基于 LSTM 网络的蝶阀冲蚀预测

IF 2.3 3区 工程技术 Q2 ENGINEERING, MECHANICAL
Qingtong Liu , Chenghua Xie , Baixin Cheng
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引用次数: 0

摘要

在使用阀门和管道时,侵蚀磨损是一个主要问题。侵蚀磨损会导致设备停机、材料更换和其他问题,以及密封面失效。该研究深入探讨了蝶阀的侵蚀现象,蝶阀是用于不同工业领域的关键部件。侵蚀主要影响阀瓣和阀座区域,导致过早磨损和性能受损。为解决这一问题,研究采用了计算流体动力学(CFD)和机器学习技术,包括长短期记忆(LSTM)和 BP 神经网络,来预测各种条件(不同的阀门开口和颗粒直径)下的侵蚀率。结果表明,随着时间的推移和阀门开度的增大,侵蚀率会逐渐升高,因此需要采取积极主动的维护策略。与 BP 神经网络相比,LSTM 模型显示出更出色的预测能力,为改进工业环境中的蝶阀设计和运行效率提供了宝贵的见解。此外,为了寻求更有效的网络配置,还利用了粒子群优化(PSO)算法的智能搜索功能来系统地探索最佳网络结构参数。预测结果凸显了 LSTM 在处理时间序列数据方面的优势,尤其是在预测具有复杂动态特性的侵蚀率方面。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Butterfly valve erosion prediction based on LSTM network

When valves and pipelines are used, erosion wear is a major concern. Erosion wear can lead to equipment downtime, material replacement, and other issues, as well as seal surface failure. The research delves into the phenomenon of erosion in butterfly valves, crucial components utilized across diverse industrial sectors. Erosion primarily affects the valve's disc and seat regions, leading to premature wear and compromised performance. To address this issue, the research employs computational fluid dynamics (CFD) and machine learning techniques, including long short-term memory (LSTM) and BP neural networks, to predict erosion rates under various conditions (different valve openings and particle diameters). Results indicate that erosion escalates with time and larger valve openings, highlighting the need for proactive maintenance strategies. The LSTM model demonstrates superior predictive capabilities compared to the BP neural network, offering valuable insights for improving butterfly valve design and operational efficiency in industrial settings. Furthermore, to seek a more efficient network configuration, the intelligent search capabilities of the particle swarm optimization (PSO) algorithm have been utilized to systematically explore the optimal network structure parameters. The prediction results highlight the advantages of LSTM in handling time series data, particularly in predicting erosion rates with complex dynamic characteristics.

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来源期刊
Flow Measurement and Instrumentation
Flow Measurement and Instrumentation 工程技术-工程:机械
CiteScore
4.30
自引率
13.60%
发文量
123
审稿时长
6 months
期刊介绍: Flow Measurement and Instrumentation is dedicated to disseminating the latest research results on all aspects of flow measurement, in both closed conduits and open channels. The design of flow measurement systems involves a wide variety of multidisciplinary activities including modelling the flow sensor, the fluid flow and the sensor/fluid interactions through the use of computation techniques; the development of advanced transducer systems and their associated signal processing and the laboratory and field assessment of the overall system under ideal and disturbed conditions. FMI is the essential forum for critical information exchange, and contributions are particularly encouraged in the following areas of interest: Modelling: the application of mathematical and computational modelling to the interaction of fluid dynamics with flowmeters, including flowmeter behaviour, improved flowmeter design and installation problems. Application of CAD/CAE techniques to flowmeter modelling are eligible. Design and development: the detailed design of the flowmeter head and/or signal processing aspects of novel flowmeters. Emphasis is given to papers identifying new sensor configurations, multisensor flow measurement systems, non-intrusive flow metering techniques and the application of microelectronic techniques in smart or intelligent systems. Calibration techniques: including descriptions of new or existing calibration facilities and techniques, calibration data from different flowmeter types, and calibration intercomparison data from different laboratories. Installation effect data: dealing with the effects of non-ideal flow conditions on flowmeters. Papers combining a theoretical understanding of flowmeter behaviour with experimental work are particularly welcome.
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