Abstract

Recently, unmanned aerial vehicles (UAVs) have rapidly emerged as a new technology in the fields of plant protection and pest control in China. Based on existing variable spray research, a plant protection UAV variable spray system integrating neural network based decision making is designed. Using the existing data on plant protection UAV operations, combined with artificial neural network (ANN) technology, an error back propagation (BP) neural network model between the factors affecting droplet deposition is trained. The factors affecting droplet deposition include ambient temperature, ambient humidity, wind speed, flight speed, flight altitude, propeller pitch, nozzles pitch and prescription value. Subsequently, the BP neural network model is combined with variable rate spray control for plant protection UAVs, and real-time information is collected by multi-sensor. The deposition rate is determined by the neural network model, and the flow rate of the spray system is regulated according to the predicted deposition amount. The amount of droplet deposition can meet the prescription requirement. The results show that the training variance of the ANN is 0.003, and thus, the model is stable and reliable. The outdoor tests show that the error between the predicted droplet deposition and actual droplet deposition is less than 20%. The ratio of droplet deposition to prescription value in each unit is approximately equal, and a variable spray operation under different conditions is realized.

Highlights

  • Crop diseases and weeds are important factors that affect crop yield and quality, and are mainly controlled through chemical pesticides

  • According to the data in the table, the flight speed and altitude in the sample data were within the range of flight parameters of plant protection unmanned aerial vehicles (UAVs)

  • The wind speed was within a reasonable range of operational requirements of plant protection UAVs

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Summary

Introduction

Crop diseases and weeds are important factors that affect crop yield and quality, and are mainly controlled through chemical pesticides. The agricultural application of UAVs as a new application in the field of agricultural plant protection has been widely researched and applied [3,4]. In 2014, China’s “Central Document No 1”. In order to implement document No 1. Introduction of of BP BP Neural Network An An ANN. ANN is is an an algorithmic algorithmic mathematical mathematical model model for for distributed distributed parallel parallel information information processing processing based characteristics [24].[24]. Depending on theoncomplexity of the system, network based on onthe thebehavioral behavioral characteristics. Depending the complexity of the this system, this can process by adjusting the interconnection betweenbetween several several internalinternal node. An. ANN network caninformation process information by adjusting the interconnection node.

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