| Literature DB >> 28698579 |
Wencong Yue1,2,3, Yanpeng Cai4,5,6, Linyu Xu2, Zhifeng Yang7,8, Xin'An Yin2, Meirong Su1.
Abstract
To improve the capabilities of conventional methodologies in facilitating industrial water allocation under uncertain conditions, an integrated approach was developed through the combination of operational research, uncertainty analysis, and violation risk analysis methods. The developed approach can (a) address complexities of industrial water resources management (IWRM) systems, (b) facilitate reflections of multiple uncertainties and risks of the system and incorporate them into a general optimization framework, and (c) manage robust actions for industrial productions in consideration of water supply capacity and wastewater discharging control. The developed method was then demonstrated in a water-stressed city (i.e., the City of Dalian), northeastern China. Three scenarios were proposed according to the city's industrial plans. The results indicated that in the planning year of 2020 (a) the production of civilian-used steel ships and machine-made paper & paperboard would reduce significantly, (b) violation risk of chemical oxygen demand (COD) discharge under scenario 1 would be the most prominent, compared with those under scenarios 2 and 3, (c) the maximal total economic benefit under scenario 2 would be higher than the benefit under scenario 3, and (d) the production of rolling contact bearing, rail vehicles, and commercial vehicles would be promoted.Entities:
Year: 2017 PMID: 28698579 PMCID: PMC5506039 DOI: 10.1038/s41598-017-04508-9
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379
Figure 1Uncertain feature of COD discharge in 57 industrial products of Dalian City. Based on the hybrid approach for data analysis, uncertain features of COD discharges in 57 industrial products of Dalian City can be described as probability density functions. Code numbers of products in the figure are listed in Table S3 of Supplementary Information.
Figure 2Output ratios of industrial products in 2020.
Figure 3Violation risks of COD discharge in Scenarios 1 to 3. The parameters of C1 and C2 indicate probability of the incident (i.e., failure to meet total allowable target on wastewater discharge) would be 0.05. The parameters of L1 and L2 indicate the lower and upper bounds of discharge caps in COD.
Figure 4Planning modifications in scenarios 1 and 2. The letter of “L” represents the lower bound of interval numbers. The letter of “U” represents the upper bound of interval numbers. The numbers after the letters “L” and “U” are the multiple α-cut levels.
Figure 5Industrial water and wastewater management under uncertain environmental-economic conditions.
Figure 6Industrial water resources management framework.
Figure 7Levels of DQI (Set ).
Transformation matrix.
| set B | Beta distribution function | |
|---|---|---|
| Shape parameters | Range endpoints (± | |
| V | (5, 5) | 10 |
| IV | (3, 3) | 20 |
| III | (1, 1) | 30 |
| II | (1, 1) | 40 |
| I | (1, 1) | 50 |