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Warehouse Environment Parameter Monitoring System and Sensor Error Correction Model Based on PSO-BP 被引量:5

Warehouse Environment Parameter Monitoring System and Sensor Error Correction Model Based on PSO-BP
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摘要 The warehouse environment parameter monitoring system is designed to avoid the networking and high cost of traditional monitoring system.A sensor error correction model which combines particle swarm optimization(PSO)with back propagation(BP)neural network algorithm is established to reduce nonlinear characteristics and improve test accuracy of the system.Simulation and experiments indicate that the PSO-BP neural network algorithm has advantages of fast convergence rate and high diagnostic accuracy.The monitoring system can provide higher measurement precision,lower power consume,stable network data communication and fault diagnoses function.The system has been applied to monitoring environment parameter of warehouse,special vehicles and ships,etc. The warehouse environment parameter monitoring system is designed to avoid the networking and high cost of traditional monitoring system.A sensor error correction model which combines particle swarm optimization(PSO)with back propagation(BP)neural network algorithm is established to reduce nonlinear characteristics and improve test accuracy of the system.Simulation and experiments indicate that the PSO-BP neural network algorithm has advantages of fast convergence rate and high diagnostic accuracy.The monitoring system can provide higher measurement precision,lower power consume,stable network data communication and fault diagnoses function.The system has been applied to monitoring environment parameter of warehouse,special vehicles and ships,etc.
出处 《Transactions of Nanjing University of Aeronautics and Astronautics》 EI CSCD 2017年第3期333-340,共8页 南京航空航天大学学报(英文版)
关键词 parameter portable monitoring system ZigBee technology particle swarm optimization-back propagation(PSO-BP) fault diagnosis Warehouse warehouse correction networking swarm terminals hidden acceleration normalized intelligent
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