Monitor and Distinguish Errors of Irrigation Region Hydrological Water Information Data
作者: 赵丽华 ：北京联合大学自动化学院，北京;
Abstract: Most of the irrigation regions can realize water and rainfall data automatic acquisition by the communi-cation and computer network of irrigation system on the basis of information framework. It is difficult to play an important role about all kinds of application based on real-time monitoring data analysis. The large number of information of water state trending evaluation in the irrigation regional canal system remains the real time monitoring data, and expands obviously the scope of understanding these infor-mation on the space and time coverage, and supports the scientific decision and engineering application for the irrigated area management. This paper proposed a distinguishing model of monitoring data error in the irrigation regional canal system. By exchanging the composite of blocking of information, merging the outcome of water trend prediction and judging the errors occur in which part according to union basic probability assign function, the proposed model is verified by numerical experiments.
文章引用: 赵丽华 (2016) 灌区渠系水情监测数据错误判别方法。 水资源研究， 5， 495-502. doi: 10.12677/JWRR.2016.55057
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