Journal of Applied Mathematics

  • J. Appl. Math.
  • Volume 2014, Special Issue (2013), Article ID 673485, 10 pages.

Water Demand Forecast in the Baiyangdian Basin with the Extensive and Low-Carbon Economic Modes

T. L. Qin, D. H. Yan, G. Wang, and J. Yin

Full-text: Open access

Abstract

The extensive and low-carbon economic modes were constructed on the basis of population, urbanization level, economic growth rate, industrial structure, industrial scale, and ecoenvironmental water requirement. The objective of this paper is to quantitatively analyze effects of these two economic modes on regional water demand. Productive and domestic water demands were both derived by their scale and quota. Ecological water calculation involves the water within stream, wetland, and cities and towns. Total water demand of the research region was obtained based on the above three aspects. The research method was applied in the Baiyangdian basin. Results showed that total water demand with the extensive economic mode would increase by 1.27 billion m3, 1.53 billion m3, and 2.16 billion m3 in 2015, 2020, and 2030, respectively, compared with that with low-carbon mode.

Article information

Source
J. Appl. Math., Volume 2014, Special Issue (2013), Article ID 673485, 10 pages.

Dates
First available in Project Euclid: 1 October 2014

Permanent link to this document
https://projecteuclid.org/euclid.jam/1412178117

Digital Object Identifier
doi:10.1155/2014/673485

Citation

Qin, T. L.; Yan, D. H.; Wang, G.; Yin, J. Water Demand Forecast in the Baiyangdian Basin with the Extensive and Low-Carbon Economic Modes. J. Appl. Math. 2014, Special Issue (2013), Article ID 673485, 10 pages. doi:10.1155/2014/673485. https://projecteuclid.org/euclid.jam/1412178117


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