19 results on '"Yang, Sihang"'
Search Results
2. Performance assessment of global open‐access digital elevation models in China mainland coastal region.
- Author
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Ding, Hu, Liu, Junhao, Yang, Sihang, Luo, Junxing, Liu, Yi, Liang, Xinyi, Na, Jiaming, Jiang, Shuai, and Fu, Yingchun
- Subjects
DIGITAL elevation models ,STANDARD deviations - Abstract
Digital elevation models (DEMs) are the fundamental datasets for coastal ecosystem monitoring, and several global open‐accessed DEMs have recently been reported. In coastal regions, a comprehensive vertical accuracy assessment of these DEMs has not yet been carried out. In this study, eight open‐access DEM datasets, including SRTM‐3, SRTM‐1, TanDEM‐X, ASTER GDEM v3, MERIT DEM, AW3D30, NASADEM, and CoastalDEM, were investigated across the coastal region of the Chinese mainland using high accuracy ICESat‐2 data as a reference. Statistical tools including mean absolute error (MAE) and root mean square error (RMSE) were selected to describe the data error/uncertainty and spatial distribution. Moreover, the effects of elevation ranging, slope degree, geomorphogenesis and landuse on vertical accuracy were further analyzed to assess their applicability. The assessment results revealed that the CoastalDEM and NASADEM datasets had the highest accuracy, with MAE values of 1.68 and 1.88 m and RMSE values of 2.55 and 2.61 m, for 3‐arc second and 1‐arc second resolution DEMs, respectively. Other DEMs with close accuracies include AW3D30, SRTM‐1, MERIT, and SRTM‐3 DEM. The results proved that the CoastalDEM outperformed other datasets, indicating its applicability in coastal regions. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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3. Long-term successional dynamics of microbial association networks in anaerobic digestion processes
- Author
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Wu, Linwei, Yang, Yunfeng, Chen, Si, Zhao, Mengxin, Zhu, Zhenwei, Yang, Sihang, Qu, Yuanyuan, Ma, Qiao, He, Zhili, Zhou, Jizhong, and He, Qiang
- Published
- 2016
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4. Thickness-dependent fast wetting transitions due to the atomic layer deposition of zinc oxide on a micro-pillared surface.
- Author
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Duan, Libing, Ji, Xiangyang, Yang, Yajie, Yang, Sihang, Lv, Xinjun, and Xie, Yanbo
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- 2020
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5. Traditional Chinese medicine on treating myelosuppression after chemotherapy: A protocol for systematic review and meta-analysis.
- Author
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Sihang Yang, Hong Che, Li Xiao, Bingjie Zhao, Songshan Liu, Yang, Sihang, Che, Hong, Xiao, Li, Zhao, Bingjie, and Liu, Songshan
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- 2021
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6. Fire affects the taxonomic and functional composition of soil microbial communities, with cascading effects on grassland ecosystem functioning.
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Yang, Sihang, Zheng, Qiaoshu, Yang, Yunfeng, Yuan, Mengting, Ma, Xingyu, Chiariello, Nona R., Docherty, Kathryn M., Field, Christopher B., Gutknecht, Jessica L. M., Hungate, Bruce A., Niboyet, Audrey, Le Roux, Xavier, and Zhou, Jizhong
- Abstract
Fire is a crucial event regulating the structure and functioning of many ecosystems. Yet few studies have focused on how fire affects taxonomic and functional diversities of soil microbial communities, along with changes in plant communities and soil carbon (C) and nitrogen (N) dynamics. Here, we analyze these effects in a grassland ecosystem 9 months after an experimental fire at the Jasper Ridge Global Change Experiment site in California, USA. Fire altered soil microbial communities considerably, with community assembly process analysis showing that environmental selection pressure was higher in burned sites. However, a small subset of highly connected taxa was able to withstand the disturbance. In addition, fire decreased the relative abundances of most functional genes associated with C degradation and N cycling, implicating a slowdown of microbial processes linked to soil C and N dynamics. In contrast, fire stimulated above‐ and belowground plant growth, likely enhancing plant–microbe competition for soil inorganic N, which was reduced by a factor of about 2. To synthesize those findings, we performed structural equation modeling, which showed that plants but not microbial communities were responsible for significantly higher soil respiration rates in burned sites. Together, our results demonstrate that fire ‘reboots’ the grassland ecosystem by differentially regulating plant and soil microbial communities, leading to significant changes in soil C and N dynamics.Fire significantly increased environmental selection pressure on soil microbial community, where a small subset of highly connected taxa was able to withstand the disturbance. Fire decreased the relative abundances of most functional genes associated with C degradation and N cycling, but stimulated above‐ and belowground plant growth, likely enhancing plant–microbe competition for soil inorganic N. Plants but not microbial communities were responsible for significantly higher soil respiration rates in burned sites. [ABSTRACT FROM AUTHOR]
- Published
- 2020
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7. Konjac glucomannan-derived nitrogen-containing layered microporous carbon for high-performance supercapacitors.
