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1.
Study on the Mothod of Monitoring and Forecasting Soil Moisture Content (Drought);
墒情(旱情)监测与预测预报方法研究
2.
Forecast Soil Moisture Constent Based on GA-BP
基于GA-BP算法的土壤墒情预测
3.
Soil Moisture Computing System Based on Excel
基于Excel的土壤墒情计算系统
4.
Study on the Field Soil Moisture Monitoring System Based on SMS technology
基于短消息的农田墒情监测系统研究
5.
Study on the MODIS Remote Sensing Data Applied to the Soil Moisture Extraction;
将MODIS遥感数据应用于墒情信息提取的研究
6.
The Study and Development on the System of Soil Moisture Automatic Monitoring and Forecasting;
土壤墒情自动监测预报系统的开发与研究
7.
Pilot Study of the Forecasting Cropland Soil Moisture Content of Fenhe District in Shanxi Province;
山西省汾河灌区农田土壤墒情预报的初步研究
8.
Analysis of the variety of soil moisture in the cropland of Fenhe Irrigation District and countermeasures of using agricultural water;
汾河灌区农田土壤墒情变化及用水对策分析
9.
Development of Monitoring System and Study on Forecasting Model for Soil Moisture
土壤墒情监测系统开发与预报模型研究
10.
Assessment and Prediction of Soil Moisture in Songshan District of Chifeng City and Wengniute Banner
赤峰市松山区、翁牛特旗土壤墒情评估与预测
11.
Real-time Estimation of Soil Moisture Content Based on Precipitation of Automatic Weather Station
利用自动站逐日降水量实时估测土壤墒情
12.
Soil Moisture Monitoring System in Agricultural Areas(Shallow Dry Land) in Qinghai
青海省农业区(浅山旱地)土壤墒情监测系统
13.
Dynamic Evaluation of Agricultural Drought Based on Soil Moisture Simulation
基于土壤墒情模拟的农业干旱动态评估
14.
BACK-PROPAGATION NEURAL NETWORK MODEL FOR RED PEPPER SOIL MOISTURE FORECAST AT DIFFERENT DEPTHS
辣椒不同深度土壤墒情预报的BP神经网络模型
15.
Construction of Remote Sensing Monitoring Model for Spring Soil Moisture in Shandong Province
山东省春季土壤墒情遥感监测模型构建
16.
Soil Moisture Forecast Model Based on Meteorological Factors in Jinhua City
基于气象因子的金华市土壤墒情预测模型
17.
Research on regional farmland soil moisture monitoring and precision irrigation technology
区域农田土壤墒情监测与精量灌溉技术研究
18.
By using this system the soil moisture content in Beijing can be monitored and the distribution map and the isoline chart of soil moisture content can be plotted in time.
同时,系统还可利用增退墒模型、人工神经网络模型和时间序列模型进行土壤墒情预测和预报。