说明:双击或选中下面任意单词,将显示该词的音标、读音、翻译等;选中中文或多个词,将显示翻译。
您的位置:首页 -> 句库 -> 农业需水预测
1.
Estimation of water demands for agriculture and approaches for establishing water-saving and high-effciency agriculture in Gansu in the forthcoming 30 years;
近30年甘肃省农业需水预测与节水高效农业建设途径
2.
Prediction and analysis of agricultural water requirement in the Sangong River watershed,Xinjiang
新疆三工河流域农业需水量预测与分析
3.
Research on the Industrial Water Demand Prediction and Sewage Reuse in Industry of Xi an;
西安市工业需水量预测及污水回用于工业研究
4.
The Dividing Area of Agricultural Irrigation and Water-saving Forecast Potential in Shandong Province;
山东省灌溉农业分区及节水潜力预测
5.
Demand Forecast in Supply Chain Management of the Agricultural Machine Manufacturing Enterprise;
农机制造企业供应链管理中的需求预测
6.
A Forecast Model of Rural Labors Based on the Substitution of Agro-mechanism;
基于农业机械替代作用的农业劳动力需求预测模型
7.
consumption level method of demand forecasting
需求量预测消费水平法
8.
Prediction method for the operation level of agricultural mechanization in Heilongjiang Province
黑龙江省农业机械化作业水平预测方法
9.
Forecast of the Profit and Loss of Agricultural Moisture Based on Fuzzy GM(1,1) Model;
基于模糊GM(1,1)模型的农业水分盈亏预测
10.
Forecast of the Water Consumption in Agriculture Based on Grey Markov Model;
基于灰色马尔可夫模型的农业用水量预测
11.
Quantificational Forecast of Farm Mechanization Level in Jilin Province from Year 2005 to 2015;
2005~2015年吉林省农机化作业水平定量预测
12.
Prediction Model of Agricultural Mechanization Level in China Based on GM(1,1)
基于灰色GM(1,1)的农业机械化水平预测模型
13.
Prediction of Agricultural Water Consumption Based on GM(1,1) Model with the Improved Background Value
基于改进背景值的GM(1,1)模型的农业用水量预测
14.
Study on Water Demand Forecast in Water Supply Planning of TEDA;
开发区给水规划中需水量预测的研究
15.
Research and application of the prediction of reclaimed water demand in city
城市再生水需水量预测的研究与应用
16.
Application of the improved gray model on the prediction of city water demand in industry
改进的灰色模型在城市工业需水量预测中的应用
17.
Demand prediction of agricultural products in northwest of China in 2010;
我国西北地区2010年农产品需求预测
18.
Demand Forecast for Specialized Personnel of Oil Enterprises;
石油企业专业队伍需求预测方法研究