- Author
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Lian, Jie, Pang, Dongqiang, Yang, Chun, Xiong, Lingshan, Cheng, Ru, Yang, Sihang, Lei, Jia, Chen, Tao, Yang, Fan, and Zhu, Wenkun
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GLUCOMANNAN ,SUPERCAPACITORS ,KONJAK ,SUPERCAPACITOR performance ,ELECTRIC capacity ,DENSITY currents - Abstract
Biomass-derived carbon-based materials represent a promising class of candidates for supercapacitors. Herein, we developed a new route for the fabrication of biomimetic layered microporous carbon for high-performance supercapacitors by hybridizing konjac glucomannan (KGM) with cysteine (Cys) using a cost-efficient method. When the mass ratio of Cys/KGM was 1 : 6 and the carbonized temperature was 800 °C (denoted as Cys/KGM-800-6), Cys/KGM-800-6 retained the atomic ratio of 5.89% nitrogen atoms. Additionally, the proportion of micropores in Cys/KGM-800-6 reached 93.02% with an average micropore diameter of 2.16 nm. In the capacitance test, the specific capacitance of Cys/KGM-800-6 was 351.7 F g
−1 and 226 F g−1 at the current densities of 1 A g−1 and 20 A g−1 , respectively. After 10 000 charge–discharge cycles, the hybrid materials maintained 95.57% of the specific capacitance of the pristine material at the current density of 1 A g−1 . This work demonstrates a potential synthetic method for boosting the performance of carbon-based supercapacitors through the hybridization of common natural biomass and amino acid. [ABSTRACT FROM AUTHOR]- Published
- 2020
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8. Long-term elevated CO2 shifts composition of soil microbial communities in a Californian annual grassland, reducing growth and N utilization potentials.
- Author
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Yang, Sihang, Zheng, Qiaoshu, Yuan, Mengting, Shi, Zhou, Chiariello, Nona R., Docherty, Kathryn M., Dong, Shikui, Field, Christopher B., Gu, Yunfu, Gutknecht, Jessica, Hungate, Bruce A., Le Roux, Xavier, Ma, Xingyu, Niboyet, Audrey, Yuan, Tong, Zhou, Jizhong, and Yang, Yunfeng
- Abstract
Abstract The continuously increasing concentration of atmospheric CO 2 has considerably altered ecosystem functioning. However, few studies have examined the long-term (i.e. over a decade) effect of elevated CO 2 on soil microbial communities. Using 16S rRNA gene amplicons and a GeoChip microarray, we investigated soil microbial communities from a Californian annual grassland after 14 years of experimentally elevated CO 2 (275 ppm higher than ambient). Both taxonomic and functional gene compositions of the soil microbial community were modified by elevated CO 2. There was decrease in relative abundance for taxa with higher ribosomal RNA operon (rrn) copy number under elevated CO 2 , which is a functional trait that responds positively to resource availability in culture. In contrast, taxa with lower rrn copy number were increased by elevated CO 2. As a consequence, the abundance-weighted average rrn copy number of significantly changed OTUs declined from 2.27 at ambient CO 2 to 2.01 at elevated CO 2. The nitrogen (N) fixation gene nifH and the ammonium-oxidizing gene amoA significantly decreased under elevated CO 2 by 12.6% and 6.1%, respectively. Concomitantly, nitrifying enzyme activity decreased by 48.3% under elevated CO 2 , albeit this change was not significant. There was also a substantial but insignificant decrease in available soil N, with both nitrate (NO 3 −) (−27.4%) and ammonium (NH 4 +) (−15.4%) declining. Further, a large number of microbial genes related to carbon (C) degradation were also affected by elevated CO 2 , whereas those related to C fixation remained largely unchanged. The overall changes in microbial communities and soil N pools induced by long-term elevated CO 2 suggest constrained microbial N decomposition, thereby slowing the potential maximum growth rate of the microbial community. Graphical abstract Unlabelled Image Highlights • Effects of 14 years of experimentally elevated CO 2 on soil microbes in a semi-arid grassland were examined. • The abundance-weighted average rrn copy number of significantly changed OTUs declined by elevated CO 2. • The nitrogen fixation gene nifH and the ammonium-oxidizing gene amoA significantly decreased by elevated CO 2. • Elevated CO 2 constrained microbial N decomposition, thereby slowing potential maximum growth rate of microbial community. [ABSTRACT FROM AUTHOR]
