275 research outputs found
A Preliminary Exploration of the Functional Value Assessment of Ecosystem Services in Aral City
Using the principles and methods of eco-economics as the research object, Aral City comprehensively expounds the ecological service functions such as ecosystem regulation of climate, carbon sequestration, soil conservation, water conservation and purification environment, and evaluates its economic value.The total value of the estimated 2021 is 1303.65 million yuan. At the same time, the importance of ecological service functions of urban ecosystems, from large to small, is to sequester carbon and release oxygen, purify the environment, maintain soil, conserd water sources, regulate the climate. The ecosystem service function which needs to be paid attention to in the concept of ecological construction and restoration of the next stage of ecological construction in Aral City
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Regional Precipitation Model Based on Geographically and Temporally Weighted Regression Kriging
High-resolution precipitation field has been widely used in hydrological and meteorological modeling. This paper establishes the spatial and temporal distribution model of precipitation in Hubei Province from 2006 through 2014, based on the data of 75 meteorological stations. This paper applies a geographically and temporally weighted regression kriging (GTWRK) model to precipitation and assesses the effects of timescales and a time-weighted function on precipitation interpolation. This work’s results indicate that: (1) the optimal timescale of the geographically and temporally weighted regression (GTWR) precipitation model is daily. The fitting accuracy is improved when the timescale is converted from months and years to days. The average mean absolute error (MAE), mean relative error (MRE), and the root mean square error (RMSE) decrease with scaling from monthly to daily time steps by 36%, 56%, and 35%, respectively, and the same statistical indexes decrease by 13%, 15%, and 14%, respectively, when scaling from annual to daily steps; (2) the time weight function based on an exponential function improves the predictive skill of the GTWR model by 3% when compared to geographically weighted regression (GWR) using a monthly time step; and (3) the GTWRK has the highest accuracy, and improves the MAE, MRE and RMSE by 3%, 10% and 1% with respect to monthly precipitation predictions, respectively, and by 3%, 10% and 5% concerning annual precipitation predictions, respectively, compared with the GWR results
Duration-adaptive Video Highlight Pre-caching for Vehicular Communication Network
Video traffic in vehicular communication networks (VCNs) faces exponential growth. However, different segments of most videos reveal various attractiveness for viewers, and the pre-caching decision is greatly affected by the dynamic service duration that edge nodes can provide services for mobile vehicles driving along a road. In this paper, we propose an efficient video highlight pre-caching scheme in the vehicular communication network, adapting to the service duration. Specifically, a highlight entropy model is devised to balance the segments’ popularity and continuity between segments within a period of time, based on which, an optimization problem of video highlight pre-caching is formulated. As this problem is non-convex and lacks a closed-form expression of the objective function, we decouple multiple variables by deriving candidate highlight segmentations of videos through wavelet transform, which can quickly and accurately find chunks with peak popularity values. Then the problem is solved iteratively by a highlight-direction trimming algorithm, which is proven to be locally optimal. Simulation results based on a real-world video dataset demonstrate significant improvement in highlight entropy and jitter compared to benchmark schemes
Duration-adaptive Video Highlight Pre-caching for Vehicular Communication Network
Video traffic in vehicular communication networks (VCNs) faces exponential
growth. However, different segments of most videos reveal various
attractiveness for viewers, and the pre-caching decision is greatly affected by
the dynamic service duration that edge nodes can provide services for mobile
vehicles driving along a road. In this paper, we propose an efficient video
highlight pre-caching scheme in the vehicular communication network, adapting
to the service duration. Specifically, a highlight entropy model is devised
with the consideration of the segments' popularity and continuity between
segments within a period of time, based on which, an optimization problem of
video highlight pre-caching is formulated. As this problem is non-convex and
lacks a closed-form expression of the objective function, we decouple multiple
variables by deriving candidate highlight segmentations of videos through
wavelet transform, which can significantly reduce the complexity of highlight
pre-caching. Then the problem is solved iteratively by a highlight-direction
trimming algorithm, which is proven to be locally optimal. Simulation results
based on real-world video datasets demonstrate significant improvement in
highlight entropy and jitter compared to benchmark schemes
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Adaptive Determination of the Flow Accumulation Threshold for Extracting Drainage Networks from DEMs
Selecting the flow accumulation threshold (FAT) plays a central role in extracting drainage networks from Digital Elevation Models (DEMs). This work presents the MR-AP (Multiple Regression and Adaptive Power) method for choosing suitable FAT when extracting drainage from DEMs. This work employs 36 sample sub-basins in Hubei (China) province. Firstly, topography, the normalized difference vegetation index (NDVI), and water storage change are used in building multiple regression models to calculate the drainage length. Power functions are fit to calculate the FAT of each sub-basin. Nine randomly chosen regions served as test sub-basins. The results show that: (1) water storage change and NDVI have high correlation with the drainage length, and the coefficient of determination (R2) ranges between 0.85 and 0.87; (2) the drainage length obtained from the Multiple Regression model using water storage change, NDVI, and topography as influence factors is similar to the actual drainage length, featuring a coefficient of determination (R2) equal to 0.714; (3) the MR-AP method calculates suitable FATs for each sub-basin in Hubei province, with a drainage length error equal to 5.13%. Moreover, drainage network extraction by the MR-AP method mainly depends on the water storage change and the NDVI, thus being consistent with the regional water-resources change
An Environmental-Economic Dispatch Method for Smart Microgrids Using VSS_QGA
The increasing penetration of distributed generation resources demands better economic performance of microgrids under the smart-grid era. In this paper, a comprehensive environmental-economic dispatch method for smart microgrids is proposed, with the objective for minimizing the summation of generation and emission costs in the system. As the proposed model belongs to a large-scale nonlinear and nonconvex programming problem, a hybrid heuristic algorithm, named variable step-size chaotic fuzzy quantum genetic algorithm (VSS_QGA), is developed. The algorithm utilizes complementarity among multiple techniques including the variable step size optimization, the rotation mutational angle fuzzy control, and the quantum genetic algorithm and combines them so as to solve problems with superior accuracy and efficiency. The effectiveness of the proposed model is demonstrated through a case study on an actual microgrid system and the advantages in the performance of VSS_QGA is also verified through the comparison with genetic algorithm (GA), the evolutionary programming approach (EP), the quantum genetic algorithm (QGA), and the chaotic quantum genetic algorithm (CQGA)
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