2021
DOI: 10.1021/acssuschemeng.1c04677
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Planning a Water–Food–Energy–Ecology Nexus System toward Sustainability: A Copula Bi-level Fractional Programming Method

Abstract: A copula bi-level fractional programming (CBFP) method is developed for planning the water–food–energy–ecology (WFEE) nexus system. CBFP has advantages in (i) dealing with ratio-objective problems, (ii) balancing the conflicts between hierarchical decision levels, and (iii) reflecting joint risks of correlated uncertain variables. Then, a CBFP–WFEE model is formulated to the Ili-Balkhash basin in Central Asia, in which 108 scenarios associated with different irrigation efficiencies, ecological-flow demands (EB… Show more

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Cited by 13 publications
(4 citation statements)
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“…Therefore, the study narrows it down to some important empirical studies to clarify the growth emissions nexus. Salman et al (2019) studied the affiliation between GDP and CO 2 e. The conclusions demonstrated that GDP negatively impacts emissions in East Asian countries (Zhang, Li, et al, 2021) observed an optimistic association between the growth emission in China. The outcomes emphasized that economic expansion is the stimulating factor in increasing emissions.…”
Section: Review Of the Literaturementioning
confidence: 99%
See 1 more Smart Citation
“…Therefore, the study narrows it down to some important empirical studies to clarify the growth emissions nexus. Salman et al (2019) studied the affiliation between GDP and CO 2 e. The conclusions demonstrated that GDP negatively impacts emissions in East Asian countries (Zhang, Li, et al, 2021) observed an optimistic association between the growth emission in China. The outcomes emphasized that economic expansion is the stimulating factor in increasing emissions.…”
Section: Review Of the Literaturementioning
confidence: 99%
“…The principal objective of the current investigation is to enhance understanding of the complex interrelationships between food production, food exports, water productivity, and CO 2 e in China. This study aims to contribute to understanding China's food production and export operations' environmental impact by examining empirical data and incorporating preceding research directed by Smith et al (2016) and Zhang, Li, et al (2021). The findings of this research endeavor might potentially provide valuable insights that can be used to shape policies and practices to reduce the environmental footprint associated with these activities.…”
mentioning
confidence: 99%
“…Climate change can influence the availability of solar energy resources, and climate variables such as sunshine duration, solar radiation intensity (SRI), temperature, and humidity can further affect the feasibility of the solar energy system. , Changes in climate variables are spatially heterogeneous, which can cause the spatial and temporal variations of solar power generation across regions . Global climate models (GCMs) are useful for future climate projections and relevant impact evaluations, such as atmospheric condition prediction, energy system planning, and hydrological modeling. , Due to the course spatial resolution, GCMs’ outputs cannot be used directly as inputs to local scale. , Random forest (RF) is desired for bridging the empirical relationship between large-scale atmospheric variables and local climate observations. , Previously, the RF method was widely used for cleaner energy generation, solar radiation and wind speed forecasting, water resources management, and vegetation classification, especially showing advantages in climate analysis and renewable energy sources prediction. , Srivastava et al used the RF model to forecast the solar radiation, and results indicated that the RF model has a good performance.…”
Section: Introductionmentioning
confidence: 99%
“…12 Changes in climate variables are spatially heterogeneous, which can cause the spatial and temporal variations of solar power generation across regions. 14 Global climate models (GCMs) are useful for future climate projections and relevant impact evaluations, such as atmospheric condition prediction, energy system planning, and hydrological modeling. 15,16 Due to the course spatial resolution, GCMs' outputs cannot be used directly as inputs to local scale.…”
Section: Introductionmentioning
confidence: 99%