- Published
- 2019
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9. A Fully Test-time Training Framework for Semi-supervised Node Classification on Out-of-Distribution Graphs.
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Zhang, Jiaxin, Wang, Yiqi, Yang, Xihong, and Zhu, En
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GRAPH neural networks ,STIMULUS generalization ,CLASSIFICATION - Abstract
Graph neural networks (GNNs) have shown great potential in representation learning for various graph tasks. However, the distribution shift between the training and test sets poses a challenge to the efficiency of GNNs. To address this challenge, HomoTTT proposes a fully test-time training framework for GNNs to enhance the model's generalization capabilities for node classification tasks. Specifically, our proposed HomoTTT designs a homophily-based and parameter-free graph contrastive learning task with adaptive augmentation to guide the model's adaptation during the test-time training, allowing the model to adapt for specific target data. In the inference stage, HomoTTT proposes to integrate the original GNN model and the adapted model after TTT using a homophily-based model selection method, which prevents potential performance degradation caused by unconstrained model adaptation. Extensive experimental results on six benchmark datasets demonstrate the effectiveness of our proposed framework. Additionally, the exploratory study further validates the rationality of the homophily-based graph contrastive learning task with adaptive augmentation and the homophily-based model selection designed in HomoTTT. [ABSTRACT FROM AUTHOR]
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- 2024
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10. Mixed Graph Contrastive Network for Semi-supervised Node Classification.
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Yang, Xihong, Wang, Yiqi, Liu, Yue, Wen, Yi, Meng, Lingyuan, Zhou, Sihang, Liu, Xinwang, and Zhu, En
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GRAPH neural networks ,CLASSIFICATION ,SUPERVISED learning ,FORCE & energy - Abstract
Graph Neural Networks (GNNs) have achieved promising performance in semi-supervised node classification in recent years. However, the problem of insufficient supervision, together with representation collapse, largely limits the performance of the GNNs in this field. To alleviate the collapse of node representations in semi-supervised scenario, we propose a novel graph contrastive learning method, termed Mixed Graph Contrastive Network (MGCN). In our method, we improve the discriminative capability of the latent embeddings by an interpolation-based augmentation strategy and a correlation reduction mechanism. Specifically, we first conduct the interpolation-based augmentation in the latent space and then force the prediction model to change linearly between samples. Second, we enable the learned network to tell apart samples across two interpolation-perturbed views through forcing the correlation matrix across views to approximate an identity matrix. By combining the two settings, we extract rich supervision information from both the abundant unlabeled nodes and the rare yet valuable labeled nodes for discriminative representation learning. Extensive experimental results on six datasets demonstrate the effectiveness and the generality of MGCN compared to the existing state-of-the-art methods. The code of MGCN is available at https://github.com/xihongyang1999/MGCN on Github. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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11. Towards Faster Deep Graph Clustering via Efficient Graph Auto-Encoder.
