Advanced Monitoring and Management Systems for Improving Sustainability in Precision Irrigation

被引:152
作者
Adeyemi, Olutobi [1 ]
Grove, Ivan [1 ]
Peets, Sven [1 ]
Norton, Tomas [1 ,2 ]
机构
[1] Harper Adams Univ, Dept Engn, Newport TF10 7BP, Shrops, England
[2] Katholieke Univ L, Dept Biosyst, Div Anim & Human Hlth Engn, BIORES Res Grp M3, Kasteelpk Arenberg 30, B-3001 Leuven, Belgium
关键词
precision irrigation; adaptive decision support systems; model predictive control; crop yield; water savings; sustainability; CROP WATER-STRESS; WIRELESS SENSOR NETWORK; SURFACE RENEWAL ANALYSIS; MODEL-PREDICTIVE CONTROL; SENSIBLE HEAT-FLUX; SOIL-WATER; STOMATAL CONDUCTANCE; ELECTRICAL-CONDUCTIVITY; SPRINKLER IRRIGATION; CANOPY TEMPERATURE;
D O I
10.3390/su9030353
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Globally, the irrigation of crops is the largest consumptive user of fresh water. Water scarcity is increasing worldwide, resulting in tighter regulation of its use for agriculture. This necessitates the development of irrigation practices that are more efficient in the use of water but do not compromise crop quality and yield. Precision irrigation already achieves this goal, in part. The goal of precision irrigation is to accurately supply the crop water need in a timely manner and as spatially uniformly as possible. However, to maximize the benefits of precision irrigation, additional technologies need to be enabled and incorporated into agriculture. This paper discusses how incorporating adaptive decision support systems into precision irrigation management will enable significant advances in increasing the efficiency of current irrigation approaches. From the literature review, it is found that precision irrigation can be applied in achieving the environmental goals related to sustainability. The demonstrated economic benefits of precision irrigation in field-scale crop production is however minimal. It is argued that a proper combination of soil, plant and weather sensors providing real-time data to an adaptive decision support system provides an innovative platform for improving sustainability in irrigated agriculture. The review also shows that adaptive decision support systems based on model predictive control are able to adequately account for the time-varying nature of the soil-plant-atmosphere system while considering operational limitations and agronomic objectives in arriving at optimal irrigation decisions. It is concluded that significant improvements in crop yield and water savings can be achieved by incorporating model predictive control into precision irrigation decision support tools. Further improvements in water savings can also be realized by including deficit irrigation as part of the overall irrigation management strategy. Nevertheless, future research is needed for identifying crop response to regulated water deficits, developing improved soil moisture and plant sensors, and developing self-learning crop simulation frameworks that can be applied to evaluate adaptive decision support strategies related to irrigation.
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页数:29
相关论文
共 153 条
[71]   Better placement of soil moisture point measurements guided by 2D resistivity tomography for improved irrigation scheduling [J].
Kelly, B. F. J. ;
Acworth, R. I. ;
Greve, A. K. .
SOIL RESEARCH, 2011, 49 (06) :504-512
[72]  
Kirda C., 2002, 22 FAO CORP, P3
[73]   Water regulation, crop production, and agricultural water management-Understanding farmer perspectives on irrigation efficiency [J].
Knox, J. W. ;
Kay, M. G. ;
Weatherhead, E. K. .
AGRICULTURAL WATER MANAGEMENT, 2012, 108 :3-8
[74]   Wireless Sensor Network Design for Monitoring and Irrigation Control: User-centric Hardware and Software Development [J].
Kohanbash, David ;
Kantor, George ;
Martin, Todd ;
Crawford, Lauren .
HORTTECHNOLOGY, 2013, 23 (06) :725-734
[75]   Interpretation of electrical conductivity patterns by soil properties and geological maps for precision agriculture [J].
Kuehn, Juergen ;
Brenning, Alexander ;
Wehrhan, Marc ;
Koszinski, Sylvia ;
Sommer, Michael .
PRECISION AGRICULTURE, 2009, 10 (06) :490-507
[76]  
Lee B. B., 2016, RURAL CONNECT, V10, P15
[77]   Adoption and adaptation of scientific irrigation scheduling: trends from Washington, USA as of 1998 [J].
Leib, BG ;
Hattendorf, M ;
Elliott, T ;
Matthews, G .
AGRICULTURAL WATER MANAGEMENT, 2002, 55 (02) :105-120
[78]   Combining thermal and visible imagery for estimating canopy temperature and identifying plant stress [J].
Leinonen, I ;
Jones, HG .
JOURNAL OF EXPERIMENTAL BOTANY, 2004, 55 (401) :1423-1431
[79]   Spatiotemporal Variability of Soil Moisture as Affected by Soil Properties during Irrigation Cycles [J].
Li, Tao ;
Hao, Xinmei ;
Kang, Shaozhong .
SOIL SCIENCE SOCIETY OF AMERICA JOURNAL, 2014, 78 (02) :598-608
[80]   Irrigation scheduling strategies based on soil matric potential on yield and fruit quality of mulched-drip irrigated chili pepper in Northwest China [J].
Liu, Haijun ;
Yang, Huiying ;
Zheng, Jianhua ;
Jia, Dongdong ;
Wang, Jun ;
Li, Yan ;
Huang, Guanhua .
AGRICULTURAL WATER MANAGEMENT, 2012, 115 :232-241