scispace - formally typeset
Search or ask a question
Institution

Dalian University of Technology

EducationDalian, China
About: Dalian University of Technology is a education organization based out in Dalian, China. It is known for research contribution in the topics: Catalysis & Finite element method. The organization has 60890 authors who have published 71921 publications receiving 1188356 citations. The organization is also known as: Dàlián Lǐgōng Dàxué.


Papers
More filters
Journal ArticleDOI
TL;DR: In this paper, the catalytic oxidation of toluene to CO2 and H2O over nanoflower spinel CoMn2O4 synthesized by the oxalic acid sol-gel method has been investigated.
Abstract: The catalytic oxidation of toluene to CO2 and H2O over nanoflower spinel CoMn2O4 synthesized by the oxalic acid sol–gel method has been investigated, and it demonstrates lower activation energy (35...

261 citations

Journal ArticleDOI
TL;DR: A fluorescent sensor, QA, based on acetamidoquinoline with DPA as receptor, was synthesized and demonstrates high selectivity for sensing Cd(2+) with about 40-fold enhancement in fluorescence quantum yield and picomolar sensitivity.

260 citations

Journal ArticleDOI
TL;DR: Analysis of physicochemical properties confirmed that microwave degradation might not markedly change the chemical components of the polysaccharides and exerted an inhibitory effect on oxidative damage.

260 citations

Journal ArticleDOI
TL;DR: The experiments of TerraSAR-X image demonstrate that the DCAE network can extract efficient features and perform better classification result compared with some related algorithms.
Abstract: Synthetic aperture radar (SAR) image classification is a hot topic in the interpretation of SAR images. However, the absence of effective feature representation and the presence of speckle noise in SAR images make classification difficult to handle. In order to overcome these problems, a deep convolutional autoencoder (DCAE) is proposed to extract features and conduct classification automatically. The deep network is composed of eight layers: a convolutional layer to extract texture features, a scale transformation layer to aggregate neighbor information, four layers based on sparse autoencoders to optimize features and classify, and last two layers for postprocessing. Compared with hand-crafted features, the DCAE network provides an automatic method to learn discriminative features from the image. A series of filters is designed as convolutional units to comprise the gray-level cooccurrence matrix and Gabor features together. Scale transformation is conducted to reduce the influence of the noise, which integrates the correlated neighbor pixels. Sparse autoencoders seek better representation of features to match the classifier, since training labels are added to fine-tune the parameters of the networks. Morphological smoothing removes the isolated points of the classification map. The whole network is designed ingeniously, and each part has a contribution to the classification accuracy. The experiments of TerraSAR-X image demonstrate that the DCAE network can extract efficient features and perform better classification result compared with some related algorithms.

260 citations

Journal ArticleDOI
TL;DR: In this paper, the authors compared the performance of a smaller microbial fuel cell (SMFC, 28mL) with a larger MFC (LMFC, 520mL) in fed-batch mode.

260 citations


Authors

Showing all 61205 results

NameH-indexPapersCitations
Yang Yang1712644153049
Yury Gogotsi171956144520
Hui Li1352982105903
Michael I. Posner134414104201
Anders Hagfeldt12960079912
Jian Zhou128300791402
Chao Zhang127311984711
Bin Wang126222674364
Chi Lin1251313102710
Tao Zhang123277283866
Bo Wang119290584863
Zhenyu Zhang118116764887
Liang Cheng116177965520
Anthony G. Fane11256540904
Xuelong Li110104446648
Network Information
Related Institutions (5)
Tsinghua University
200.5K papers, 4.5M citations

95% related

University of Science and Technology of China
101K papers, 2.4M citations

95% related

Zhejiang University
183.2K papers, 3.4M citations

93% related

Chinese Academy of Sciences
634.8K papers, 14.8M citations

93% related

Shanghai Jiao Tong University
184.6K papers, 3.4M citations

92% related

Performance
Metrics
No. of papers from the Institution in previous years
YearPapers
2023167
2022838
20216,974
20206,457
20196,261
20185,375