基于自编码神经网络的玉米收获机故障预测模型

IF 0.6 Q4 AGRICULTURAL ENGINEERING
Xin Wang, Guohai Zhang, Jiaguo Yao, Jitan Lian, Xining Yang
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引用次数: 0

摘要

玉米收获机是一种复杂的农业机械,它的状态监测系统收集了大量的工况数据,由于设备在不同的状态下收集的数据,因此很难识别出真实的变化模式。首先,对玉米谷物收割机的整体结构进行了分析,分析了玉米谷物收割机常见故障的原因和机理,并以切割台为主要研究对象;其次,通过收集玉米谷物收割机的历史故障数据和实时故障信息进行整理和预处理,消除噪声、缺失数据等干扰,建立故障矩阵,提取故障原因之间的内部特征,建立故障原因与故障现象之间的映射关系;最后,根据不同的故障原因,对未来玉米收获机的故障现象进行了预测。仿真分析结果表明,自编码神经网络故障预测模型能较好地预测故障的发生概率和类型,为农机故障维护和决策提供数据支持。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
FAULT PREDICTION MODEL OF CORN GRAIN HARVESTER BASED ON SELFCODING NEURAL NETWORK
The corn grain harvester serves as an example of complex farming machinery with a condition monitoring system that collects a lot of working condition data, making it challenging to identify the true change pattern due to the data coming from the equipment in various states. Firstly, the overall structure of the corn grain harvester is analyzed, and the common causes and mechanisms of corn grain harvester failures are analyzed, leading to the cutting table as the main research object; Secondly, by collecting historical failure data of corn grain harvester as well as real-time failure information for collation and pre-processing, eliminating interference such as noise and missing data, establishing a failure matrix, extracting internal characteristics between failure causes and establishing a mapping between failure causes and failure phenomena; Finally, the future failure phenomena of the corn grain harvester are predicted according to different failure causes. The simulation analysis results show that the self-coding neural network fault prediction model can better predict the occurrence probability and types of faults and provide data support for fault maintenance and decision making of agricultural machinery.
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来源期刊
INMATEH-Agricultural Engineering
INMATEH-Agricultural Engineering AGRICULTURAL ENGINEERING-
CiteScore
1.30
自引率
57.10%
发文量
98
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