- Author
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Ding, Shifei, Wu, Benyu, Ding, Ling, Xu, Xiao, Guo, Lili, Liao, Hongmei, and Wu, Xindong
- Abstract
Deep graph clustering (DGC) has been a promising method for clustering graph data in recent years. However, existing research primarily focuses on optimizing clustering outcomes by improving the quality of embedded representations, resulting in slow-speed complex models. Additionally, these methods do not consider changes in node similarity and corresponding adjustments in the original structure during the iterative optimization process after updating node embeddings, which easily falls into the representation collapse issue. We introduce an Efficient Graph Auto-Encoder (EGAE) and a dynamic graph weight updating strategy to address these issues, forming the basis for our proposed Fast DGC (FastDGC) network. Specifically, we significantly reduce feature dimensions using a linear transformation that preserves the original node similarity. We then employ a single-layer graph convolutional filtering approximation to replace multiple layers of graph convolutional neural network, reducing computational complexity and parameter count. During iteration, we calculate the similarity between nodes using the linearly transformed features and periodically update the original graph structure to reduce edges with low similarity, thereby enhancing the learning of discriminative and cohesive representations. Theoretical analysis confirms that EGAE has lower computational complexity. Extensive experiments on standard datasets demonstrate that our proposed method improves clustering performance and achieves a speedup of 2–3 orders of magnitude compared to state-of-the-art methods, showcasing outstanding performance. The code for our model is available at https://github.com/Marigoldwu/FastDGC. Furthermore, we have organized a portion of the DGC code into a unified framework, available at https://github.com/Marigoldwu/A-Unified-Framework-for-Deep-Attribute-Graph-Clustering. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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12. Parameter-Agnostic Deep Graph Clustering.
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Zhao, Han, Yang, Xu, and Deng, Cheng
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HIERARCHICAL clustering (Cluster analysis) ,FORECASTING - Abstract
Deep graph clustering, efficiently dividing nodes into multiple disjoint clusters in an unsupervised manner, has become a crucial tool for analyzing ubiquitous graph data. Existing methods have acquired impressive clustering effects by optimizing the clustering network under the parametric condition—predefining the true number of clusters (K
tr ). However, Ktr is inaccessible in pure unsupervised scenarios, in which existing methods are incapable of inferring the number of clusters (K), causing limited feasibility. This article proposes the first Parameter-Agnostic Deep Graph Clustering method (PADGC), which consists of two core modules: K-guidence clustering and topological-hierarchical inference, to infer K efficiently and gain impressive clustering predictions. Specifically, K-guidence clustering is employed to optimize the cluster assignments and discriminative embeddings in a mutual promotion manner under the latest updated K, even though K may deviate from Ktr . In turn, such optimized cluster assignments are utilized to explore more accurate K in the topological-hierarchical inference, which can split the dispersive clusters and merge the coupled ones. In this way, these two modules are complementarily optimized until generating the final convergent K and discriminative cluster assignments. Extensive experiments on several benchmarks, including graphs and images, can demonstrate the superiority of our method. The mean values of our inferred K, in 11 out of 12 datasets, deviates from Ktr by less than 1. Our method can also achieve competitive clustering effects with existing parametric deep graph clustering. [ABSTRACT FROM AUTHOR]- Published
- 2024
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13. Guiding Students in Constructing and Revising Models Rationally.
