Constructing the Model of Water Value Balance and Simulation Platform of Urban Water System in Harbin, China

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This study proposed the theory of water value balance and built the dynamic model system, based on the water value balance index. To solve dynamic weight issues, the entropy weight model was used, while the gray forecasting model was used for supplement missing data. Simulation platform integrates mathematical module, simulation module, property database and spatial database of urban water system in Harbin, which based on Matlab, C#, CloudSim, Oracle, ArcGIS and its secondary development technology. The results showed that urban water systems had a strong capacity to utilize water to capture value between May and mid-September, the value obtained was not sufficient to compensate the loss caused in the periods from January to April and from late September to December. The loss of water due to unknown causes was close to 7%, while the cost of water quality restoration accounted for 0.89% of GDP.

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Advanced Materials Research (Volumes 1092-1093)

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1130-1138

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March 2015

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© 2015 Trans Tech Publications Ltd. All Rights Reserved

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