首页> 外文期刊>Current Journal of Applied Science and Technology >Hourly Real-Time Rainfall Estimation for ImprovedSmart Irrigation System Using Nearby AutomatedWeather Station
【24h】

Hourly Real-Time Rainfall Estimation for ImprovedSmart Irrigation System Using Nearby AutomatedWeather Station

机译:使用附近的自动气象站对改进的智能灌溉系统进行每小时实时降雨估算

获取原文
           

摘要

Smart irrigation is done by extracting climatic data such as historical data, off-site data, weather station, moisture sensor, wireless sensor network and web-based forecast. In existing sensor-based smart irrigation schedule, the decision-making of current irrigation depends on the current climatic data.? Irrigation control decision making systems can be improved by using neighborhood real-time rainfall for approximate local rainfall estimation. This method can result in better water saving techniques. This paper shows the development of low-cost smart irrigation system which consists of Automatic Weather Station (AWS), Central Irrigation Control Server, wireless modules, soil moisture sensors and solenoid values. For improved decision making an artificial neural network with back-propagation algorithm is implemented to estimate real-time hourly rainfall by using nearby AWS. Depending on the estimated rainfall input, the irrigation decision can be immediate irrigation if no rainfall or reschedule of irrigation for next cycle if expecting sufficient amount of rainfall or may be partial irrigation for insufficient rainfall. This method can utilize rainfall for fields and saves ground water resources. This method also avoids flooding and damage to crop due to significant rainfall just after scheduled irrigation. Avoiding of flooding is very curial especially in germination period of any crop. In study area of NCMRWF, National Capital Region (NCR) on particular day of 22~(nd) and 23~(rd) Jan 2015 continuous rainfall of 152 mm of record, shows that for irrigation area of 1000 m~(2) we can save up to 1,52,000 litre of fresh water by using real-time rainfall estimation technique. This technique can save ground/reservoir water resources in arid and semi-arid regions like India.
机译:通过提取历史数据,异地数据,气象站,湿度传感器,无线传感器网络和基于Web的天气预报等气候数据来完成智能灌溉。在现有的基于传感器的智能灌溉计划中,当前灌溉的决策取决于当前的气候数据。灌溉控制决策系统可以通过使用附近的实时降雨来估算局部降雨来进行改进。这种方法可以带来更好的节水技术。本文展示了低成本智能灌溉系统的发展,该系统包括自动气象站(AWS),中央灌溉控制服务器,无线模块,土壤湿度传感器和电磁阀值。为了改进决策,实施了带有反向传播算法的人工神经网络,以通过使用附近的AWS来估计实时每小时降雨。根据估计的降雨输入,如果没有降雨,则灌溉决定可以是立即灌溉,如果期望有足够的降雨,则可以为下一个周期重新安排灌溉时间表,或者如果降雨不足,则可以是部分灌溉。这种方法可以利用田间降雨并节省地下水资源。此方法还避免了计划灌溉后由于大量降雨而造成的洪水和对农作物的损害。避免洪水是非常有必要的,尤其是在任何农作物的发芽期。在NCMRWF的研究区域中,国家首都辖区(NCR)在2015年1月22日和23日的某一天连续降雨了152 mm的记录,表明对于1000 m〜(2)的灌溉面积,通过使用实时降雨估算技术,最多可以节省1,52,000升淡水。该技术可以节省印度等干旱和半干旱地区的地面/水库水资源。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号