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Yang, Wenyuan, Chen, Sihang, and Liu, Cheng
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NEPHRONS ,MIDDLE schools ,TEACHING models ,STUDENTS - Abstract
Modeling is a core practice in science and is a meaningful way to learn the subject. This article introduces a modeling-based approach that highlights the idea that modeling is an iterative process and integrates the fundamental parts of scientists' work and key suggestions for teaching through modeling. The lesson "The Structure and Function of Kidneys" from a middle school biology course serves as an example of how to conduct the suggested modeling-based approach. By the end of the lesson, almost all students demonstrated a scientific understanding of the structure of nephrons and their functions. On the basis of the implementation of this lesson, we also provide further suggestions for modeling-based teaching. [ABSTRACT FROM AUTHOR]
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- 2024
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14. Semantic segmentation for plastic-covered greenhouses and plastic-mulched farmlands from VHR imagery.
- Author
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Niu, Bowen, Feng, Quanlong, Su, Shuai, Yang, Zhi, Zhang, Sihang, Liu, Shaotong, Wang, Jiudong, Yang, Jianyu, and Gong, Jianhua
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CONVOLUTIONAL neural networks ,REMOTE-sensing images ,LEARNING strategies ,GREENHOUSES ,SOIL moisture - Abstract
Due to their important role in maintaining temperature and soil moisture, agricultural plastic covers have been widely utilized around the globe for improving crop-growing conditions, which include both plastic-covered greenhouses (PCGs) and plastic-mulched farmlands (PMFs). However, it is a challenging and long-neglected issue to separate PCGs from PMFs due to their spectral similarity. The objective of this study is to propose a deep semantic segmentation model for accurate PCG and PMF mapping based on very high-resolution satellite images and to improve the model's spatial generalization capability using a transfer learning strategy. Specifically, the proposed semantic segmentation model has an encoder-decoder structure, where the encoder is composed of a new convolutional neural network for discriminative spatial feature learning, while the decoder utilizes a multi-task strategy to improve the predictions on the boundaries. Meanwhile, a transfer learning framework is adopted to increase mapping performance and generalization ability under limited samples. Experimental results in several typical regions across the Eurasian continent show that the proposed model could separate PCGs from PMFs accurately with a mean overall accuracy of 94.49% and an average mIoU of 0.8377. Ablation studies verify the role of encoder-decoder and transfer learning strategy in improving classification performance. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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15. A Feasibility Study of 2-D Microwave Thorax Imaging Based on the Supervised Descent Method.
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Zhang, Haolin, Li, Maokun, Yang, Fan, Xu, Shenheng, Yin, Yan, Zhou, Hongyu, Yang, Yubo, Zeng, Sihang, Shao, Jianchong, and Chiao, J.-C.
- Subjects
MICROWAVE imaging ,CHEST (Anatomy) ,GENEALOGY ,FEASIBILITY studies ,DIAGNOSTIC imaging - Abstract
In this paper, the application of the supervised descent method (SDM) for 2-D microwave thorax imaging is studied. The forward modeling problem is solved by the finite element-boundary integral (FE-BI) method. According to the prior information of human thorax, a 3-ellipse training set is generated offline. Then, the average descent direction between an initial background model and the training models is calculated. Finally, the reconstruction of the testing thorax model is achieved based on the average descent directions online. The feasibility using One-Step SDM for thorax imaging is studied. Numerical results indicate that the structural information of thorax can be reconstructed. It has potential for real-time imaging in future clinical diagnosis. [ABSTRACT FROM AUTHOR]
- Published
- 2021
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16. Experimental characterization of liquid film behavior during droplets–polyethylene particle collision.
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Ren, Xiang, Sun, Jingyuan, Huang, Zhengliang, Yang, Yao, Tian, Sihang, Wang, Jingdai, and Yang, Yongrong
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LIQUID films ,HIGH-speed photography ,CONTACT angle ,PARTICLES ,POLYETHYLENE ,DROPLETS - Abstract
Nowadays, the droplet–particle collision characteristics in the gas‐phase ethylene polymerization process are still unclear. The high‐speed photography and a quasi‐circle imaging approach are employed to study the collision interaction characteristics between liquid droplets and polyethylene particles. The liquid film evolution is studied through variations of the film thickness on the particle north pole, the dynamic contact angle, center angle and film thickness at the maximum extension. Results have found that for n‐hexane the threshold temperature of the recoil happening increases with increasing initial Weber number, but for 1‐hexene it is stable. Over 70°C evaporation and splash occurs immediately. Under low Weber numbers, the water droplet stays for damping oscillations, the reference stable height of which is linearly related to temperatures. Moreover, three regimes of film thickness variation with time are identified and mathematically described, while Regime 3 characteristics are found strongly dependent on the liquid species, Weber number, and particle temperature. [ABSTRACT FROM AUTHOR]
