足,明显模糊和低帧率等具有挑战性的条件下也能跟踪彩色标记。
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来源期刊
Journal of Engineering Research
Journal of Engineering Research ENGINEERING, MULTIDISCIPLINARY-
CiteScore
1.60
自引率
10.00%
发文量
181
审稿时长
20 weeks
期刊介绍: Journal of Engineering Research (JER) is a international, peer reviewed journal which publishes full length original research papers, reviews, case studies related to all areas of Engineering such as: Civil, Mechanical, Industrial, Electrical, Computer, Chemical, Petroleum, Aerospace, Architectural, Biomedical, Coastal, Environmental, Marine & Ocean, Metallurgical & Materials, software, Surveying, Systems and Manufacturing Engineering. In particular, JER focuses on innovative approaches and methods that contribute to solving the environmental and manufacturing problems, which exist primarily in the Arabian Gulf region and the Middle East countries. Kuwait University used to publish the Journal "Kuwait Journal of Science and Engineering" (ISSN: 1024-8684), which included Science and Engineering articles since 1974. In 2011 the decision was taken to split KJSE into two independent Journals - "Journal of Engineering Research "(JER) and "Kuwait Journal of Science" (KJS).
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