TY - JOUR
T1 - Automated zone-specific irrigation with wireless sensor/actuator network and adaptable decision support
AU - Goumopoulos, Christos
AU - O'Flynn, Brendan
AU - Kameas, Achilles
PY - 2014/7
Y1 - 2014/7
N2 - Precision irrigation based on the "speaking plant" approach can save water and maximize crop yield, but implementing irrigation control can be challenging in system integration and decision making. In this paper we describe the design of an adaptable decision support system and its integration with a wireless sensor/actuator network (WSAN) to implement autonomous closed-loop zone-specific irrigation. Using an ontology for defining the application logic emphasizes system flexibility and adaptability and supports the application of automatic inferential and validation mechanisms. Furthermore, a machine learning process has been applied for inducing new rules by analyzing logged datasets for extracting new knowledge and extending the system ontology in order to cope, for example, with a sensor type failure or to improve the accuracy of a plant state diagnosis. A deployment of the system is presented for zone specific irrigation control in a greenhouse setting. Evaluation of the developed system was performed in terms of derivation of new rules by the machine learning process, WSN performance and mote lifetime. The effectiveness of the developed system was validated by comparing its agronomic performance to traditional agricultural practices.
AB - Precision irrigation based on the "speaking plant" approach can save water and maximize crop yield, but implementing irrigation control can be challenging in system integration and decision making. In this paper we describe the design of an adaptable decision support system and its integration with a wireless sensor/actuator network (WSAN) to implement autonomous closed-loop zone-specific irrigation. Using an ontology for defining the application logic emphasizes system flexibility and adaptability and supports the application of automatic inferential and validation mechanisms. Furthermore, a machine learning process has been applied for inducing new rules by analyzing logged datasets for extracting new knowledge and extending the system ontology in order to cope, for example, with a sensor type failure or to improve the accuracy of a plant state diagnosis. A deployment of the system is presented for zone specific irrigation control in a greenhouse setting. Evaluation of the developed system was performed in terms of derivation of new rules by the machine learning process, WSN performance and mote lifetime. The effectiveness of the developed system was validated by comparing its agronomic performance to traditional agricultural practices.
KW - Adaptive decision-making
KW - IEEE 802.15.4 standard
KW - Machine learning
KW - Plant-based irrigation
KW - Rule-based system
KW - Wireless sensor/actuator network
UR - https://www.scopus.com/pages/publications/84899801180
U2 - 10.1016/j.compag.2014.03.012
DO - 10.1016/j.compag.2014.03.012
M3 - Article
AN - SCOPUS:84899801180
SN - 0168-1699
VL - 105
SP - 20
EP - 33
JO - Computers and Electronics in Agriculture
JF - Computers and Electronics in Agriculture
ER -