- Published
- 2020
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- View/download PDF
17. Frontispiece: The Interplay between Structure and Product Selectivity of CO2 Hydrogenation.
- Author
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Yang, Chengsheng, Liu, Sihang, Wang, Yanan, Song, Jimin, Wang, Guishuo, Wang, Shuai, Zhao, Zhi‐Jian, Mu, Rentao, and Gong, Jinlong
- Subjects
MANUFACTURED products - Published
- 2019
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18. Influence of the antioxidant on the long‐term ageing characteristics of oil–paper insulation and the deposition and migration of copper sulphide in oil‐immersed transformers.
- Author
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Yang, Lijun, Gao, Sihang, Li, Jinzhong, and Sun, Weidong
- Abstract
This paper investigated the influence of 2, 6‐di‐tert‐butyl‐p‐cresol (DBPC) on the long‐term ageing characteristics of oil–paper insulation and the deposition and migration of copper sulphide induced by the reaction of copper and dibenzyl disulphide (DBDS) in oil‐immersed transformers. A thermal ageing experiment at 130°C were designed and conducted by adding different concentrations of DBPC to the naphthenic mineral oil and after the experiments a set of characteristic parameters were tested. The result indicates that the excessive concentration (≥0.6%) of DBPC will slightly increase the ageing of insulating oil and increase the carboxyl group in the mineral oil, affecting the reaction of DBDS and copper, and the insulating paper wrapped on the copper strip was also aged seriously accordingly. Meanwhile, the deposition of copper sulphide on the insulating paper is found to be slightly increased with the increase of the concentration of DBPC. When insulating oil contains DBPC and DBDS, due to migration of DBDS–Cu and DBPC–Cu in oil, the copper ions in the oil would be fluctuating at a certain period of time. Although the addition of a small concentration of DBPC can improve the antioxygenic property of the insulting oil to some extent, the transformers that contain excessive concentration of DBPC may be more harmful than beneficial. [ABSTRACT FROM AUTHOR]
- Published
- 2016
- Full Text
- View/download PDF
19. Inhibition method for the degradation of oil–paper insulation and corrosive sulphur in a transformer using adsorption treatment.
- Author
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Yang, Lijun, Gao, Sihang, Deng, Bangfei, Zhang, Jiang, Sun, Weidong, and Hu, Ende
- Abstract
This study investigated the inhibitory effects of adsorption treatment on the degradation of oil–paper insulation and corrosive sulphur in oil. A thermal ageing experiment at 130°C was conducted using five different adsorbents to adsorb some impurities in oil on the 15th day of a 30 day ageing test, the related characteristics of oil–paper insulation before and after the adsorption treatment were measured and analysed. Meanwhile, a thermal ageing experiment at 150°C was also conducted before using five different adsorbents to adsorb dibenzyl disulphide (DBDS) in oil, energy dispersive X‐ray was used to evaluate the degree of the corrosion of windings. The result indicates that adsorption treatment is an effective method to inhibit the degradation of oil–paper insulation. A molecular sieve, silica gel and activated alumina can effectively improve the performance of oil–paper insulation. By contrast, the antioxidant (2, 6‐di‐tert‐butyl‐p‐cresol) can be also adsorbed by adsorbents, which accelerate the ageing degradation of the insulating oil. On the other hand, the adsorbents can adsorb DBDS in oil, but cannot remove all DBDS. The effect achieved from silica gel is especially significant, which not only effectively improves the performance of oil–paper insulation but also adsorbs DBDS in oil. [ABSTRACT FROM AUTHOR]
- Published
- 2016
- Full Text
- View/download PDF
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