120 research outputs found
China's New Diplomacy Towards Southeast Asia: Motivations, Strategies, and Implications
The mutually beneficial China-Southeast Asia relationship is a successful South-South cooperation in international political economy. For China to become a truly responsible global power, it will also need to pay more attention to other development issues such as the environment and rule of law
China's Global Hunt for Oil
In this lecture in the Israel and Palestine "Looking Ahead Twenty-five Years" series, Dr. Zhiqun Zhu elaborates on China's efforts to augment political and economic ties with the Middle East, Africa and Latin America
A novel approach for denoising electrocardiogram signals to detect cardiovascular diseases using an efficient hybrid scheme
BackgroundElectrocardiogram (ECG) signals are inevitably contaminated with various kinds of noises during acquisition and transmission. The presence of noises may produce the inappropriate information on cardiac health, thereby preventing specialists from making correct analysis.MethodsIn this paper, an efficient strategy is proposed to denoise ECG signals, which employs a time-frequency framework based on S-transform (ST) and combines bi-dimensional empirical mode decomposition (BEMD) and non-local means (NLM). In the method, the ST maps an ECG signal into a subspace in the time frequency domain, then the BEMD decomposes the ST-based time-frequency representation (TFR) into a series of sub-TFRs at different scales, finally the NLM removes noise and restores ECG signal characteristics based on structural self-similarity.ResultsThe proposed method is validated using numerous ECG signals from the MIT-BIH arrhythmia database, and several different types of noises with varying signal-to-noise (SNR) are taken into account. The experimental results show that the proposed technique is superior to the existing wavelet based approach and NLM filtering, with the higher SNR and structure similarity index measure (SSIM), the lower root mean squared error (RMSE) and percent root mean square difference (PRD).ConclusionsThe proposed method not only significantly suppresses the noise presented in ECG signals, but also preserves the characteristics of ECG signals better, thus, it is more suitable for ECG signals processing
Spring Flood Forecasting Based on the WRF-TSRM Mode
The snowmelt process is becoming more complex in the context of global warming, and the current existing studies are not effective in using the short-term prediction model to drive the distributed hydrological model to predict snowmelt floods. In this study, we selected the Juntanghu Watershed in Hutubi County of China on the north slope of the Tianshan Mountains as the study area with which to verify the snowmelt flood prediction accuracy of the coupling model. The weather research and forecasting (WRF) model was used to drive a double-layer distributed snowmelt runoff model called the Tianshan Snowmelt Runoff Model (TSRM), which is based on multi-year field snowmelt observations. Moreover, the data from NASA’s moderate resolution imaging spectroradiometer (MODIS) was employed to validate the snow water equivalent during the snow-melting period. Results show that, based on the analysis of the flow lines in 2009 and 2010, the WRF-driven TSRM has an overall 80% of qualification ratios (QRs), with determination coefficients of 0.85 and 0.82 for the two years, respectively, which demonstrates the high accuracy of the model. However, due to the influence of the ablation of frozen soils, the forecasted flood peak is overestimated. This problem can be solved by an improvement to the modeled frozen soil layers. The conclusion reached in this study suggests that the WRF-driven TSRM can be used to forecast short-term snowmelt floods on the north slope of the Tianshan Mountains, which can effectively improve the local capacity for the forecasting and early warning of snowmelt floods
Uncertainty-inspired Open Set Learning for Retinal Anomaly Identification
Failure to recognize samples from the classes unseen during training is a
major limit of artificial intelligence (AI) in real-world implementation of
retinal anomaly classification. To resolve this obstacle, we propose an
uncertainty-inspired open-set (UIOS) model which was trained with fundus images
of 9 common retinal conditions. Besides the probability of each category, UIOS
also calculates an uncertainty score to express its confidence. Our UIOS model
with thresholding strategy achieved an F1 score of 99.55%, 97.01% and 91.91%
for the internal testing set, external testing set and non-typical testing set,
respectively, compared to the F1 score of 92.20%, 80.69% and 64.74% by the
standard AI model. Furthermore, UIOS correctly predicted high uncertainty
scores, which prompted the need for a manual check, in the datasets of rare
retinal diseases, low-quality fundus images, and non-fundus images. This work
provides a robust method for real-world screening of retinal anomalies
Time-division-multiplexed few-mode passive optical network
We demonstrate the first few-mode-fiber based passive optical network, effectively utilizing mode multiplexing to eliminate combining loss for upstream traffic. Error-free performance has been achieved for 20-km low-crosstalk 3-mode transmission in a commercial GPON system carrying live Ethernet traffic. The alternative approach of low modal group delay is also analyzed with simulation results over 10 modes
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