Abstract

The development of clean and environmentally friendly energy is necessary to address significant energy challenges, and abundant sea current energy, which plays a key role in the decarbonization of our energy systems and has attracted increasing attention among researchers. In the present study, a remote monitoring and diagnosis system was designed in accordance with the requirements of a 50 kW hydraulic transmission and control power generation system. Hardware selection and software function requirement analysis were then performed. The causes of system faults were analyzed, the output fault types of the improved model were determined, and effective monitoring parameters were selected. The accuracy of traditional spectra in diagnosing faults is poor; however, the generalization capability of support vector machines (SVM) is robust. Thus, an improved particle swarm algorithm optimized SVM fault diagnosis model for the hydraulic transmission control power generation system was proposed to rapidly and effectively determine the key parameters. Remote monitoring software for the hydraulic transmission and control power generation system was also developed. The results of remote monitoring and diagnostic tests showed that the software was able to satisfy the functional requirements of the hydraulic transmission control power generation remote monitoring system, and the operation effect was consistent with expectations. By comparing the test accuracy of different diagnostic models, the improved PSVM model has the highest test accuracy with a classification accuracy of 99.4% in the case of normal operation, accumulator failure, relief valve failure and motor failure. In addition, the proposed diagnostic method was effective, thereby ensuring safe and reliable operation of the hydraulic transmission control power generation system.

Highlights

  • Ocean current energy generation technology has gained increasing attention from a large number of countries due to its renewable and sustainable characteristics, and is currently experiencing rapid development [1,2,3]

  • To address the problems of insufficient accuracy and slow convergence of the current hydraulic system fault diagnosis model, a fault diagnosis model based on the improved particle swarm algorithm optimized via an support vector machines (SVM), for a hydraulic transmission control power generation system, was proposed, analyzed, and compared with other SVM-optimized algorithm fault diagnosis models

  • We proposed an improved SVM hydraulic transmission and control power generation system fault diagnosis model optimized by particle swarm algorithm

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Summary

Introduction

Ocean current energy generation technology has gained increasing attention from a large number of countries due to its renewable and sustainable characteristics, and is currently experiencing rapid development [1,2,3]. The main technologies of sea current energy generation include permanent magnet synchronous generation [6], double-fed asynchronous generation [7], and hydraulic transmission and control generation. Among these technologies, permanent magnet synchronous generation and double-fed asynchronous generation are more mature and have been used in practice and hydraulic transmission is characterized by its flexible layout [8]. Hydraulic transmission control power generation is a relatively new field, but Energies 2021, 14, 4047 flexible layout [8].

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