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International Journal of Engineering Technology and Construction, 2022, 3(2); doi: 10.38007/IJETC.2022.030202.

Market Development and Prospects of Farmland Irrigation Remote Sensing Monitoring Technology

Author(s)

Turiman Bin Suandi

Corresponding Author:
Turiman Bin Suandi
Affiliation(s)

Universiti Putra Malaysia, Malaysia

Abstract

The increase in demand for agricultural products and population growth have led to water shortages, vigorous implementation of water-saving irrigation measures, and the development of accurate and efficient modern irrigated agriculture are long-term tasks for China's agricultural development. Irrigation management is one of the most important ways to implement the most stringent water management systems, and scientific irrigation management must be based on accurate and effective irrigation information. The traditional methods of information acquisition have the disadvantages of obtaining information, few monitoring points, time-consuming and laborious and long update period. This paper selects the application in the middle and upper reaches of the Yellow River, selects the HJIA // 1BCCD satellite data, and calculates and analyzes the distribution and changes of the vertical drought index and the revised vertical drought index in the two irrigation periods. The relationship between the threshold and the irrigated area determines the difference threshold. This paper calculates the irrigated area for both irrigations. Ground monitoring and statistics show that the results are reasonable. Based on the Landat TM data, a remote sensing irrigation area monitoring model based on the drought threshold is established, which can effectively and conveniently realize large-scale monitoring of the actual irrigation area. Provide technical support for real-time monitoring; provide a basis for effective integration of current irrigation status and scientific irrigation management decisions, thereby improving water use efficiency in irrigated areas and ensuring regional food security.

Keywords

Remote Sensing, Irrigated Area, HJ1A/1BCCD, Drought Index Difference Threshold

Cite This Paper

Turiman Bin Suandi. Market Development and Prospects of Farmland Irrigation Remote Sensing Monitoring Technology. International Journal of Engineering Technology and Construction (2022), Vol. 3, Issue 2: 14-30. https://doi.org/10.38007/IJETC.2022.030202.

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