Task scheduling system for UAV operations in agricultural plant protection environment

Author(s):  
Fengjie Sun ◽  
Xianchang Wang ◽  
Rui Zhang
Entropy ◽  
2021 ◽  
Vol 23 (6) ◽  
pp. 737
Author(s):  
Fengjie Sun ◽  
Xianchang Wang ◽  
Rui Zhang

An Unmanned Aerial Vehicle (UAV) can greatly reduce manpower in the agricultural plant protection such as watering, sowing, and pesticide spraying. It is essential to develop a Decision-making Support System (DSS) for UAVs to help them choose the correct action in states according to the policy. In an unknown environment, the method of formulating rules for UAVs to help them choose actions is not applicable, and it is a feasible solution to obtain the optimal policy through reinforcement learning. However, experiments show that the existing reinforcement learning algorithms cannot get the optimal policy for a UAV in the agricultural plant protection environment. In this work we propose an improved Q-learning algorithm based on similar state matching, and we prove theoretically that there has a greater probability for UAV choosing the optimal action according to the policy learned by the algorithm we proposed than the classic Q-learning algorithm in the agricultural plant protection environment. This proposed algorithm is implemented and tested on datasets that are evenly distributed based on real UAV parameters and real farm information. The performance evaluation of the algorithm is discussed in detail. Experimental results show that the algorithm we proposed can efficiently learn the optimal policy for UAVs in the agricultural plant protection environment.


2013 ◽  
Vol 562-565 ◽  
pp. 709-715
Author(s):  
Xiao Hui Zeng ◽  
Jing Zhong Li ◽  
Deng Li Bo ◽  
Chen Zhang ◽  
Wen Lang Luo

Available task scheduling systems can not support MPI parallel computing applications to be suspended for quickly inserting the emergency parallel computing tasks. By modifying TCP/IP protocol, this paper proposes a new method to solve the processes’ communication synchronization for suspending parallel application; moreover, by modifying the signal mechanism of the Linux operating system, this paper also proposes a method to solve the problems of consistently suspending and recovering parallel application. A Parallel computing dynamic task scheduling prototype system is implemented, and the experiment results show that the prototype system can suspend running parallel computing application, and also support dynamic insertion of emergency MPI parallel computing application.


Plant Disease ◽  
2014 ◽  
Vol 98 (6) ◽  
pp. 708-715 ◽  
Author(s):  
James P. Stack ◽  
Richard M. Bostock ◽  
Raymond Hammerschmidt ◽  
Jeffrey B. Jones ◽  
Eileen Luke

The National Plant Diagnostic Network (NPDN) has developed into a critical component of the plant biosecurity infrastructure of the United States. The vision set forth in 2002 for a distributed but coordinated system of plant diagnostic laboratories at land grant universities and state departments of agriculture has been realized. NPDN, in concept and in practice, has become a model for cooperation among the public and private entities necessary to protect our natural and agricultural plant resources. Aggregated into five regional networks, NPDN laboratories upload diagnostic data records into a National Data Repository at Purdue University. By facilitating early detection and providing triage and surge support during plant disease outbreaks and arthropod pest infestations, NPDN has become an important partner among federal, state, and local plant protection agencies and with the industries that support plant protection.


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